Abstract
Lava overflows are highly hazardous phenomena that can occur at Stromboli. They can destabilize the crater area and the “Sciara del Fuoco” unstable slope, formed by several sector collapses, which can generate potentially tsunamigenic landslides. In this study, we have identified precursors of the October-November 2022 effusive crisis through seismic and thermal camera measurements. We analyzed the lava overflow on October 9, which was preceded by a crater-rim collapse, and the overflow on November 16. In both cases, seismic precursors anticipating the overflow onset have been observed. The analysis of the seismic and thermal data led to the conclusion that the seismic precursors were caused by an escalating degassing process from the eruptive vent, which climaxed with the overflows. Volcano deformation derived from ground-based InSAR and strainmeter data showed that inflation of the crater area accompanied the escalating degassing process up to the beginning of the lava overflows. The inflation of the crater area was especially evident in the October 9 episode, which also showed a longer seismic precursor compared to the November 16 event (58 and 40 min respectively). These results are important for understanding Stromboli’s eruptive mechanisms and open a perspective for early warning of potentially dangerous phenomena.
Subject terms: Volcanology, Natural hazards
Introduction
Stromboli is an Italian volcano located in the southern Tyrrhenian Sea, north of Sicily (Fig. 1). It is a persistently active volcano producing several hundred Strombolian explosions per day1 that originate from different eruptive vents in the crater area (Fig. 1). The morphology of the volcanic edifice is characterized by the imprint of repeated lateral collapses that have particularly affected the north-western side of the island2. This slope, called “Sciara del Fuoco”, was shaped by the accumulation of volcanic products erupted by the persistent explosive activity3,4, which filled the deep depression created by sector collapses with unstable loose talus5. On December 30, 2002, two days after the beginning of an effusive phase, a large landslide broke off the Sciara del Fuoco, partly underwater, and generated a tsunami with waves of about 10 m on the coasts of the island6,7. This tsunami caused extensive damage on the island, where two villages are located, Stromboli, in the northern sector, and Ginostra on the southern side (Fig. 1). Fortunately, this tsunami didn’t cause any casualties, but some people were injured. In recent decades Stromboli showed an increase in eruptive activity and produced dangerous phenomena such as lava flows, paroxysms8, pyroclastic flows, major explosions, and crater collapses1,9–12. The main effusive phases occurred in the years 2002-200313–15, 200716, 201410, and 20198. In addition to these effusive phases, minor lava overflows (hereinafter referred to as overflows) often occurred (at least 78 from September 20084,12,17,18) which have affected the morphology of the Sciara del Fuoco1,11,12,18. Although the overflows are generally short-lived events, they can destabilize the slope of the Sciara del Fuoco, especially when they reach the sea rapidly. In some cases, the overflows are preceded by the collapse of the eruptive crater rim, as happened in March-April 202011, on May 19, 202112,19 and on October 9, 2022. In general, the collapse of a portion of the summit crater causes a Pyroclastic Density Current (PDC) on the Sciara del Fuoco, which accelerates along the slope with speeds up to m/s and sometimes expands over the sea for tens to several hundred meters10,11. This process is potentially tsunamigenic, and even when it does not trigger major landslides, it can cause anomalous waves of modest magnitude. The summit crater collapses because of magma fingering within the poorly welded spatter comprising the summit cinder cone20. This process is the result either of ejecta rapid accumulation around the erupting vent, which grows an unstable structure prone to fail21, or it is caused by the rise of magma level within the crater10. Once the crater fails and the summit cone is breached, it takes several months before the collapsed flank is built up again. Thus, generally, summit crater failures do not recur in sequence, because some time is required for the summit to revert to the highly unstable conditions leading to the collapse episodes.
We selected two overflow events as case studies in which the precursors are clearly evident, allowing us to characterize them. The first event occurred on October 9, 2022, and was characterized by a crater collapse resulting in PDC, which happened before the lava overflowed the N2 crater rim (marked with a red asterisk in Fig. 1). The second episode under analysis occurred from the same vent on November 16, 2022, and did not show any crater collapse. By examining seismic, geodetic, and thermal camera data, we identified medium-term precursors of these overflows. The data, the results obtained and the analysis methods are described below.
Results
Eruptive activity on October 9 and November 16, 2022, based on analysis of video camera recordings
The eruptive activity on October 9 was observed and described using the SCT, SCV and SPCT cameras, which provide a side view of the crater terrace from the NNE (SCT, SCV) and the SSW (SPCT), respectively (Fig. 1). The thermal camera SCT offered the best view and was used for a semi-quantitative analysis. A total of 7 vents were observed to erupt on October 9, the early morning. They can be grouped into two crater areas: northeast (N1 and N2 in Fig. 1) and central-southwestern (SW in Fig. 1). Such a high number of small vents is typically associated with a magma level that is not very shallow within the conduit22, estimated at few tens of meters depth. The eruptive activity consisted of mild spattering (with heights of the ejecta mostly less than 10 m) but with a high frequency from two vents within N2 crater. These vents exhibited synchronized increasing and decreasing phases every 2–3 h, where only puffing was observed during the lower phases. Strombolian explosions occurred from SW and N1 vents, on average 2–3 times per hour, with the most powerful explosions observed at N1, reaching ejecta heights up to m. After 06:24 UTC, the spattering activity from the two vents within N2 increased significantly, causing fallout along the upper Sciara del Fuoco (SdF). The height of the ejecta reached a few tens of meters, and around 07:20, the two jets from the N2 vents merged, likely due to failure of the septum which had separated them. The height of the ejecta further increased, and at 07:22 the northern flank of the N2 crater collapsed, resulting in an overflow from the breached crater rim and a pyroclastic density current. The PDC rapidly spread along the SdF and reached the sea in 28 s, covering a distance of 1130 m at an average speed of m/s. The PDC continued to spread on the sea surface for approximately 500 m, similar to previous occurrences documented in the past1,10,19. Several pulses of lava overflows were visible from the monitoring cameras, occurring at the breached crater rim approximately every 20 s and spreading on the surface of the well-fed lava flow until 07:32, with a speed of 0.5–2.0 m/s. At 07:44 the lava flow front reached the coast, as observed from the SPCT thermal camera (Fig. 1). The lava overflow drained the upper conduit, and the explosive activity from the summit craters ceased until 07:49 when a new explosion occurred from N1. Spattering within N2 resumed at around 08:00, originating from the previous joined vents, which were now located at a lower elevation within the notch resulting from the failed crater flank. Mild explosions spread spatters in a hemisphere of approximately 30 m radius around the vent, suggesting that magma level was at the crater rim. These explosions occurred while lava was flowing from the breached crater rim and along the SdF. Spattering from the N2 vent and lava flow output along the SdF continued, accompanied by occasional Strombolian explosions from N1 and SW. The explosions became more powerful after 16:00, both in terms of higher frequency of the spattering and of ejecta height (up to m). Several smaller crater failures occurred at 11:03 and from 13:39 until midnight originating at the north crater rim, which triggered PDCs spreading above and along the north and south sides of the still well-fed lava flow. The PDCs reached the coast and spread on the sea surface for several hundred meters. After 17:30 the spattering from the N2 vent and the lava flow output rate decreased, and explosions from N2 passed to puffing after 19:30. The lava flow output rate gradually decreased over time and eventually ceased on October 14 (INGV Weekly Report 42/2022, last accessed on 19 May 2023; https://www.ct.ingv.it/index.php/monitoraggio-e-sorveglianza/prodotti-del-monitoraggio/bollettini-settimanali-multidisciplinari).
