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. 2026 Feb 12;16:6336. doi: 10.1038/s41598-025-32463-3

A detailed analysis of the Czernik 38 cluster and its associated tidal tail, utilizing Gaia DR3 and 2MASS

Nasser M Ahmed 1,
PMCID: PMC12905255  PMID: 41680186

Abstract

This study provides a thorough investigation of the open cluster Czernik 38, employing photometric and astrometric data from Gaia DR3 and 2MASS. Our analysis refines the fundamental parameters of the cluster, including its structure, kinematics, evolutionary status, age, and morphology. To evaluate membership, we utilized the pyUPMASK Python package in conjunction with the HDBSCAN algorithm. The main focus of this research is our novel method of assigning a membership probability at each radius, instead of using a singular value for the entire cluster. One of the main outcomes of our research indicates that there is an elongated structure and a leading tidal tail that aligns with the orbital trajectory of the cluster. This tidal phenomenon arises due to orbital differential rotation. Furthermore, we have discovered a new star cluster located 32 arcmin from the center of Czernik. This cluster may serve as a companion to the Czernik 38 cluster in a binary cluster system or a complex colliding system; we will explore this further in subsequent research. According to Gaia, the distance modulus of the cluster and the color excess Inline graphic are measured at 12.69Inline graphic 0.08 mag and 2.40 Inline graphic 0.04 mas, respectively. Additionally, from 2Mass, the distance modulus is 12.87 Inline graphic 0.93 mag, while the color excess Inline graphic is 0.89 Inline graphic 0.2 mag. Moreover, the cluster age is determined to be 115.0Inline graphic 20.3 Myr. The components of proper motion (Inline graphic, Inline graphic) and the parallax (Inline graphic) are found as -2.41 Inline graphic 0.328 mas yrInline graphic, -5.263 Inline graphic 1.063 mas yrInline graphic, and 0.21 Inline graphic 0.083 mas, respectively. The calculated mean Gaia distances are roughly 3580.4 Inline graphic 230.5 pc, which is in agreement with the photometric data from the Gaia and 2Mass data, within the error. There are 37 stars that exhibit radial velocity with average 46.1 Inline graphic 8.54Inline graphic, which allows us to derive orbital parameters using the galpy python package. As a result, the cluster is moving parallel to the Galactic plane towards the Galactic center. We have identified a novel category of pre-main sequence stars that form a distinct branch in the right of Color-Magnitude Diagram (CMD). These stars exhibit lower temperatures and surface gravity compared to main sequence stars. This implies that there exists a significant rate of star formation within the Czernik 38 cluster. Furthermore, we have discovered many faint blue stars in Czernik 38, as well as in the newly identified clusters, which could potentially be white dwarf stars.

Keywords: Star cluster, Gaia DR3, CMD, Parallax, Proper motion, Distance, Membership, Mass function, Tidal tail, Binary cluster

Subject terms: Astronomy and planetary science, Mathematics and computing, Optics and photonics, Physics

Introduction

Open clusters (OCs) are significant in improving our insight into stellar evolution and the structure of galaxies. These gravitationally bound groups of stars, which share similar ages and chemical abundances, are crucial for elucidating the formation history of the disc of the Milky Way. They are formed from stars that developed under almost identical physical conditions and within a short time frame, thereby acting as exceptional indicators of the physical and dynamic states of the interstellar medium. They usually consist of several dozen to thousands of stars situated at comparable distances. OCs are particularly useful for studying the structure, kinematics, and various properties of the Milky Way14, e.g..

Czernik 38 is a rich open star cluster and it is discovered by5. It resides in the direction of the boundary of the Carina-Sagittarius spiral arms, directed toward the Scutum-Crux arm, with coordinates Inline graphic = 18Inline graphic 49Inline graphic 48Inline graphic and Inline graphic = +4Inline graphic 58’ 10” (J2000.0), which corresponds to Galactic coordinates of Inline graphic and Inline graphic (located in the first Galactic quadrant. It is located in the area of the high stellar-density background; see Fig. 1. A significant characteristic of it is a considerable reddening, which suggests that it is positioned within or behind the Sagittarius arm. Therefore, this imposes a constraint on the determination of the distance.

Fig. 1.

Fig. 1

 The Czernik 38 cluster’s position (blue “+” symbol) is superimposed on the AlaDin (PanSTARS27) footnotehttps://aladin.cds.unistra.fr/aladin.gml image depicting the Carina-Sagittarius spiral arm. Take note of the dim area, which is composed of the dust and dense gaseous.

Despite the significant position and richness of Czerink 38, there exists a litel regarding investigations of it. According to6, the only parameter noted is the cluster’s angular diameter of 10’7. suggested that the cluster is at least 1 Gyr old and at a heliocentric distance of 1.28 Kpc. Furthermore, he has determined that the color excess E(B-V) is 1.09±0.02 mag. While8 has determined that color excess E(B-V), the age and distance are 1.25 ± 0.10 mag, 600 Myr and 1.9 Kpc, respectively.

One of the significant characteristics of OCs is the existence of tidal tails. These tidal tails are stellar structures that extend from the main body of the cluster, arising from the gravitational interactions between the cluster and the Galactic potential or a giant molecular cloud9. In young OCs (ages Inline graphic 100 Myr), these structures could be the result of the remnants of the giant molecular clouds (GMCs) from which the clusters developed or due to rapid gas expulsion10,11, e.g.,. In older clusters (ages Inline graphic 100 Myr), mechanisms such as two-body relaxation or external forces, including disk shocks, are likely responsible for the stripped stars observed in tidal tails12. Several young OCs have been documented with tail-like formations, including IC 2391, IC 2602, NGC 2451 A, and NGC 254710. Furthermore, a growing number of older OCs have been identified with tidal tails, such as Hyades1315 and NGC 677411. Recently16, conducted a study on tidal tails using Gaia EDR3 data and discovered 72 OCs exhibiting tidal tails; however, Czerink 38 was absent from their findings related to tidal tails.

Numerous techniques exist in the literature for identifying the tidal tail in OCs, including the work of17, who employed a machine-learning algorithm to detect an extended structure beyond the tidal radius. Moreover18, has developed an innovative technique for tracking escape stars originating from nearby clusters, utilizing the radial velocity data provided by Gaia. Others notable attempts to detect tidal tails of OCs; NGC 72517,19, IC 475620, Ruprecht 14721 NGC 250622, NGC 2516/NGC 663323 and Alpha Persi24.

Most of these methods have identified S-shaped structures, which are characterized by leading and trailing tails. However, in this study, we have observed the tidal tail as only a leading tail in front of the cluster and aligned with the direction of motion. Additionally, in our previous investigations of the King 13 cluster25, we reported similar findings. We have implemented a novel technique for identifying cluster members by integrating the pyUpmask probability with the King model.

Gaia DR3’s data presents outstanding accuracy in 5D astrometry, including the evaluation of positions, proper motions, and parallax, as well as thorough photometric measurements. The present study explores the key astrophysical features of Czernik 38, making use of the astrometric and photometric data available from Gaia DR326. In addition, we analyze the orbital parameters and kinematic characteristics of this system. Furthermore, the cluster’s morphology is examined, with a focus on identifying any features related to tidal tails.

Furthermore, we investigate two critical issues that significantly influence the research in the field of open star cluster studies. The first topic addresses the limitations of data (Section "The data limits"), and the second topic concerns the cutoff value for membership probability (Section "The probability cut-off value").

