1.College of Mathematics and Information Science,Baoding Hebei 071002,China 2.Key Laboratory of Machine Learning and Computational Intelligence (Hebei University),Baoding Hebei 071002,China 3.Research Center for Applied Mathematics and Interdisciplinary Sciences,Beijing Normal University at Zhuhai,Zhuhai Guangzhou 519087,China
Key Research and Development Program of Science and Technology Project of Hebei Province(19210310D);Natural Science Foundation of Hebei Province(F2018201096);Graduate Innovation Foundation of Hebei University(hbu2019ss077)
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