The episode on November 16 began with intense degassing and spattering from two vents within the N2 notch that had collapsed on October 9, resulting in ejecta reaching a height of a few tens of meters. Powerful explosions from N1 and SW were also recorded, reaching heights approximately 250 m. An additional third degassing vent was located on the north flank of the N2 crater rim in the upper SdF, where the effusive vent of the previous episode has opened. This vent produced degassing and spattering, with ejecta reaching heights of a few tens of meters. Compared to the October 9 episode, on November 16 the magma level was at the crater rim from the beginning of the day, thus causing an abundant spatter fallout in the upper SdF from all erupting vents. At 05:38, the spattering activity from N2 rapidly increased in frequency and ejecta height, and caused abundant spatter accumulation on the summit crater, NE flank. At approximately 06:18, an overflow started from crater north rim. It expanded for m on the upper SdF until 07:00 and showed only minor widening until around 10:30. This episode did not produce any PDC, but only minor rockfalls detaching from the lava flow front. The lava flow output was less significant than in the previous event: indeed, with a length of only 300 m, it did not reach the coast, which is located approximately 1.3 km from the N2 vent.
Escalating degassing processes tracked through seismic and thermal observations
We analyzed the data from the broadband seismic stations installed near the craters, namely STRA (approximately 500 m from the N2 vent), and at Ginostra, namely STRC (approximately 1800 m from the N2 vent), south of the crater area (Fig. 1). The data collected on October 9 and November 16, 2022, revealed an increase in seismic amplitude preceding the onset of the overflows. This increase was observed at all seismic stations (Fig. 2). On October 9, the overflow was preceded by the crater collapse, resulting in a high-amplitude landslide seismic signal (Fig. 2a). In contrast, on November 16, no crater collapse occurred, and the amplitude of the seismic signal decreased after the overflow began.
To understand the nature of the seismic signal recorded prior to the overflows (hereinafter referred to as seismic precursor), we first considered what is known about Stromboli’s seismc wave field from previous studies23–26. Stromboli is known to exhibit a dominant volcanic tremor in its seismic wave field, which is typically observed in open conduit volcanoes like Yasur, Etna, Villarrica27–29. The volcanic tremor is a persistent signal at Stromboli. Ripepe et al. (1996)30 proposed that the volcanic tremor at Stromboli was generated by continuous outbursting of small gas bubbles in the upper part of the magmatic column. They based their hypothesis on the analysis of seismic, infrasonic and camera recordings collected at a small distance from the active vents. Chouet et al. (1997)31 suggested that the persistent volcanic tremor at Stromboli originated from the collective oscillations of bubbles ascending in a degassing fluid column through the magma conduit. They measured the slowness and back-azimuth of the Stromboli volcanic tremor using seismic arrays installed in the Labronzo area, and determined that the tremor sources were located beneath the summit crater at depths shallower than 200 m. This study highlighted that the signals of tremor and explosions were both dominated by shear horizontal (SH) waves, and the wave field consisted of body and surface waves associated with topography, structure, and source properties. Numerous other studies have been conducted on the volcanic tremor at Stromboli (e.g. Refs.32–34). Among them, De Lauro et al. (2006)35 analyzed the tremor in the 0.1–0.5 Hz trequency band (referred to as “Stromboli VLP tremor”), and found that it was radially polarized and its source was located in the crater area. Other signals that characterize the Stromboli seismic wave field are the explosion-quakes, which are generated by the ordinary eruptive activity in the crater area, and the signals produced by landslides on the Sciara del Fuoco. The tremor typically exhibits frequency content within the 1-3 Hz range (Fig. 3a). The signals generated by the explosions are characterized by Very Long Period (VLP) events with frequencies in the 0.05–0.5 Hz range and mostly have a spectral content at higher frequencies between 1 and 7 Hz (Fig. 3c). Landslides generate signals with higher frequencies, reaching up to 20 Hz (Fig. 3c).
To gain insights on the source processes generating the progressive increase in seismic amplitude in the two overflows under analysis, we calculated the spectrogram of the two sequences (Fig. 4), and conducted a detailed comparison between the spectral characteristics of the seismic precursor and those of the explosion and tremor recordings. It was found that the spectra of the three types of signals significantly overlap (Fig. 5). Figure 4 illustrates that a signal with a frequency content compatible with volcanic tremor predominates before the seismic precursor onset. In both episodes, the precursor is defined as signal between the tremor and the onset of the overflow. It exhibits a frequency content similar to that of the explosion-quakes (which also includes the frequencies typical of volcanic tremor), but without VLP pulses. During this interval, the signal is continuous (Figs. 4, 5) and the VLPs, typically associated with the explosion-quake signals (Fig. 5), are only recorded in coincidence with some explosion. In the October 9 episode, the collapse of the crater generated a significant landslide signal characterized by higher frequencies compared to the other seismic signals typically observed at Stromboli (Fig. 4a). Even after the collapse, smaller-amplitude landslide signals persisted due to the continuous rolling of blocks from the lava flow front and along the slope, generating a landslide seismic signal26 (Fig. 4a). On November 16, the overflow was not preceded by a crater collapse. However, also in this case, the rolling blocks from the lava front generated landslide-like signals identifiable in the spectrogram high frequencies (Fig. 4b). The seismic amplitude in the frequency band typical of landslide signals (>10 Hz) is relativey small, and therefore, this component is not dominant in the wave field produced by the November 16 episode.