The paper is organized as follows. Section “Data” outlines the criteria used to extract the initial data sample from Gaia DR3. The cluster’s structure, along with its radial density profile, is described in Section "Radial density profile and cluster structure". In Section “Membership determination”, we present the astrometric analysis, cluster membership determination, and the identification of the cluster’s center. The photometric properties of the cluster members, as well as the detection of the tidal tail, are discussed in Sections "The photometry of Czernik 38 cluster". The cluster kinematics and dynamics analysis will be in Section "The cluster dynamics and kinematics". The details of tidal tail in Czerink 38 cluster will be given in Section "The morphology and the tidal tail of Czernik 38". Finally, the main conclusions are summarized in Section "Summary and conclusions".

Data

In this study, we utilize two comprehensive and complementary datasets, Gaia DR3 and 2MASS, to examine the open cluster Czernik 38. These datasets provide a robust foundation for identifying cluster members, extracting astrophysical parameters, and examining the structure and kinematics of the cluster. Below, we present a summary of the essential characteristics and significance of these datasets in relation to the current research.

Gaia DR3 data

We retrieved data for Czernik 38 from the Gaia DR3 catalog26. The dataset comprises proper motions (Inline graphic, Inline graphic) and and parallaxes in addition to sky positions (Inline graphic, Inline graphic), with a limiting magnitude of Inline graphic mag. The Gaia DR3 dataset supplies astrophysical parameters for many celestial bodies, derived from measurements of parallaxes, broad-band photometry, and mean radial velocity spectra. The parallax errors in Gaia DR3 range from 0.02 to 0.07 milliarcseconds (mas) for sources with Inline graphic mag, increasing to 0.5 mas at Inline graphic mag and up to 1.3 mas at Inline graphic mag. Similarly, proper motion errors range from 0.02 to 0.07 mas yrInline graphic for Inline graphic mag, reaching 0.5 mas yrInline graphic at Inline graphic mag, and up to 1.4 mas yrInline graphic at Inline graphic mag, see Fig. 2.

Fig. 2.

Fig. 2

The graph depicting G magnitude in relation to the errors of parallax, proper motion, and G magnitude.

The catalog contains G magnitudes for approximately 1.806 billion sources, Inline graphic magnitudes for around 1.542 billion sources, and Inline graphic magnitudes for approximately 1.555 billion sources. Fig. 3 shows the surface number density of Czernik 38 derived from Gaia DR3, while Fig. 4 shows histograms of the proper motions (Inline graphic, Inline graphic) and parallax (Inline graphic), in the field of Czernik 38.

Fig. 3.

Fig. 3

The surface number density of Czernik 38 using the data of Gaia DR3.

Fig. 4.

Fig. 4

The proper motion in right ascension, declination, and parallax in the field of Czernik 38.

The data limits

While processing Gaia data it is important to note that inaccurate data clipping can lead to significant issues and erroneous outcomes when assessing cluster parameters such as core radius, the number of member stars, cluster mass, and overall cluster size, among others. Furthermore, the King model is capable of distinguishing the background level from member stars, which allows for minimal clipping. We restrict the Gaia data to a parallax range of 0.03 to 0.9 mas. The inappropriate clipping of data not only diminishes the field stars but also decreases the number of cluster member stars. For instance, in Fig.5, we illustrate the radial density profile (RDP) of unselected stars under the parallax condition Inline graphic.

Fig. 5.

Fig. 5

The black dots indicate the number stars density of selected stars, in case of the parallax condition Inline graphic, the red squares signify the stars that have not been selected.

This figure shows that the clipping data is mostly overdensity of member stars. Acquiring the RDP of unselected stars is essential for assessing whether any structural features or overdensity persist.

When computing averages for any variable or parameters influenced by random errors, it is essential to recognize that these averages are based on data that satisfies a relative error threshold of 10%. For instance, regarding the mean parallax, we set forth the following condition:

graphic file with name d33e567.gif

where Inline graphic is the parallax error in Gaia archive.

In contrast, if any parameter or variable shows features of a Gaussian distribution or is approximately similar to it:

graphic file with name d33e577.gif 1

Consequently, it is frequently observed that values exhibit considerable inaccuracies. Therefore, we cannot eliminate the data; instead, we can apply the Gaussian function fit to calculate the mean value.

In our research, the distributions of parallaxes and proper motions exhibit a close resemblance to a Gaussian distribution. As a result, we implemented a minor truncation of the data, selecting parallax values that lie within the range of 0.03 to 0.9 mas. Furthermore, we computed the average values of parallaxes and proper motions by applying a Gaussian distribution fit to these datasets, see Fig. 16 in Section "The cluster dynamics and kinematics".

Fig. 16.

Fig. 16

The members proper motions, parallaxes and distances histograms. The solid red lines are Gaussian fits.

2MASS Data

The Two Micron All-Sky Survey (2MASS28;) utilized two automated 1.3m telescopes, located at Mt. Hopkins, Arizona (USA) and the Cerro Tololo Inter-American Observatory (CTIO) in Chile.Each telescope was equipped with a three-channel camera, which included a 256 Inline graphic 256 array of HgCdTe detectors in every channel. The 2MASS catalog provides photometric measurements in the J (1.25 Inline graphicm), H (1.65 Inline graphicm), and KInline graphic (2.17 Inline graphicm) bands, covering millions of galaxies and nearly half a billion stars. The catalog’s sensitivity reaches magnitudes of 15.8 in J, 15.1 in H, and 14.3 in KInline graphic at a signal-to-noise ratio (S/N) of 10.

Radial density profile and cluster structure

To analyze the cluster structure and construct the radial density profile (RDP), the first step is to accurately determine the cluster’s center. The primary objective is to locate the region with the highest stellar density. To achieve this, we generated a two-dimensional histogram of star counts in right ascension (Inline graphic) and declination (Inline graphic) using data from the Gaia DR3 database. By utilizing the histogram2d function from the numpy package, we identified the cell containing the maximum number of stars. This method was conducted again in Section “Membership determination”, with a focus exclusively on member stars, revealing no significant differences. To determine the size of the cluster, we created the RDP of Czernik 38 by dividing the observed area into concentric rings. The number of stars in each ring, Inline graphic, was counted, and the star density was calculated as Inline graphic, where Inline graphic represents the area of the i-th ring (Inline graphic). In this context, Inline graphic and Inline graphic represent the outer and inner radii of each ring, respectively, with the ring radius being defined as:

graphic file with name d33e660.gif 2

The stellar density function Inline graphic, which denotes the overall stellar density (comprising both field stars and members of clusters), is:

graphic file with name d33e670.gif 3

where the background star density is Inline graphic and the cluster member stars density is Inline graphic.

One of the famous profile for cluster stars density that was created by King (1966) is as follows:

graphic file with name d33e685.gif 4

where Inline graphic, Inline graphic, and Inline graphic denote the core radius, background density, and central density, respectively. The core radius, Inline graphic, signifies the distance from the center of the cluster at which the stellar density, Inline graphic, reaches half of the central density Inline graphic. An additional parameter, the limiting radius Inline graphic, was introduced by29. This radius is determined by comparing Inline graphic in equation 4 to the background density threshold, Inline graphic, defined as:

graphic file with name d33e735.gif 5

where Inline graphic is the uncertainty in Inline graphic. The limiting radius is then calculated as:

graphic file with name d33e748.gif 6

In Equation 4, the term for cluster radius is absent, which may occasionally result in imprecision. An alternative density function formula found in the literature incorporates this cluster radius, enhancing its accuracy, and it is:

graphic file with name d33e757.gif 7

and k is:

graphic file with name d33e765.gif 8

and

graphic file with name d33e770.gif

This is an earlier version of the equation 4, which was proposed by30 (Inline graphic). However, in this context, we will introduce the Inline graphic index in place of 2. We fit the RDP of the cluster with the equation 7, allowing Inline graphic to take on only the values 1 or 2.

