Data abnormal detection using bidirectional long-short neural network combined with artificial experience |
Yang, Kang
(School of Civil Engineering, Key Laboratory of C&PC Structures of the Ministry of Education, Southeast University)
Jiang, Huachen (School of Civil Engineering, Key Laboratory of C&PC Structures of the Ministry of Education, Southeast University) Ding, Youliang (School of Civil Engineering, Key Laboratory of C&PC Structures of the Ministry of Education, Southeast University) Wang, Manya (School of Civil Engineering, Key Laboratory of C&PC Structures of the Ministry of Education, Southeast University) Wan, Chunfeng (School of Civil Engineering, Key Laboratory of C&PC Structures of the Ministry of Education, Southeast University) |
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