From a seismological perspective, the seismic precursor can be classified as a type of tremor. In order to examine any distinctions between the seismic precursor and the typical volcanic tremor observed at Stromboli, a more detailed spectral analysis of both signals was conducted. We stacked the spectra of 1-minute windows of recording for the seismic precursor and the tremor in both case studies. Subsequently, the ratio between the stacked spectra of the seismic precursor and tremor was calculated (additional analysis details are provided in the Supplementary Material). From the stacked spectra ratio, it can be observed that in the October 9 episode, the seismic precursor exhibited significantly higher amplitude compared to the ordinary tremor, particularly in a narrow frequency band around 0.4 Hz (Fig. 6a). To further investigate this frequency band, we filtered the seismic data of the three components of the STRA station (the closest one to the active vents) by applying a narrow bandpass filter around 0.4 Hz (0.2–0.5 Hz). The data filtering was performed using a two-pole, zero phase shift Butterworth-bandpass filter. Subsequently, we computed the polarization of the STRA seismic signal. For the signal analysis, ObsPy36–38, an open-source Python system for processing seismological data, was employed. Our findings reveal that the polarization azimuth mostly aligns with the direction of the active vent (N2) when the seismic precursor emerges. This occurs in both episodes (Fig. 6b–d). The mean incidence angle of polarization in the analyzed time intervals depicted in the rose diagrams of Figure 7d (panel b: 6:25–7:20 UTC, October 9, 2022, and panel c: 5:39–6:10 UTC, November,16, 2022), was approximately 10 degrees with a dip towards the N2 vent during the October 9 event, and about 6 degrees with the same dip, for the November 16 event.
By visually analyzing the images captured by the SCT camera (Fig. 1) during the October 9 overflow, we observed a correlation between the seismic precursor and an intense phase of degassing and the spattering from the N2 vent located in the northeastern sector of the crater area (Fig. 1). The outgassing phase persisted continuously until the collapse of the crater (58 min after the seismic precursor onset), which was immediately followed by the overflow. Thus, the continuous bursting of bubbles at the vent was sustained by the increasing outgassing activity over time. A similar degassing phase, associated with the seismic precursor, was observed before the overflow on November 16, 2022, based on the analysis of thermal camera images. Notably, at the same moment when the seismic amplitude increase began at 5:38, an intense outgassing and spattering activity was observed at the N2 vent. The overflow from the N2 vent started at 6:18, 40 min after the seismic precursor onset, and the concurrent onset of intense outgassing and spattering activity at vent N2.
To compare the camera recordings with the seismic data, we carried out a basic image processing (see the Methods section for details). This method allowed us to calculate a parameter, which we named Temperature index (T-Idx). The T-Idx is proportional to the temperature of a pixel sector framing the eruptive vent (N2). Figure 7 shows the comparison between the T-Idx (represented by red dots) and the seismic amplitude, expressed as RSAM39, calculated in two frequency bands: 1–7 Hz (blue dots) and Hz (green dots). The 1–7 Hz frequency band is sensitive to the seismic precursor, and encompasses the characteristic frequencies of volcanic tremor and Strombolian activity. The > 10 Hz frequency band is particularly sensitive to the rolling of blocks on the Sciara del Fuoco, thereby highlighting landslides and block detachment from the lava overflow front. The T-Idx, which is sensitive to the continuous bursting activity associated with the escalating outgassing from the N2 crater, exhibits a temporal evolution in good agreement with the seismic amplitude in the precursor frequency band (1–7 Hz). Both parameters show a sharp increase starting 58 and 40 min before the October 9 and November 16 events, respectively. When the seismic precursor emerges, the RSAM 1–7 Hz abruptly increases by a factor of 4.9 for the October 9 event and 3.3 for the November 16 event. Moreover, both the RSAM 1–7 Hz and the T-Idx show an increasing trend until the overflows begin. We calculated the correlation coefficients between of the RSAM 1–7 Hz and the T-Idx time series (within a one-hour segment containing the onset of the seismic and thermal precursors), obtaining a correlation coefficient of 0.88 for the October 9 episode and 0.93 for the November 16, 2022 episode (refer to the Supplementary Material). Conversely, the seismic amplitude in the > 10 Hz frequency band, associated with the landslides on the Sciara del Fuoco, only increases after the crater collapse and the overflow in the October 9 event, and after the overflow onset in the November 16 event. This indicates that the seismic precursor cannot be attributed to landslides on the slope of the Sciara del Fuoco.
Ground deformation before overflows from GBInSAR measurements
We analyzed the ground deformation data by studying the line-of-sight displacement measured using a Ground-Based Interferometric Synthetic Aperture Radar (GBInSAR) device, which is installed at Stromboli. The device monitors the Sciara del Fuoco and the crater terrace. Over the long term (one week before the event), the episode on October 9 showed a clear increase in the displacement of the ground toward the device, indicating the inflation of the crater terrace40. In contrast, the overflow on November 16 did not show significant changes over the long term41. By comparing the seismic and thermal parameters with the deformation data obtained from the GBInSAR measurements, we found that the phase of escalating outgassing activity that preceded the two overflows was characterized by an inflation of the crater area, with maximum velocity in the line of sight of about 8.8 mm/hour for both events. The GBInSAR field of view (Fig. 8) does not allow for an accurate reconstruction of the source volume variations. However, the interferograms indicate that the zone affected by the deformation is the same in both episodes and corresponds to the volcano cone summit (Fig. 8).
Deformation through strainmeter measurements
To gain further insight into the temporal evolution of Stromboli’s elastic deformation occurring just before the two overflow episodes under study, data from the Sacks-Evertson borehole strainmeter8,42–44 located at the the SVO (blue circle in Fig. 1) were examined. The strainmeter signals have a sampling rate of 50 sps. We filtered the strainmeter signal in the frequency band between 2 s and 2 h (0.00014–0.5 Hz), and compared it to the seismic and thermal parameters recorded during the October 9 (Fig. 9a) and November 16 (Fig. 9b) overflow events. Figure 9 shows that both overflows were preceded by a strain transient that well correlates with the evolution of the seismic amplitude in the precursor frequency band (1–7 Hz) and with the T-Idx obtained from the thermal camera measurements. In addition, the October 9 episode exhibited a stronger increase in strain before the overflow, compared to the other event.