In this research, the optimal fit occurs at Inline graphic equal to 1; however, this is not universally applicable, as the fitting value is affected by the steepness of the density profile of the cluster. In some cases, Inline graphic can equal 2, leading to a better fit. The term Inline graphic is a misnamed tidal radius in literature. But it is the cluster radius at which the cluster star density drops to zero. This model offers improved accuracy over Equation 4 (see Fig. 6), In addition, the Equation 7 can be very helpful for knowing the total number of stars in a cluster. The stellar density Inline graphic in the i-th ring can be used to estimate the number of member stars in that ring:

graphic file with name d33e828.gif 9

By summing the cluster density profile up to Inline graphic, we can estimate the total number of cluster members inside this radius:

graphic file with name d33e837.gif 10

This Inline graphic term represents the total number of cluster members that can significantly limit the probability cutoff value, as it will be discussed in section "The probability cut-off value".

Fig. 6.

Fig. 6

The radial density profile (RDP) of the two clusters. The solid black line and the dashed red line illustrate the King model fits with Inline graphic and Inline graphic, respectively, while the dashed blue line corresponds to the King model32.

The structural parameters of Czernik 38 were determined by fitting the King model to the RDP. The background density, Inline graphic, was found to be 11.6Inline graphic 0.03 stars arcminInline graphic (indicated by the blue dashed line in Fig. 6). The central density, core radius, and cluster radius were determined to be 22.33Inline graphic 2.24 stars arcminInline graphic, 1.19 Inline graphic 0.02 arcmin, and 14.36Inline graphic 7.63 arcmin, respectively (see Table 1). Furthermore, the total number of member stars Inline graphic were estimated as 938 Inline graphic 61 stars. The uncertainties in the fitted parameters were estimated using the covariance matrix obtained from the curve_fit function in the scipy package (https://scipy.org/).

Table 1.

King model fit parameters.

Ref. Inline graphic Inline graphic Inline graphic Inline graphic
No.Inline graphic No.Inline graphic arcmin arcmin
This work, Eq. 7 22.33Inline graphic2.24 11.6Inline graphic0.03 1.19Inline graphic0.02 14.36Inline graphic7.63
This work, Eq. 4 22.91 14.56 2.56 4.2 ± 0.87
7 11.6 ± 0.6 15.0 ± 0.1 1.3 ± 0.09 4.0

To quantify the compactness of Czernik 38, we calculated the star density contrast:

graphic file with name d33e905.gif 11

For Czernik 38, Inline graphic was found to be 3.03 Inline graphic 0.02, significantly lower than the typical values for compact clusters (Inline graphic) reported by31, based on the fact that Czernik 38 is a sparse cluster.

Membership determination

The assessment of fundamental parameters for star clusters is commonly complicated by the presence of field star contamination. Historically, the determination of cluster membership relied on photometric and kinematic data. In light of the astrometric data provided by the Gaia survey, the reliability of kinematic approaches for ascertaining membership has seen substantial improvement. Proper motion and parallax data are particularly effective in distinguishing field stars from cluster members, as stars in a cluster tend to share similar kinematic properties and distances33. In this study, we utilized Gaia DR3 proper motion and parallax data to identify cluster members.

The membership method: HDBSCAN algorithm

We used the Unsupervised Photometric Membership Assignment in Stellar Clusters (UPMASK) algorithm, developed by34.This approach is a non-parametric and unsupervised, eliminating the necessity for prior selection of field stars. A refined version, available as the pyUPMASK Python package (https://github.com/msolpera/pyUPMASK)35, builds upon the initial algorithm by integrating various clustering techniques from the scikit-learn library (https://scikit-learn.org/stable/)36. This library includes more than a dozen different clustering methods for unlabeled data, which are all available to use in pyUPMASK, such as Hierarchical Density-Based Spatial Clustering of Applications with Noise (HDBSCAN), OPTICS, KMS, Gaussian Mixture Models (GMM) and Mini Batch K-means (MBK), their references are in35. This allows for more flexible analysis of unlabeled data.

In this study, we employed the HDBSCAN algorithm as described by37, which has been implemented in Python by38. The HDBSCAN algorithm is considered one of the fastest clustering algorithms currently available, representing an advancement over both DBSCAN and OPTICS. Notably, DBSCAN operates under the premise that the criteria for clustering, specifically the density requirement, is uniform across the entire dataset. Consequently, DBSCAN may encounter difficulties in effectively identifying clusters that exhibit varying densities. HDBSCAN overcomes this limitation by loosening the uniformity assumption and exploring various density levels via the creation of an alternative representation of the clustering problem. Furthermore, it primarily utilizes a k-means clustering algorithm, which is a technique for classifying data based on its closeness to specified center points. Moreover, It is effective at identifying and removing noise in a data set. Then, HDBSCAN is one of the most widely used and cited clustering algorithms.

In this research, we employed the pyUPMASK package alongside the HDBSCAN algorithm to determine the membership probabilities of stars located within the cluster. Gaia DR3 data (Inline graphic, Inline graphic, Inline graphic, Inline graphic and Inline graphic) for approximately 130,238 stars within a Inline graphic radius were used as input. Fig. 7 shows the total number of stars, N(Inline graphicP), as a function of their probability of membership P.

Fig. 7.

Fig. 7

The number of stars as function of membership probability, the output of pyUPMask code.

The probability cut-off value

A cut-off probability of 50% is frequently employed for determining membership; nevertheless, this threshold may not always be suitable. The appropriate cut-off is influenced by the method applied, as well as factors including the density of the surrounding field and the distance separating the star from the cluster center. Moreover, the optimal probability threshold may differ from one cluster to another. Thus, it is vital to thoroughly assess the determination of the probability cut-off, as an inaccurate threshold could cause the misclassification of members within the cluster. Recent investigations have adopted differing probability cut-off values. For instance16, implemented the same technique (HDBSCAN) as we did, with a probability cut-off established at 50%. On the other hand39, and40 applied UPMASK with a probability cut-off of P> 70% and the GMM model with P > 80%, respectively. Thus, the choice of the probability cut-off value remains a subject of ongoing debate. Furthermore, in the majority of studies, the RDP of these member stars identified at this specific probability cutoff value does not align with the king profile, presenting a significant and crucial contradiction.

To tackle this problem in our study, we adopt the approach by using a radius-dependent cut-off value (see Fig. 8). The fitted King profile model also plays a significant role in this process. Each individual ring i has an associated probability Inline graphic that results in a stars number identical to the number of stars inferred from the King model fit Inline graphic, see equation 9. The approach is mathematically:

graphic file with name d33e1195.gif 12

where Inline graphic is the probability in the i-th ring, giving the number of member stars as Inline graphic, which should match the number of stars from the King model, Inline graphic, as shown in Fig. 8. For example, if there are 100 member stars in shell i, as determined by the King fit, the probability cut-off values Inline graphic will also result in the same number, 100 stars. The left panel of Fig. 8 illustrates the relationship between Inline graphic and Inline graphic. The indices of these member stars in ring i are provided in Python as:

graphic file with name d33e1241.gif

where P denotes the probability values obtained from the pyUPMASK code.

