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2024 ITU Kaleidoscope Academic Conference




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                       ACKNOWLEDGEMENTS                       [10] He M, Li H, Duan Y.: Research on railway intelligent
                                                                  operation and maintenance and its system architecture.
           This  work  was  supported  in  part  by  the  National  Natural   In: 6th International Conference on Dependable
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           in part by Jiangsu Colleges and Universities QingLan project.   2020.

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