Discussion
The results of this study demonstrate that the overflow events in October and November 2022, selected as case studies to analyze the precursors of effusive activity on Stromboli, were clearly preceded by seismic, thermal and geodetic precursors. The earliest and most prominent precursors were the seismic and thermal signals, which occurred 58 and 40 min before the overflows in October and November 2022, respectively. Visual analysis of the camera recordings revealed that the thermal precursor was due to the sudden appearance of intense and continuous outgassing, accompanied by spattering, at vent N2 (Figs. 1 and 6). The seismic precursor, technically classified as a tremor, exhibited subtle differences with respect to the ordinary Stromboli tremor, as highlighted through spectral and polarization analysis (see Supplementary Material). In particular, the frequency band between 0.2 and 0.5 Hz played a more significant role in the seismic precursor than it does in ordinary tremor recordings. The polarization analysis of this seismic component provided information on the source location, indicating a clear orientation towards the N2 vent with small angles of incidence (averaging 10 degrees for the October episode and 6 degrees for the November episode) directly pointing to the vent. These findings suggest that the intense outgassing process, which also generates the thermal precursor, is the source process responsible for the seismic precursor that is localized at the N2 vent. The two events under study also exhibited some differences: the overflow on October 9 was characterized by a crater-rim collapse resulting in a PDC that rapidly spread over the Sciara del Fuoco and extended approximately 500 m over the sea. In contrast, the November 16 event was preceded and accompanied by an intense explosive activity. This activity can be well characterized by the VLP size parameter which quantifies the magnitude of the VLP seismic signals generated by the explosions8. In the 2 h preceding the overflow events, this parameter exhibited average values (in counts) of 519 and 1788 for the October 9 and November 16 events, respectively, resulting in a ratio of 3.4. However, in both cases the overflows were preceded by a progressive increase in sustained bursting activity from the eruptive vent, driven by the intense outgassing associated to magma ascent in the shallow conduit. The results obtained provide a consistent understanding of the overflow events: we interpret the sudden appearance of the seismic and thermal precursors of the October-November 2022 Stromboli overflows as a discrete episodes of increased outgassing linked to the ascent of a magma batch. Furthermore, the GBInSAR and strainmeter deformation measurements indicate that, the deformation before the October 9 overflow, which started with the crater collapse, was higher than the deformation observed before the overflow on November 16. This suggests that deformation measurements, when compared to seismic and thermal data, could indicate which overflow episodes generate the crater rim collapse which do not.
This study confirms that seismic measurements are highly sensitive to outgassing processes, as research in this field had already extensively highlighted39,43,45–54. In the case of Stromboli, which is a natural laboratory due to its persistent activity and easy accessibility, seismic methods combined with thermal and deformation measurements are making it possible to recognize precursors to potentially hazardous eruptive phenomena, such as paroxysms43,55 and lava overflows11,55. These phenomena typically exhibit variations in the degassing processes preceding them, which can be detected through seismic data analysis, and interpreted by comparing seismic parameters with camera and deformation data. This was also observed in Giudicepietro et al. (2022)55, where an anomalous period dominated by gas explosions that had begun more than a month before the 2019 paroxysmal phase at Stromboli was discovered through machine learning analysis of seismic data. However, Stromboli experiences continuous changes in the summit area’s morphology56, resulting in variations of the active vents and the slope of the Sciara del Fuoco4. These factors can influence the dynamics of the possible precursors. The properties of the seismic signals generated by outgassing processes are influenced by various factors, including magma viscosity, gas flux velocity, and conduit roughness55,57–59. Standardizing monitoring based on specific parameter thresholds is therefore challenging. Consequently, the key to generalizing the results of this study is to focus on changes in the style of outgassing processes (and eruptive style of the persistent activity, in general) that typically precede potentially dangerous variations in the eruptive activity.
An interval of some tens of minutes provides an appropriate timeframe to implement actions ensuring the safety of people on the island, such as relocating individuals from the Sciara del Fuoco area. Therefore, this study can have positive implications for enhancing the monitoring system and can serve as inspiration for designing an effective early warning system. Future developments could involve equipping the monitoring system with tools for real-time automatic recognition of the precursors identified in this study. Furthermore, considering that precursors exhibit slight differences even between events occurring within a month approximately, the monitoring system could benefit from tools capable of detecting more general variations in the properties of seismic and thermal signals, since these could be precursors to anomalous activity. State-of-the-art machine learning methods could effectively approach this type of problem.
In general, the study of precursors and subsequent improvements in monitoring systems require multidisciplinary data. Seismic measurements typically show an early response to changes in a volcano’s activity style, as exemplified in our case where the seismic precursor clearly coincided with degassing variations. Thermal measurements obtained from permanent video cameras also exhibit distinct variations when visibility conditions are favorable, contributing to the accurate interpretation of the seismic precursor signals. Deformation measurements using strainmeters and GBInSAR provide information about rising magma in the shallow plumbing system and identify portions of the volcanic edifice subject to detectable surface deformations60. Therefore, multiparametric observations not only aid in identifying precursors but also facilitate the interpretation of the underlying processes, albeit at a conceptual level.
Methods
Most of the seismic stations in the Stromboli network are equipped with Guralp CMG40T (0.016-50 Hz) broadband velocimeters61. The signals are recorded using 24-bit digital dataloggers62. The sampling rate is 50 samples per second (sps). Recently, the STRC and STRG stations have been upgraded and now are equipped with 3ESPC (0.008-100 Hz) broadband velocimeters. These stations use Affinity Guralp recorders for data acquisition, with a sampling rate of 100 sps (Fig. 1). The seismic data is transmitted in real time at Osservatorio Etneo (INGV, Catania) and Osservatorio Vesuviano (INGV, Napoli). In our analysis, the time series of the seismic amplitude, represented as the RSAM, were calcuated in different frequency bands. Specifically, we focused on the frequency band 1–7 Hz, which is characteristic of the seismic precursor identified in this study, and the Hz frequency band, which indicates landslides and rolling of blocks from the front of the overflows on the Sciara del Fuoco (Figs. 3, 4 and 5). We filtered the signal using the ObsPy Toolbox38. We applied two filters on the raw signal: a two-pole, zero phase shift Butterworth bandpass filter in the band 1–7 Hz, and a Butterworth high-pass filter with a cut-off frequency of 10 Hz. Subsequently, we calculated the RSAM, which stands for Real-time Seismic Amplitude Measurement, according to the classical formulation39,63. The RSAM is determined by averaging the absolute values within a sliding window of the signal:
1 |
where T is the averaging interval (30 s) and s(t) is the filtered seismic signal. Furthermore, the polarization analysis of the seismic signal using the ObsPy system utilities was performed to characterize the source of the seismic precursor. The analysis is based on the eigenstructure decomposition method64. We have identified a narrow frequency band of interest through the ratio of precursor/tremor spectra (see Supplementary Material). Then, we filtered the signals of the 3-component station STRA in this band (0.2–0.5 Hz) and applied the polarization analysis on the daily time series on October 9 and November 16 using a 1-minute sliding window.