Fig. 8.

Fig. 8

“Our methodology involves analyzing the Probability Inline graphic at every ring as a function of the radius Inline graphic.

The King density profile is a significant tool for confirming the reliability of the membership separation method and the complete number of cluster members. In opposition, an inaccurate membership separation technique or a faulty probability cut-off may lead to an overestimation or underestimation regarding the number of member stars.

What accounts for the difference in the number of member stars in comparison to others?

Our members’ findings have been compared with those in references42,43 and41, yielding a significant discrepancy; see Fig. 9. But what accounts for this? Thus, there are two explanations for this inconsistency.

Fig. 9.

Fig. 9

The density profile of member stars in the cluster is represented. The red dots are the Gaia DR3 probable member stars density, while the solid line illustrates the fitting of the King star density model for the cluster, derived from equation 7. The triangles are members from41 while the squares are members from42. The open circles are members from43. Neither of these groups follows the King model.

The primary reason for the issue, which pertains to our membership technique, is to not associate the probability with the King profile, as explained in section 4.2. In other words, the members they found did not conform to their king model fitting, resulting in a fundamental contradiction that led to inaccuracy in assigning their members. This is despite the fact that the overdensities of stars are a crucial characteristic of OCs, and these overdensities often align with the King profile. The difficulty does not stem from the method itself, but from the decision regarding the probability cut-off value, which is supposedly what yields the King profile.

The second reason is the limitation of the data, as outlined in Section "The data limits". Inappropriate or excessive data trimming will reduce both field stars and members as well.

The identification of a new open star cluster

Initially, during the preliminary data analysis, we perform a survey in two dimensions by establishing the surface number density (cell size is.05x.05Inline graphic), as illustrated in Fig. 3B. We have identified a clump of stars at the coordinates Inline graphic and Inline graphic, located 32 arcmin distant from Czerink 38. Additionally, its star number density closely aligns with the King profile, as illustrated in Fig. 6B, prompting us to consider the possibility that this may represent a new cluster.

In the second step, we create the probability map with Inline graphic and Inline graphic within 50 arcmin, ensuring that the membership probability exceeds 80% to obtain members with a high probability, as illustrated in Fig. 10. This probability reveals the existence of two groups of stars, which indicates that they share nearly the same distance and proper motion. The green solid circle represents the Czerink 38 area, whereas the dotted blue circle indicates a new cluster area. It appears that they denote a binary cluster or a complicated colliding system within a dense concentration of stars and interstellar matter, and we aim to delve deeper into this captivating subject in future studies. Furthermore, regarding the photometric characteristics of this new cluster, it shares the same age, reddening, and distance as Czerni 38. For further details, please refer to the next Section "The photometry of Czernik 38 cluster".

Fig. 10.

Fig. 10

This diagram shows the distribution of member stars that have a probability greater than 80% within 50 arcmin from the center of Czerink 38. There are two groups of stars are found. The green solid circle represents the Czerink 38 area, whereas the dotted blue circle indicates a new cluster area.

The photometry of Czernik 38 cluster

In the context of OCs, color-magnitude diagrams (CMDs) make use of empirical isochrones to evaluate against theoretical models of stellar evolution44,45. CMDs serve as effective tools for estimating key parameters such as distance, age, and metallicity of a cluster. Additionally, by comparing observed CMDs with theoretical isochrones, valuable insights into the masses of stars within the cluster can be obtained. The theoretical isochrones utilized in this research were obtained from the CMD 3.7 (http://stev.oapd.inaf.it/cgi-bin/cmd), using PARSEC version 1.25s46.

Extinction

A precise interstellar dust extinction law is critically important for interpreting observations. The extinction coefficients for each passband depend on the source’s spectral energy distribution, interstellar matter, and the extinction itself. Both the color excess ratio (CER), Inline graphic, and the relative extinction, Inline graphic, are key indicators of the extinction law.

We follow the producer of47 and use the method presented in48, we compute the extinction coefficients in the Gaia, 2MASS and BV bands using the relation Inline graphic. For example:

graphic file with name d33e1401.gif

For 2MASS bands:

graphic file with name d33e1405.gif

For the BV observations, we adopt the extinction law values from49 and50:

Inline graphic, Inline graphic, Inline graphic and Inline graphic

By employing these values, the relationship between extinction and color excess can be delineated as follows:

graphic file with name d33e1436.gif 13

The color excesses can be correlated with one another as follows:

graphic file with name d33e1441.gif 14

Through isochrone fitting, we derive the color excess and, as a result, the extinction. The intrinsic distance modulus Inline graphic can be computed using the equation provided:

graphic file with name d33e1450.gif 15

where m is the apparent absorbed magnitude, M is the absolute magnitude, and Inline graphic is the extinction in the Inline graphic band. The expressions Inline graphic and Inline graphic correspond to the intrinsic and observed distance modulus, respectively. Ultimately, we can derive the isochrone distance Inline graphic as:

graphic file with name d33e1483.gif 16

The color-magnitude diagram (CMD)

Using the photometric data from Gaia DR3 for stars in Czernik 38, the color-magnitude diagram (CMD) is presented in Fig. 11A. The CMD is fitted with theoretical isochrones from44. One of the numerous advantages of Gaia is its high precision in measuring parallaxes and distances. The geometric distance determined using Gaia data is 3580.4 Inline graphic 230.5 pc, please refer to Section "The proper motion, distance and cluster kinamtics" and see Fig. 16. This distance value limits the isochrone fitting, particularly when the cluster exhibits significant reddening. Only the young age isochrone yields this distance.

Fig. 11.

Fig. 11

The Gaia and 2MASS CMDs of Czernik 38 and the Gaia CMD of the new cluster.

We have determined that the intrinsic distance modulus and the color excess E(GInline graphic - GInline graphic), are 12.69Inline graphic 0.08 mag and 2.40 Inline graphic 0.04 mag, respectively. The true distance modulus Inline graphic and the extinction in the G band (Inline graphic) were calculated using the equation provided in Section “Extinction”. These results correspond to an isochrone-based distance Inline graphic of 3448Inline graphic 362 pc. Furthermore, the fitted isochrone indicates a cluster age of approximately 115.0Inline graphic 20.3 Myr, with a metallicity of Z= 0.0152 ([M/H]= 0.0151 dex).

The CMD for the new cluster is depicted in Fig. 11B, with the same isochrone of Czernik 38. This suggests that the new cluster has comparable age, distance, and color excess to Czernik 38. Consequently, this could imply that both clusters are a binary system. We intend to investigate this fascinating topic further in our future research.

There is a notable inconsistency regarding the age and distance results in relation to the published values7. suggested that the cluster is at least 1 Gyr old and at a distance of 1.28 Kpc. On the other hand8, has concluded that the age and the distance are 600 Myr and 1.9 Kpc, respectively. Neither of them has a parallax value. The precise astrometry data from Gaia fundamentally altered our understanding of this cluster.

As depicted in Fig. 12, Gaia color-magnitude diagrams (CMDs) from various regions are employed to assess the consistency of interstellar material within the cluster and to investigate any potential structures as well. Despite its simplicity, this figure is of considerable importance. The investigation shows that the color excess Inline graphic is not uniform throughout the cluster. Overall, these figures are responsive to any phenomena associated with radius or position.

