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. 2022 Jan 7;22(2):450. doi: 10.3390/s22020450

Table 2.

Comparison of our survey to current state-of-the-art surveys.

References Summary SLR EC FL CS HWR FRD
[7] Survey on architecture and computation offloading in MEC X X X
[25] Survey on convergence of the intelligent edge and edge intelligence X X
[62] Communication and networking issues being addressed by DRL X X X
[33] Survey on fog computing and related edge computing paradigms X X X X
[6] Survey on the integrated management of mobile computing and wireless communication resources in MEC X X X
[63] Edge intelligence architectures and frameworks’ survey X X X X
[64] Survey on edge intelligence specifically for 6G networks X X X
[65] Management of IoT systems, e.g., network security and management by leveraging ML X X X X
[66] Survey on computation offloading approaches in mobile edge computing X X
[67] Survey on techniques for computation offloading X X X X X
[68] Survey on architectures and applications of MEC X X X
[69] Survey on computation offloading modeling for edge computing X X X X
[70] A MEC survey on computing, caching, and communications X X X
[71] Comparative study of caching phases and caching schemes X X X X
[72] Survey on MEC for the 5G network architecture X X X X X
[80] Survey on the data privacy and security of FL X X X X
[81] Survey on FL applications in industrial engineering and computer science X X X
[61] Survey on FL research from five perspectives: data partition, privacy techniques, relevant ML models, communication architecture, and heterogeneity solutions X X X X
[82] Proposed an FL building block taxonomy with six different aspects: data distribution, ML model, privacy mechanism, communication architecture, the scale of the federation, and the motivation for FL X X
[19] Tutorial on FL challenges X X X X
[18] Overview of current research trends and relevant challenges X X X X
[83] Discussed the opportunities and challenges in FL X X X X
[84] described the existing FL and proposed an architecture of FL systems X X X X
[17] Described the different FL settings in more detail, emphasizing their architecture and categorization X X X X X
[85] Discussion on the applicability of FL in smart city sensing X X X
[86] Survey on the security threats and vulnerability challenges in FL systems X X X X
[87] Summarized the most used defense strategies in FL X X X X X
[88] Developed protocols and platforms to help industries in need of FL build privacy-preserving solutions X X X X
[89] Performed a systematic literature review on FL from the software engineering perspective X X X
[90] Highlighted FL’s applications in wireless communications X X X X
[50] Discussed the basics and problems of FL for edge networks X X
[91] Analysis of FL from the 6G communications perspective X X X X
[92] Survey on FL-powered IoT applications to run on IoT networks X X X
[93] Survey on the FL-enabled IIoT X X
[94] Survey on FL implementation in wireless communications X X X X
[95] Analysis of FL’s potential for enabling a wide range of IoT services X X
[96] FDL application for UAV-enabled wireless networks X X
[97] Survey on the implementation of FL and challenges X X X
[98] Review of FL for vehicular IoT X X
[99] Survey on FL for the future of digital health X X
[100] Survey on applications of FL to autonomous robots X X
[101] Review of FL technologies within the biomedical space and the challenges X X
[102] A tutorial on FL in the domain of communication and networking X X
[65] Analysis and design of heterogeneous federated learning X X X X
Our Paper A systematic review on FL implementation in the EC paradigm

Note: √ = does include; CS: Case Studies; X = does not include; HWR: Hardware Requirements; SLR: Systematic Literature Review; FRD: Future Research Directions; EC: Edge Computing; FL: Federated Learning.