To compare the RSAM time series to the camera recordings, a basic image processing was carried out. We analyzed the images from a thermal camera installed at an altitude of 190 m a.s.l. on the northwestern edge of the slope of the Sciara del Fuoco. This thermal camera recorded the two studied episodes (the overflows which occurred on October 9 and November 16, 2022) from the Labronzo area (SCT), this being a particularly favourable point to record the ordinary eruptive activity of the craters, landslides, and overflows along the Sciara del Fuoco. The thermal images are also transmitted in real time to the data centers of the Osservatorio Etneo (INGV, Catania) and Osservatorio Vesuviano (INGV, Napoli). The thermal camera provides images at a rate of 2 frames per second (fps). Each image is a matrix of color values corresponding to the temperature recorded at each pixel. As a first approximation, we assumed a linear relationship between the temperature and the brightness of the image, defined here as the average of the red, green and blue channels. Subsequently, we cropped a portion of the image containing the N2 crater (Fig. 1). This portion is a square sector with dimensions of 60x60 pixels. The target sector was converted into a black and white image and the pixel values were avaraged. Thus, we obtained a parameter which is roughly proportional to the average temperature of the target area. This parameter was named Temperature Index or T-Idx expressed in arbitrary units. At this point, we compared the T-Idx time series to the seismic amplitude time series in the precursors frequency band (1–7 Hz). The comparison shows an agreement between the two values (Fig. 7 and Supplementary Material).
Ground-Based Synthetic Aperture Radar devices, using Interferometric SAR technology (GBInSAR65), are remote sensing imaging systems66,67 that emit and receive microwave pulses. They repeate this operation by moving real antennas along a rail (track), and the length of this rail determines the cross-range resolution of the acquired images65,66. GBInSAR devices allow to measure one-dimensional (1D) ground motion along the sensor line of sight (LOS) direction by exploiting the phase difference between acquisitions with the purpose of deriving information on deformation at the observed scene68. The GBInSAR device used in this work is installed on the northern edge of the Sciara del Fuoco (Fig. 1), at an elevation of 190 m above sea level. It operates in the Ku-band (17.0-17.1 mm radar), with a revisiting time of 6–7 min, and performs image averaging over 30 min to increase the signal-to-noise ratio68. The stages of creating displacement maps (interferograms or cumulative maps) include a resample operation that returns images with a pixel size of about 2 m 2 m along both range and cross-range. A pixel by pixel stacking algorithm allows for the reconstruction of the cumulative displacement, setting a coherence (; see65) and a power filter ( dB11), allowing for the tracing displacement time series of selected points (averaged over pixels) with displacement measurement precision of 0.5 mm69.
The SVO device is a Sacks-Evertson borehole strainmeter located at the San Vincenzo Observatory in the northeast sector of the island (Fig. 1). It is installed at a depth of about 200 m below ground level. SVO is situated in competent rock below the sea level. The device has a strain resolution of approximately . Its distance from the crater region is about 2.4 km. Data are transmitted to the Osservatorio Vesuviano (INGV-Naples) via TCP/IP and are acquired by a 24-bit digital recorder. The signals are recorded at two different sampling rates, namely 1 Hz and 50 Hz. To remove the strong tidal component, the strainmeter data must be filtered in the most suitable frequency band for the analysis. In our case we applied a two-pole, zero phase shift Butterworth-bandpass filter, using the ObsPy system utilities, and filtered the signal between 2 s and 2 h.
Supplementary Information
Acknowledgements
We would like to express our gratitude to all the colleagues who have contributed to the monitoring efforts on Stromboli. We are especially thankful to the technical staff of INGV for their continuous support in maintaining the multidisciplinary monitoring networks. We thank Novella Tedesco for the linguistic revision. This work has been supported by the INGV project Pianeta Dinamico 2023-2025 - ObseRvation, Measurement and modelling of Eruptive processes (ORME), and partially supported by the Progetto Strategico Dipartimentale INGV 2019 “Forecasting eruptive activity at Stromboli volcano: timing, eruptive style, size, intensity and duration” (FIRST, Delibera n. 144/2020; Scientific Responsibility: S.C.). Furthermore, this research has benefited from the support of Convenzione B2 DPC-INGV 2022-2024, Stromboli, Task 1.3 “Development of a unique activity index and estimation of the probability of the transition between ‘ordinary’ and ‘extraordinary’ eruptive activity”, and of the INGV project Reti Multiparametriche, Task A2 “Development of methods for the identification of precursors of Stromboli’s paroxysms and major explosions based on multiparametric data analysis and study of possible early warning techniques”. The data used in this study were provided by the Istituto Nazionale di Geofisica e Vulcanologia (Osservatorio Vesuviano, Osservatorio Etneo) and by the Centro per la Protezione Civile, Università degli Studi di Firenze (GBInSAR data). We would also like to acknowledge the support of the Italian Dipartimento della Protezione Civile (DPC). It should be noted that this paper does not necessarily reflect the official opinion and policies of DPC.
Author contributions
Conceptualization, methodology and writing, F.G., F.D.T, G.M, S.C; Seismology, F.G., W.D.C., A.M.E., M.O., A.T.; Video-cameras, S.C., F.G.; Seismic and strainmeter data analysis, F.G., W.D.C., A.M.E., M.O., G.M., P.R., B.D.L., P.C.; GBInSAR data analysis, F.D.T, T.N, N.C.; Data curation: F.G., W.D.C., A.M.E., M.O., P.R., B.D.L., G.M., F.D.T, T.N; All authors contributed to investigation and formal analysis.
Data availability
The data time series analyzed in this study are available upon request to Flora Giudicepietro (flora.giudicepietro@ingv.it).
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.
Supplementary Information
The online version contains supplementary material available at 10.1038/s41598-023-38205-7.