Fig. 12.

Fig. 12

The color-magnitude diagram (CMD) for the Czernik 38 cluster was investigated at different radii to determine the homogeneity of reddening. The color excess Inline graphic is not the same in entire cluster.

In order to construct the 2MASS CMD as illustrated in Fig. 11C, we first identified the member stars utilizing the Gaia astrometry and proper motion data. Subsequently, we correlated these stars with the 2MASS data, and thereafter, we applied the same isochrone depicted in Fig. 11A to fit the data. The distance modulus and the color excess Inline graphic are determined to be 12.87 Inline graphic 0.93 mag and 0.89 Inline graphic 0.2 mag, respectively. The isochrone fits of the Gaia and 2MASS CMDs demonstrate remarkable consistency with minimal error. Furthermore, the ratio of Inline graphic to Inline graphic satisfies equation 14.

Moreover, in relation to the photometric properties of this new cluster, we have fitted its data using the same isochrone as Czernik 38. The findings indicate that it possesses the same age, reddening, distance, and configuration as Czerni 38, suggesting the possibility that they may constitute a binary system.

The right branch of CMD or red stars

On the right side of both Gaia and 2MASS CMDs, approximately one-third of cluster member stars form a branch that is nearly parallel to the main sequence, as depicted in Fig. 11. It is worth noting that these member stars are the result of the pyUPMASK, HDBSCAN techniques, indicating that they possess proper motion and distance characteristics similar to those of main sequence stars. Additionally, we have identified the same trend in our prior studies which did not include further discussion in these works, such as the King 18 cluster52 and the King 13 cluster25, both of which are considered young clusters. Thus, the existence of this type of star in these clusters might be linked to their young age rather than being coincidental or field stars. In this research, we will confront this issue and seek to confirm whether these stars are indeed part of the clusters or if they are field stars, using astrometric and physical methods. In any situation, we will obtain more details concerning these stars.

Initially, we can derive the RDP of these stars, as illustrated in the left panel of Fig. 13. This diagram indicates a distinct overdensity of these stars. Furthermore, we display the probability with respect to the radius, as depicted in the right panel of Fig. 13. This figure demonstrates that these stars possess high probability values. Consequently, the two panels illustrated in Fig. 13 suggest that these stars may be potential member stars, although this is not conclusive. Therefore, we will look for additional evidence.

Fig. 13.

Fig. 13

The left panel displays the RDP of stars located to the right of CMD. Meanwhile, the right panel illustrates the plot of probability in relation to the radius.

We can generate the CMD diagram for the stars that are most likely to be members. Initially, we create the CMD for members whose probability exceeds 80%, utilizing the HDBSCAN clustering algorithm available in pyUPMASK, as illustrated in Fig. 14A. To further validate our results, we present the CMD using a different clustering approach, the Voronoi technique in pyUPMASK, for members whose probability surpasses 93%, as demonstrated in Fig. 14B. Consequently, the two clustering algorithms indicate that the majority of right branch stars, or red stars, are most likely members.

Fig. 14.

Fig. 14

CMDs of the most probable members, using HDBSCAN and Voronoi technique. This figure shows that the right branch stars and faint blue stars among stars which are the most likely member stars rather than field stars.

With respect to the physical parameters such as effective temperatures and surface gravity, Fig. 15A presents the G magnitudes plotted against the effective temperatures, which are obtained from53. This impressive figure indicates that the stars on the right branch are cooler compared to the main sequence stars. Although these stars are relatively cool, but they have luminosities comparable to that of main sequence stars. This denotes that they have large surface areas. That result is consistent with the lower surface gravity detected by Gaia GSP-Phot for these right branch stars when compared to main sequence stars, as represented in Fig. 15B. Regardless of the accuracy, there is a clear general trend.

Fig. 15.

Fig. 15

The triangles represent the red stars, which are distinguished by their reduced surface gravity and cooler environments compared to main sequence stars. This indicates that they are pre-main sequence stars rather than field stars.

Moreover, we have matched our members with APOGEE-2 DR17 data51 One star has been matched, depicted as a square in Fig. 11A, exhibiting temperature, distance, and log surface gravity measurements of 4071.3K, 4607 pc, and 1.427, respectively, which are in agreement with prior results. Furthermore, the newly identified cluster contains two stars that are represented as squares in Fig. 11B.

As a result of previous, the hydrogen burning phase in these stars has yet to begin. These stars could be classified as type of pre-main sequence stars. This suggests a significant rate of star formation, which aligns with the notion of being a young cluster. It is unreasonable for a young star cluster situated in a dense gas region to lack any stars undergoing formation. In contrast, this characteristic of high star formation in this cluster is consistent with its young age, its high reddening value, and its unique location in the high density of stars and dense gasses.

In addition, we would like to emphasize that the right branch stars or the red stars are found in the new cluster as well, but with a higher ratio than that of the Cernik 38 cluster. Thus, it is crucial that we examine the new cluster more thoroughly and in greater detail.

In summary, this study has effectively shown that the right branch stars or red stars are part of the Czernik 38 cluster, while also emphasizing certain characteristics of these stars. However, it is crucial for these stars to undergo spectroscopic analysis to investigate this matter in greater detail. This procedure adds further depth and enhances the research concerning star formation and their underlying physics.

The faint blue stars

At present, there are two primary methods for determining the age of stellar populations: the main-sequence (MS) evolution theory, which utilizes cluster isochrones, and the white dwarf (WD) cooling theory. A white dwarf found in a young open cluster is a stellar remnant that has developed from a massive progenitor star in a relatively young star cluster, which constitutes a rare but important find for astrophysicists. Then, the existence of white dwarfs within these relatively young clusters offers significant insights for research on the stellar evolution.

In current work, we have found that a number of stars appear to be fainter and bluer than the main sequence stars; see Table 2, which are indicated by stars in the rectangle in Fig. 11A. Additionally, they can be also found in the newly formed cluster as shown in Fig. 11B. Moreover, these stars are most probable member stars, as indicated in Fig. 14. These stars could potentially be young white dwarfs based on their locations in the Color-Magnitude Diagram (CMD). Interestingly, the correlation between G magnitude and the color Inline graphic is nearly the same in both clusters, as seen in Fig. 11, particularly since they share the same age and the same place. It is important to note that these stars are found beyond a radius of 2 arcmin, as depicted in Fig. 12. Moreover, the same pattern is found in the young open clusters Stock 12 and ASCC 11354.

Table 2.

List of descovered white dwarfs.

Gaia DR3 ID Inline graphic Inline graphic radius G Inline graphic Prob.
Deg. Deg. Arcmin Mag. Mag. Percentage (%)
1 4282131257964030720 282.488 4.897 4.269 20.178 2.074 80.20
2 4282131532836314368 282.467 4.905 3.113 20.351 2.250 81.61
3 4282142184355749760 282.322 4.878 8.248 20.184 2.247 81.57
4 4282142218715486080 282.337 4.890 7.104 20.494 2.284 80.17
5 4282143112068635264 282.388 4.924 3.470 20.455 2.230 81.43
6 4282143283872510720 282.463 4.921 2.219 20.576 1.449 78.82
7 4282143627464635904 282.431 4.947 0.575 20.514 2.114 76.58
8 4282144039781979008 282.318 4.935 7.362 20.037 2.054 80.31
9 4282144653966298112 282.402 4.976 2.771 20.719 2.274 78.22
10 4282144761336523008 282.393 5.002 4.206 20.438 1.777 82.55
11 4282147716274076800 282.385 5.004 4.615 20.561 1.976 80.48
12 4282225300559148800 282.552 4.942 6.716 20.426 1.622 80.75
13 4282225468068170496 282.534 4.939 5.677 20.343 1.519 80.25
14 4282237154668950144 282.485 4.942 2.730 20.282 2.259 77.61
15 4282237257748183424 282.487 4.959 2.887 20.513 2.059 80.67
16 4282238013662465280 282.507 5.002 5.051 19.970 2.331 81.08
17 4282238322900207616 282.422 4.989 2.569 20.165 1.980 76.15
18 4282238666497611648 282.433 5.013 3.830 20.398 2.037 80.48
19 4282239005803014144 282.491 5.036 5.990 20.018 2.312 80.30
20 4282239010094969856 282.487 5.040 6.073 20.617 1.868 80.34
21 4282239319332654336 282.487 5.069 7.649 20.250 2.129 80.55
22 4282240796801415296 282.493 5.080 8.429 20.235 1.845 81.79
23 4282242033752085376 282.377 5.061 7.659 20.433 2.305 79.58

The cluster dynamics and kinematics

OCs are outstanding markers for tracing the evolution of the Galactic disc. The release of Gaia DR3 allows for the investigation of their Dynamics and Kinematics with an unprecedented level of precision and accuracy. The center of the cluster is located at 282.45 Inline graphic 0.05 and 4.97 Inline graphic 0.05, which corresponds to the Galactic coordinates l= 37.17 Inline graphic 0.05 Inline graphic and b= 2.63 Inline graphic 0.05 Inline graphic.

The proper motion, distance and cluster kinamtics

The components of proper motion and parallaxes are modeled using Gaussian distributions, as illustrated in Fig. 16. The average values have been determined to be Inline graphic = −2.41 Inline graphic 0.328 mas yrInline graphic, Inline graphic = −5.263 Inline graphic 1.063 mas yrInline graphic and Inline graphic, respectively. To enhance the accuracy of parallax measurements, the parallaxes are adjusted according to the methodology outlined in57, implemented through Python code (gaiadr3_zeropoint). After applying a Gaussian distribution to the resulting histogram, Fig. 16 reveals that the mean parallax (Inline graphic) is 0.21 Inline graphic 0.083 mas. The detailed results are presented in Table 3. Table 3 also presents a comparison between our results and previously published values, showing good agreement overall.

Table 3.

Some parameters of Czernik 38,, compared to others.

Inline graphic Inline graphic Inline graphic Inline graphic Inline graphic N age Inline graphic Ref.
deg. deg. mas yrInline graphic mas yrInline graphic mas Stars log (Gyr) deg.
282.45Inline graphic0.05 4.97Inline graphic0.05 −2.41Inline graphic0.328 −5.263Inline graphic1.063 0.21Inline graphic0.083 938Inline graphic61 115.0Inline graphic20.3 14.36Inline graphic7.63 arcmin (Inline graphic) This work
282.444 4.963 −1.829 ±0.0.22 −4.984±0.23 0.377 ±0.137 151 8.614 0.038 55
282.451 4.965 −1.840 −5.005 0.383 194 - 0.041 56
2282.453 4.962 −1.777 −5.056 0.369 308 - 0.0485 42

Parallaxes (Inline graphic) play a crucial role in ascertaining distances; however, they do not directly convert to distances. This is due to the nonlinear relationship that exists between them, as well as the measurement noise that impacts distant stars. Even slight absolute errors in parallax may cause substantial uncertainties in distance calculations. In addition, while parallax can result in negative values, distances are not able to achieve this. A more effective method might involve using an explicit probabilistic approach to estimate distances58. provide distances catalog of 1.47 billion stars in Gaia EDR3, using probabilistic approach. Also, we fit the histogram of these members distances with Gaussian distribution. The mean distance to the cluster is found as 3580.4 Inline graphic 230.5 pc, see Fig. 16. This value is consistent with the results obtained from photometric data within the estimated errors.

It is well-known that the stars in the cluster move at almost the same speeds. The tangential velocities of OCs, calculated from absolute proper motions (Inline graphic) and parallaxes (Inline graphic) or distances, allow identification of the type of orbit the cluster follows. This contributes significantly to studies of cluster origins and destruction processes. The tangential velocity in km Inline graphic is given by:

graphic file with name d33e2525.gif 17

where the constant 4.74 comes from the unit conversion:

graphic file with name d33e2530.gif

Here, d and Inline graphic are the distance, proper motion in parsecs, arcseconds yrInline graphic, respectively. Fig. 17A shows a histogram of tangential velocity Inline graphic with an average value of 93.28 Inline graphic 27.16 km Inline graphic, following a nearly Gaussian distribution.

Fig. 17.

Fig. 17

Tangential velocities and the Inline graphic histograms. The red line is the Gaussian fit.

As cluster members generally move in nearly the same direction through space. The proper motions of the stars seem to converge at a singular point in the sky, which is called the convergent point. This apparent convergence is a perspective effect that arises from the shared trajectory of stars through space. As a result, grasping the tangential velocity alone does not suffice. A key supplementary parameter is the angle Inline graphic, which indicates the direction of the cluster’s motion within the Inline graphic and Inline graphic space. It is as described by this formula:-

graphic file with name d33e2576.gif 18

Fig. 17B presents a histogram of Inline graphic for member stars, with an average angle of −114.33 Inline graphic 12.767Inline graphic, providing a clearer view compared to Fig. 19. Additionally, the dispersion in the Inline graphic histogram could reflect the cluster’s age and its degree of gravitational binding. Also this dispersion cloud help test the different membership methods.

Fig. 19.

Fig. 19

The co-moving star diagrams of Czernik 38, derived from Gaia DR3, are based on members from our research as well as other sources.

Furthermore, there are 37 member stars that exhibit radial velocities with an average value of 46.1 Inline graphic 8.54, in the Gaia DR3 archive. This value agrees with the value of59 (57.58 km Inline graphic.) within the error. So, the space velocity of the cluster (Inline graphic) is approximately 109.8Inline graphic 13.56 km Inline graphic, making an angle of 25.5 Inline graphic 8.0Inline graphic with tangential velocity direction. Then we can get the orbital parameters of the studied cluster, see next subsection “Cluster orbit”.

Cluster orbit

OCs are remarkable markers for understanding the evolution of the Galactic disc. Utilizing Gaia DR3, researchers can analyze their kinematics with exceptional precision, particularly in terms of proper motion and parallax (Inline graphic, Inline graphic, and Inline graphic). Furthermore, Gaia DR3 offers radial velocities (RV) for millions of relatively luminous, late-type stars60, gathered by the Radial Velocity Spectrometer (RVS) instrument61. The integration of parallax, proper motion, and RV yields significant phase-space data. For example62, demonstrated the great potential of Gaia data for studying the kinematics of the Galactic disc and OCs, revealing the richness of phase-space substructures. OCs trace the formation and evolution of our Galaxy. Their ages cover the entire lifespan of the Galactic disc, spanning the young to old thin-disc components. Their spatial distribution and motion help to better understand the gravitational potential and the perturbations acting on the structure and dynamics of the Galaxy. The orbital motions of OCs are essential not only for understanding their dynamical evolution in the Galaxy but also for investigating the dynamics of the Galaxy itself.