References
- 1.Calvari S, et al. Variable magnitude and intensity of Strombolian explosions: Focus on the eruptive processes for a first classification scheme for Stromboli volcano (Italy) Remote Sens. 2021 doi: 10.3390/rs13050944. [DOI] [Google Scholar]
- 2.Tibaldi A. Multiple sector collapses at Stromboli volcano, Italy: How they work. Bull. Volcanol. 2001;63:112–125. doi: 10.1007/s004450100129. [DOI] [Google Scholar]
- 3.Marsella M, Baldi P, Coltelli M, Fabris M. The morphological evolution of the Sciara del Fuoco since 1868: Reconstructing the effusive activity at Stromboli volcano. Bull. Volcanol. 2012;74:1–18. doi: 10.1007/s00445-011-0516-6. [DOI] [Google Scholar]
- 4.Di Traglia F, Fornaciai A, Favalli M, Nolesini T, Casagli N. Catching geomorphological response to volcanic activity on steep slope volcanoes using multi-platform remote sensing. Remote Sens. 2020 doi: 10.3390/rs12030438. [DOI] [Google Scholar]
- 5.Kokelaar P, Romagnoli C. Sector collapse, sedimentation and clast population evolution at an active island-arc volcano: Stromboli. Italy. Bull. Volcanol. 1995;57:240–262. doi: 10.1007/BF00265424. [DOI] [Google Scholar]
- 6.Bonaccorso A, Calvari S, Garfì G, Lodato L, Patanè D. Dynamics of the December 2002 flank failure and tsunami at Stromboli volcano inferred by volcanological and geophysical observations. Geophys. Res. Lett. 2003;30:1941. doi: 10.1029/2003GL017702. [DOI] [Google Scholar]
- 7.Tinti S, Manucci A, Pagnoni G, Armigliato A, Zaniboni F. The 30 December 2002 landslide-induced tsunamis in Stromboli: Sequence of the events reconstructed from the eyewitness accounts. Nat. Hazards Earth Syst. Sci. 2005;5:763–775. doi: 10.5194/nhess-5-763-2005. [DOI] [Google Scholar]
- 8.Giudicepietro F, et al. Geophysical precursors of the July-August 2019 paroxysmal eruptive phase and their implications for Stromboli volcano (Italy) monitoring. Sci. Rep. 2020;10:10296. doi: 10.1038/s41598-020-67220-1. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 9.Calvari S, et al. The 7 September 2008 Vulcanian explosion at Stromboli volcano: Multiparametric characterization of the event and quantification of the ejecta. J. Geophys. Res. 2012;117:B05201. doi: 10.1029/2011JB009048. [DOI] [Google Scholar]
- 10.Di Traglia F, et al. The 2014 effusive eruption at Stromboli: New insights from in situ and remote-sensing measurements. Remote Sens. 2018;10:2035. doi: 10.3390/rs10122035. [DOI] [Google Scholar]
- 11.Calvari S, et al. Overflows and hot rock avalanches in March-April 2020 at Stromboli Volcano detected by remote sensing and seismic monitoring data. Remote Sens. 2020 doi: 10.3390/rs12183010. [DOI] [Google Scholar]
- 12.Calvari S, et al. Multiparametric study of an eruptive phase comprising unrest, major explosions, crater failure, pyroclastic density currents and lava flows: Stromboli volcano, 1 December 2020 - 30 June 2021. Front. Earth Sci. 2022;10:899635. doi: 10.3389/feart.2022.899635. [DOI] [Google Scholar]
- 13.Calvari S, et al. Chronology and complex volcanic processes during the 2002–2003 flank eruption at Stromboli volcano (Italy) reconstructed from direct observations and surveys with a handheld thermal camera. J. Geophys. Res. 2005;110:B02201. doi: 10.1029/2004JB003129. [DOI] [Google Scholar]
- 14.Calvari S, et al. Correction to chronology and complex volcanic processes during the 2002–2003 flank eruption at Stromboli volcano (Italy) reconstructed from direct observations and surveys with a handheld thermal camera. J. Geophys. Res. 2005;110:B04201. doi: 10.1029/2005JB003723. [DOI] [Google Scholar]
- 15.Falsaperla S, Maiolino V, Spampinato S, Jaquet O, Neri M. Sliding episodes during the 2002–2003 Stromboli lava effusion: Insights from seismic, volcanic, and statistical data analysis. Geochem. Geophys. Geosyst. 2008;9:1–16. doi: 10.1029/2007GC001859. [DOI] [Google Scholar]
- 16.Martini M, et al. Seismological monitoring of the February 2007 effusive eruption of the Stromboli volcano. Ann. Geophys.-Italy. 2007;50:775–788. doi: 10.4401/ag-3056. [DOI] [Google Scholar]
- 17.Calvari S, et al. Major eruptive style changes induced by structural modifications of a shallow conduit system: The 2007–2012 Stromboli case. Bull. Volcanol. 2014;76:841. doi: 10.1007/s00445-014-0841-7. [DOI] [Google Scholar]
- 18.Casalbore D, et al. Integration of remote sensing and offshore geophysical data for monitoring the short-term morphological evolution of an active volcanic flank: A case study from Stromboli Island. Remote Sens. 2022;14:4605. doi: 10.3390/rs14184605. [DOI] [Google Scholar]
- 19.Di Traglia F, Borselli L, Nolesini T, Casagli N. Crater-rim collapse at Stromboli volcano: Understanding the mechanisms leading from the failure of hot rocks to the development of glowing avalanches. Nat. Hazards. 2022 doi: 10.1007/s11069-022-05626-y. [DOI] [Google Scholar]