To compute a cluster’s orbit, we must first adopt a model for the Galactic potential. This potential must accurately reproduce the observed mass density of the Galaxy. For this purpose, we performed backward orbital integration of Czernik 38 using the “MWPotential2014” model, the default Galactic potential in the galpy package63. This model is made up of three parts: (1) the bulge component, described by a spherical power-law potential63, (2) the Galactic disk potential, defined by the Miyamoto-Nagai expression64, and (3) the dark matter halo potential, given by the Navarro-Frenk-White profile65. The Sun’s galactocentric radius, orbital velocity, and z-coordinate were taken as Inline graphic kpc, Inline graphic km Inline graphic, and Inline graphic pc63.

For input, we used the cluster parameters presented: proper motions (Inline graphic, Inline graphic), distance from the Sun, equatorial coordinates (Inline graphic, Inline graphic), and radial velocity, which was calculated as an average from the Gaia DR3 data for member stars. Fig. 18 shows the integrated orbit of Czernik 38 in the Cartesian Galactocentric coordinate system, backward in time according to the cluster age determined in this study. The red cross indicates the birthplace of the cluster. According to the z-coordinate, the cluster oscillates about it every 92.54 million years, rising above the plane of the disk up to a maximum height of 181.76 pc. Therefore, Czernik 38 belongs to the very thin-disk component of the Galaxy. The apocenter Inline graphic and the pericenter Inline graphic are found to be 5.81 and 4.81 Kpc, respectively, which correspond to the eccentricity of the orbit (Inline graphic) 0.095. The current coordinates Inline graphic are (5.08, 2.21,0.18, 5.55,−104.29, 186.48, −3.46), while the birthplace coordinates are (2.04, 5.25, −0.13, 5.63, −187.26, 92.66, 14.32). Moreover, the space velocity components U, V and W are 94, −47.61 and −10.49 km Inline graphic, respectively.

Fig. 18.

Fig. 18

The cluster orbit. The red cross is the birth place. The open blue circle is the currant place. The cluster moves in Galactic center direction within Galactic plane, and as a result, it generally faces the impact of Galactic tidal forces.

To summarize this section, the Czernik 38 cluster is located 5.55 kpc from the Galactic center and is moving parallel to the Galactic plane towards the Galactic center, following a nearly circular orbit.

Table 4.

The orbital’s parameters.

No. of atars Apocenter Pericenter Eccentricity Inline graphic Inline graphic vx vy vz W V U Ref.
kpc kpc - kpc Gyr kmInline graphic kmInline graphic kmInline graphic kmInline graphic kmInline graphic kmInline graphic
37 5.81 4.81 0.095 5.55 0.1 −104.29 186.48 −3.46 −20.85 −56.8 25.1 this work
1 8.02 6.19 0.129 6.67 - 91.46 241.64 2.8 - - - 66
1 - - - - - - - 2.60 −4.65 −13.66 82.72 67

The Morphology and the Tidal Tail of Czernik 38

The evolution of an open cluster, influenced by internal or external forces, is reflected in its changes in shape. More than a century ago, the flattening of a moving cluster was postulated by68. An important aspect of OCs is their morphological structure, which is associated with features such as elongated shapes and tidal tails. The orientation of cluster elongation or tidal tail reflects the direction and nature of the gravitational tidal force.

The elongation of Czernik 38

The analysis conducted by43 on 476 OCs utilized a probabilistic approach, revealing the elongated structure in all samples, with Czernik 38 being one of them. The co-moving stars associated with his members are illustrated in Fig. 19B. In addition, the RDP of these members is illustrated in Fig. 969. conducted an analysis of the morphology of 1256 OCs employing nonparametric bivariate density estimation. They found the elongated shape of the majority of their samples, with Czernik 38 being one of them. The diagram of co-moving stars for their members is depicted in Fig. 19C. These strategies appear to experience some difficulties and commonly trend towards an elliptical shape in star clusters, along with an S-shaped configuration.

In this research, we have also found an elongated structure, as depicted in Fig. 19A, using a natural method that combines the HDBSCAN probability with the King model. Moreover, we identified the direction of elongation, which aligns with the direction of orbital motion. As indicated previously, this orientation is significant for elucidating the properties of the tidal force; please refer to subsection "The nature of the tidal force affected the Czernik 38" for more comprehensive information.

The tidal tail of Czernik 38

These tidal tails are stellar structures that extend from the main body of the cluster, arising from the gravitational interactions between the cluster and the Galactic potential or a giant molecular cloud9. Clusters that exhibit substantial elongation in their morphology tend to have tidal tails17. The pronounced elongation of Czernik 38 is the basis for our investigation into the tidal effects that extend beyond the radius of the cluster. Subsequently, we applied a probability of 80% outside the cluster radius, extending to 17 arcmin, up to the boundary of the new cluster. we have identified only a leading tidal tail (see Fig. 20) that is aligned with the orbital motion, directed towards the Galactic center; refer to Fig. 18. We agree with some results of17, where they identified extended structures in 46 OCs with elongated configurations, of which 20 clusters have tidal tails that are aligned with their orbital motions.

Fig. 20.

Fig. 20

Our study reveals only the leading tidal tail of Czernik 38, with no trailing tails observed.

In our earlier investigation, we have also noted only a leading tidal tail that lies beyond the radius of the cluster, oriented in the direction of the orbital motion within the King 13 open cluster25. Conversely, some research utilizing 3D projection indicates that the tidal tail is made up of two distinct components: a leading tail and a trailing tail, which together produce an S-shaped configuration15,70. The issue may lie in their techniques, see section “Final note”.

The nature of the tidal force affected the Czernik 38

Fundamentally, displacement is dynamically influenced by acceleration and the initial conditions of both position and velocity, rather than by the mass of the object. For instance, free fall towards the Earth, irrespective of air resistance, is independent of the mass of the object and is instead determined by gravitational acceleration. In other terms, objects of varying masses arrive at the Earth simultaneously.

In a similar manner, the stars located in the forefront of the cluster are less influenced by the gravitational forces exerted by the cluster. As a result, they undergo increased orbital acceleration relative to the rest of the cluster, which causes them to move more rapidly than the other stars present in the cluster. This dynamic scenario ultimately results in the creation of an elongated shape and possibly a leading tidal tail in the direction of cluster orbital motion, known as differential rotation tides. In addition, when considering tides that result from differential rotation, the part extending in front of the cluster will persist unchanged at the forefront throughout its orbital trajectory. Consequently, the influence of the differential rotation tide lasts for a long time. Therefore, we expect that this type of tide is more common.

In contrast, in the case of Galactic tides or those from any massive objects, the part of the cluster affected by the tide may change during its orbital journey. The orientation of the elongated structure or tail may not align with the direction of orbital motion. Consequently, it is imperative to recognize the direction of the tide, as it is essential to understand the nature of the tidal force.

In this work, we have fount the direction of the elongated structure and the tidal tail of Czernik 38 cluster in the direction of the orbital motion, as seen in Fig. 19A. Consequently, as we discussed earlier, this kind of tide is a result of differential rotation. However, this cluster is moving towards the Galactic center and may also be influenced by the Galactic tide.