- 20.Calvari S, et al. Monitoring crater-wall collapse at active volcanoes: A study of the 12 January 2013 event at Stromboli. Bull. Volcanol. 2016;78:39. doi: 10.1007/s00445-016-1033-4. [DOI] [Google Scholar]
- 21.Calvari S, Pinkerton H. Instabilities in the summit region of Mount Etna during the 1999 eruption. Bull. Volcanol. 2002;63:526–535. doi: 10.1007/s004450100171. [DOI] [Google Scholar]
- 22.Spampinato L, Calvari S, Oppenheimer C, Lodato L. Shallow magma transport for the 2002–03 Mt. Etna eruption inferred from thermal infrared surveys. J. Volcanol. Geotherm. Res. 2008;177:301–312. doi: 10.1016/j.jvolgeores.2008.05.013. [DOI] [Google Scholar]
- 23.Chouet B, et al. Source mechanisms of explosions at Stromboli Volcano, Italy, determined from moment-tensor inversion of very-long period data. J. Geophys. Res. 2003;108:2019. doi: 10.1029/2002JB001919. [DOI] [Google Scholar]
- 24.Esposito AM, et al. Automatic discrimination among landslide, explosion-quake, and microtremor seismic signals at Stromboli Volcano using neural networks. BSSA. 2006;96:1230–1240. doi: 10.1785/0120050097. [DOI] [Google Scholar]
- 25.Giudicepietro F, et al. Changes in the VLP seismic source during the 2007 Stromboli eruption. J. Volcanol. Geotherm. Res. 2009;182:162–171. doi: 10.1016/j.jvolgeores.2008.11.008. [DOI] [Google Scholar]
- 26.Esposito AM, D’Auria L, Giudicepietro F, Peluso R, Martini M. Automatic recognition of landslides based on neural network analysis of seismic signals: An application to the monitoring of Stromboli Volcano (Southern Italy) Pure Appl. Geophys. 2013;170:1821–1832. doi: 10.1007/s00024-012-0614-1. [DOI] [Google Scholar]
- 27.Bani P, Harris AJL, Shinohara H, Donnadieu F. Magma dynamics feeding Yasur’s explosive activity observed using thermal infrared remote sensing. Geophys. Res. Lett. 2013;40:1–6. doi: 10.1002/grl.50722. [DOI] [Google Scholar]
- 28.Calvari S, et al. Explosive paroxysmal events at Etna volcano of different magnitude and intensity explored through a multidisciplinary monitoring system. Remote Sens. 2022 doi: 10.3390/rs14164006. [DOI] [Google Scholar]
- 29.Romero JE, et al. Pre-eruptive conditions of the 3 March 2015 lava fountain of Villarrica volcano (Southern Andes) Bull. Volcanol. 2023 doi: 10.1007/s00445-022-01621-0. [DOI] [Google Scholar]
- 30.Ripepe M, Poggi P, Braun T, Gordeev E. Infrasonic waves and volcanic tremor at Stromboli. Geophys. Res. Lett. 1996;23:181–184. doi: 10.1029/95GL03662. [DOI] [Google Scholar]
- 31.Chouet B, et al. Source and path effects in the wavefields of tremor and explosions at Stromboli Volcano. Italy. J. Geophys. Res. 1997;102:15129–15150. doi: 10.1029/97JB00953. [DOI] [Google Scholar]
- 32.Ripepe M, Harris A, Carniel R. Thermal, seismic and infrasonic evidences of variable degassing rates at Stromboli volcano. J. Volcanol. Geotherm. Res. 2002;118:285–297. doi: 10.1016/S0377-0273(02)00298-6. [DOI] [Google Scholar]
- 33.Telesca L, Lovallo M, Carniel R. Time-dependent Fisher Information Measure of volcanic tremor before the 5 April 2003 paroxysm at Stromboli volcano. Ital. J. Volcanol. Geotherm. Res. 2010;195:78–82. doi: 10.1016/j.jvolgeores.2010.06.010. [DOI] [Google Scholar]
- 34.Witsil AJC, Johnson JB. Analyzing continuous infrasound from Stromboli volcano, Italy using unsupervised machine learning. Comput. Geosci. 2020;140:104494. doi: 10.1016/j.cageo.2020.104494. [DOI] [Google Scholar]
- 35.De Lauro E, De Martino S, Falanga M, Palo M. Statistical analysis of Stromboli VLP tremor in the band [0.1–0.5] Hz: Some consequences for vibrating structures. Nonlinear Proc. Geoph. 2006;13:393–400. doi: 10.5194/npg-13-393-2006. [DOI] [Google Scholar]
- 36.Beyreuther M, et al. Obspy: A Python toolbox for seismology. Seismol. Res. Lett. 2010;81:530–533. doi: 10.1785/gssrl.81.3.530. [DOI] [Google Scholar]
- 37.Megies T, Beyreuther M, Barsch R, Krischer L, Wassermann J. Obspy—What can it do for data centers and observatories? Ann. Geophys-Italy. 2011;54:47–58. doi: 10.4401/ag-4838. [DOI] [Google Scholar]
- 38.Krischer L, et al. Obspy: A bridge for seismology into the scientific Python ecosystem. Comput. Sci. Discov. 2015;8:014003. doi: 10.1088/1749-4699/8/1/014003. [DOI] [Google Scholar]
- 39.Endo ET, Murray T. Real-time Seismic Amplitude Measurement (RSAM): A volcano monitoring and prediction tool. Bull. Volcanol. 1991;53:533–545. doi: 10.1007/BF00298154. [DOI] [Google Scholar]
- 40.Bollettino sistema SAR di Stromboli del periodo 29 Settembre 2022 - 06 Ottobre 2022. University of Florence, Italy (2022). (in Italian).
- 41.Bollettino sistema SAR di Stromboli del periodo 10 Novembre 2022 - 17 Novembre 2022. University of Florence, Italy (2022). (in Italian).
- 42.Bonaccorso A, Calvari S, Linde A, Sacks S, Boschi E. Dynamics of the shallow plumbing system investigated from borehole strainmeters and cameras during the 15 March, 2007 Vulcanian paroxysm at Stromboli volcano. Earth Planet. Sci. Lett. 2012;357–358:249–256. doi: 10.1016/j.epsl.2012.09.009. [DOI] [Google Scholar]
- 43.Giudicepietro F, et al. Insight into Campi Flegrei caldera unrest through seismic tremor measurements at Pisciarelli fumarolic field. Geochem. Geophys. Geosyst. 2019;20:5544–5555. doi: 10.1029/2019GC008610. [DOI] [Google Scholar]
- 44.Di Lieto B, Romano P, Scarpa R, Linde AT. Strain signals before and during paroxysmal activity at Stromboli volcano. Italy. Geophys. Res. Lett. 2020;47:e2020GL088521. doi: 10.1029/2020GL088521. [DOI] [Google Scholar]
- 45.Ripepe M, Gordeev E. Gas bubble dynamics model for shallow volcanic tremor at Stromboli. J. Geophys. Res. Sol. Ea. 1999;104:10639–10654. doi: 10.1029/98JB02734. [DOI] [Google Scholar]
- 46.Ripepe M, et al. Seismic and infrasonic evidences for an impulsive source of the shallow volcanic tremor at Mt. Etna, Italy. Geophys. Res. Lett. 2001;28:1071–1074. doi: 10.1029/2000GL011391. [DOI] [Google Scholar]
- 47.Calder ES, et al. Combined thermal and seismic analysis of the Villarrica volcano lava lake. Chile. Rev. Geol. Chile. 2004;31:259–272. doi: 10.4067/S0716-02082004000200005. [DOI] [Google Scholar]
- 48.Palma JL, Calder ES, Basualto D, Blake S, Rothery DA. Correlations between SO2 flux, seismicity, and outgassing activity at the open vent of Villarrica volcano. Chile. J. Geophys. Res. Sol. Ea. 2008;113:B10201. doi: 10.1029/2008JB005577. [DOI] [Google Scholar]
- 49.Chouet BA, Matoza RS. A multi-decadal view of seismic methods for detecting precursors of magma movement and eruption. J. Volcanol. Geotherm. Res. 2013;252:108–175. doi: 10.1016/j.jvolgeores.2012.11.013. [DOI] [Google Scholar]
- 50.Chiodini G, et al. Fumarolic tremor and geochemical signals during a volcanic unrest. Geology. 2017;45:1131–1134. doi: 10.1130/G39447.1. [DOI] [Google Scholar]
- 51.Giudicepietro F, et al. Tracking episodes of seismicity and gas transport in Campi Flegrei caldera trough seismic, geophysical and geochemical measurements. Seismol. Res. Lett. 2021;92:965–975. doi: 10.1785/0220200223. [DOI] [Google Scholar]
- 52.Giudicepietro F , et al. Campi Flegrei, Vesuvius and Ischia seismicity in the context of the Neapolitan volcanic area. Front. Earth Sci. 2021 doi: 10.3389/feart.2021.662113. [DOI] [Google Scholar]
- 53.Callow B, et al. Seismic chimney characterisation in the North Sea—Implications for pockmark formation and shallow gas migration. Mar. Petrol. Geol. 2021 doi: 10.1016/j.marpetgeo.2021.105301. [DOI] [Google Scholar]
- 54.Longo, G., M.and Lazzaro et al. Hydro-acoustic signals from the Panarea shallow hydrothermal field: New inferences of a direct link with Stromboli. Geological Society, London, Special Publications519, SP519–2020, 10.1144/SP519-2020-18 (2023).
- 55.Giudicepietro F, et al. Changes in the eruptive style of Stromboli volcano before the 2019 paroxysmal phase discovered through SOM clustering of seismo-acoustic features compared with camera images and GBInSAR data. Remote Sens. 2022;14:1287. doi: 10.3390/rs14051287. [DOI] [Google Scholar]
- 56.Civico R, et al. Unoccupied Aircraft Systems (UASs) reveal the morphological changes at Stromboli volcano (Italy) before, between, and after the 3 July and 28 August 2019 paroxysmal eruptions. Remote Sens. 2021;13:2070. doi: 10.3390/rs13152870. [DOI] [Google Scholar]
- 57.Spina L, Morgavi D, Cannata A, Campeggi C, Perugini D. An experimental device for characterizing degassing processes and related elastic fingerprints: Analog volcano seismo-acoustic observations. Rev. Sci. Instrum. 2018;88:055102. doi: 10.1063/1.5020004. [DOI] [PubMed] [Google Scholar]
- 58.Spina L, Cannata A, Morgavi D, Perugini D. Degassing behaviour at basaltic volcanoes: New insights from experimental investigations of different conduit geometry and magma viscosity. Earth Sci. Rev. 2019;192:317–336. doi: 10.1016/j.earscirev.2019.03.010. [DOI] [Google Scholar]
- 59.Giudicepietro F, et al. Clustering of experimental seismo-acoustic events using Self Organizing Maps (SOM) Front. Earth Sci. 2021;8:58174. doi: 10.3389/feart.2020.581742. [DOI] [Google Scholar]
- 60.Casagli N, et al. Deformation of Stromboli Volcano (Italy) during the 2007 crisis by radar interferometry, numerical modeling and field structural data. J. Volcanol. Geotherm. Res. 2009;182:182–200. doi: 10.1016/j.jvolgeores.2009.01.002. [DOI] [Google Scholar]
- 61.De Cesare W, et al. The broadband seismic network of Stromboli volcano. Italy. Seismol. Res. Lett. 2009;80:435–439. doi: 10.1785/gssrl.80.3.435. [DOI] [Google Scholar]
- 62.Orazi M, Martini M, Peluso R. Data acquisition for volcano monitoring. EOS Trans. Am. Geophys. Union. 2006;87:385–392. doi: 10.1029/2006EO380002. [DOI] [Google Scholar]
- 63.Schweitzer J, Fyen J, Mykkeltveit S, Kværna T. Manual of seismological observatory practice. GeoForschungsZentrum; 2002. [Google Scholar]
- 64.Flinn EA. Signal analysis using rectilinearity and direction of particle motion. Proc. IEEE. 1965;53:1874–1876. doi: 10.1109/PROC.1965.4462. [DOI] [Google Scholar]
- 65.Antonello G, et al. Ground-based SAR interferometry for monitoring mass movements. Landslides. 2004;1:21–28. doi: 10.1007/s10346-003-0009-6. [DOI] [Google Scholar]
- 66.Rudolf, H., Leva, D., Tarchi, D. & Sieber, A. J. A mobile and versatile SAR system. In IEEE 1999 International Geoscience and Remote Sensing Symposium. IGARSS’99 (Cat. No. 99CH36293), vol. 1, 592–594 (1999).
- 67.Monserrat O, Crosetto M, Luzi G. A review of ground-based SAR interferometry for deformation measurement. ISPRS J. Photogramm. 2014;93:40–48. doi: 10.1016/j.isprsjprs.2014.04.001. [DOI] [Google Scholar]
- 68.Di Traglia F, et al. Joint exploitation of space-borne and ground-based multitemporal InSAR measurements for volcano monitoring: The Stromboli volcano case study. Remote Sens. Environ. 2021;260:112441. doi: 10.1016/j.rse.2021.112441. [DOI] [Google Scholar]
- 69.Di Traglia F, Cauchie L, Casagli N, Saccorotti G. Decrypting geophysical signals at Stromboli Volcano (Italy): Integration of seismic and Ground-Based InSAR displacement data. Geophys. Res. Lett. 2014;41:2753–2761. doi: 10.1002/2014GL059824. [DOI] [PMC free article] [PubMed] [Google Scholar]
Associated Data
This section collects any data citations, data availability statements, or supplementary materials included in this article.
Supplementary Materials
Data Availability Statement
The data time series analyzed in this study are available upon request to Flora Giudicepietro (flora.giudicepietro@ingv.it).