Final note

In Fig. 16, it is vital to stress that the distribution of distances is nearly Gaussian, and this is only associated with parallax errors, rather than the actual physical 3D distribution of stars or line of sight distance variation. In other words, any 3D distribution of stars or any density map based on coordinates will not be connected to the real physical position distribution of stars, resulting in a fake shape and false results.

In literature, the Astropy python package71 is used to calculate the Galactic Cartesian coordinates (X, Y, and Z) with right ascension, declination, and zero-point corrected parallaxes as input, see72,73 as example. The X, Y, and Z coordinates are associated with parallax errors and do not accurately reflect the line of sight distances of the individual member stars. Furthermore, zero point correction does not yield individual distances; it only adjusts the mean.

The stars located at the center of the Gaussian distribution signify the nucleus of the cluster, whereas the stars positioned at the peripheries of the Gaussian distribution denote the leading and trailing tails or elliptical shape, creating a deceptive shape.

Summary and conclusions

Czerink 38 is a remarkably plentiful open star cluster, distinguished by its significant number of stars and unique features resulting from its specific position in the Galaxy. However, this cluster has not been extensively studied. Consequently, we conducted an in-depth analysis of the young open cluster Czernik 38, utilizing photometric and astrometric data from Gaia DR3, alongside 2MASS data for comparative purposes with Gaia’s color-magnitude diagram (CMD). The objective of our analysis was to improve the parameters of Czernik 38 in relation to the Gaia DR3 era, particularly concentrating on its kinematics, dynamics, morphology and structural aspects. Moreover, To estimate membership, we employed the pyUPMASK Python package along with the HDBSCAN algorithm. The key focus of this investigation is our method of evaluating membership probability based on the radius of each shell in the studied cluster, utilizing King model, rather than applying a single probability value to the entire cluster. The key results of our study are summarized as follows :-

  1. In Czernik 38, we identified 938 Inline graphic 61 member stars with a total mass of 2769.7Inline graphic 59.50 Inline graphic inside radius 14.36Inline graphic 7.63 arcmin.

  • 2)

    We found that the cluster’s distance modulus was 12.69Inline graphic 0.08 mag, which is equivalent to 3448Inline graphic 362 pc. We also found the color excess Inline graphic is 2.40 Inline graphic 0.04 mag. Our findings have been confirmed by a comparison of the Gaia CMD with 2MASS data, which offers an additional viewpoint on the photometric characteristics of the cluster. The 2MASS distance modulus and the color excess Inline graphic are found to be 12.87 Inline graphic 0.93 mag (3749.73 Inline graphic 0.93 pc) and 0.89 Inline graphic 0.2 mag, respectively. We estimate the age of the cluster to be 115.0Inline graphic 20.3 Myr. One of the characteristics of this cluster is significant reddening, which is not uniformly distributed throughout the cluster.

  • 3)

    The proper motion components (Inline graphic, Inline graphic) and the parallax (Inline graphic) were measured as −2.41 Inline graphic 0.328 mas yrInline graphic, −5.263 Inline graphic 1.063 mas yrInline graphic (tangential velocity is 93.28 Inline graphic 27.16 km Inline graphic), and 0.21 Inline graphic 0.083 mas, respectively. The mean distance derived from parallax measurements is approximately 3580.4 Inline graphic 230.5 pc, which is in excellent agreement with the photometric data from Gaia and 2MASS data, within the associated uncertainties.

  • 4)

    We also identified 37 member stars with radial velocity data with average 46.1 Inline graphic 8.54 km Inline graphic, allowing us to compute the orbital parameters of Czernik 38 using the galpy Python package. The Czernik 38 moves in Galactic plane toward the Galactic center.

  • 5)

    One of our main results is that: We identified a an elongated shape and a leading tidal tail aligned with the direction of orbital motion. This indicates that Chernik 38 is greatly affected by its orbital differential rotation, and this tide may be strengthened by the Galactic tide as it moves toward the Galactic center.

  • 6)

    The coordinates, proper motions, and distances of individual stars in the majority of open clusters display Gaussian distributions. Such distributions result from errors, not from actual physical values. Thus, any 3D distribution of stars or any density map based on coordinates will not relate to the true physical position distribution of stars, resulting in an artificial shape and and misleading results

  • 7)

    In general, we examined the area surrounding the cluster within a radius of 50 arcmin and employed a membership probability map in two dimensions Inline graphic and Inline graphic, with probability threshold of greater than 80.%. Two separate groups of stars were identified. The first group corresponds to the Czernik 38 cluster, whereas the second group represents a newly discovered cluster. The initial investigations indicate that it displays a King profile and a color-magnitude diagram (CMD) consistent with the isochrone of Czernik 38. This may indicate a binary cluster or a complex colliding system located within a densely populated area of stars and interstellar material. We plan to explore this intriguing subject further in our upcoming research, offering comprehensive insights into the features of this newly identified cluster.

  • 8)

    We have identified a novel category of pre-main sequence stars that form a distinct branch in the right of Color-Magnitude Diagram (CMD). These stars exhibit lower temperatures and surface gravities compared to main sequence stars. This implies a considerable rate of star formation. The characteristic of this high star formation rate in this cluster corresponds with its relatively young age, significant reddening value, and its specific location amidst a concentration of stars and dense gases. In addition, we identified faint stars in both clusters, Czernik 38 and the new one, that exhibit bluer characteristics than main sequence stars, suggesting they could be white dwarf stars. These findings are intriguing because these stars are located in young clusters.

In summary, alongside the photometric analysis, we offer significant insights into the structure, stellar populations, stellar evolution, as well as the kinematics and dynamics of Czernik 38, emphasizing the potential of Gaia DR3 data for comprehensive research on open star clusters. Moreover, the accurate astrometry data derived from Gaia has significantly modified our understanding of this cluster and has led to the discovery of new phenomena, thanks to Gaia.

Acknowledgements

This work has made use of data from the European Space Agency (ESA) space mission Gaia. Gaia data are being processed by the Gaia Data Processing and Analysis Consortium (DPAC). Funding for the DPAC is provided by national institutions, in particular the institutions participating in the Gaia MultiLateral Agreement (MLA). The Gaia mission website is https://www.cosmos.esa.int/gaia. The Gaia archive website is https://archives.esac.esa.int/gaia. The authors are pretty thankful to Python community groups for large efforts especially for Matplotlib, Numpy, Scipy and Astropy etc. Their efforts have contributed to making data analysis easier as well as representing it graphically in a creative way. This publication makes use of data products from the Two Micron All Sky Survey, which is a joint project of the University of Massachusetts and the Infrared Processing and Analysis Center California Institute of Technology, funded by the National Aeronautics and Space Administration and the National Science Foundation. I would like to thank my colleague Professor A. L. Tadross for his valuable discussions and insights during the preparation of the manuscript.

Author contributions

Nasser M. Ahmed: Inline graphic

Funding

Open access funding provided by The Science, Technology & Innovation Funding Authority (STDF) in cooperation with The Egyptian Knowledge Bank (EKB).

Data availability

Gaia DR3 and 2MASS data : are available for free in webpage https://vizier.cds.unistra.fr/

Declarations

Competing interests

The authors declare no competing interests.

Footnotes

Publisher’s note

Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.

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Associated Data

This section collects any data citations, data availability statements, or supplementary materials included in this article.

Data Availability Statement

Gaia DR3 and 2MASS data : are available for free in webpage https://vizier.cds.unistra.fr/


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