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Fast determination of meso-level mechanical parameters of PFC models
Authors:Jianwei Guo  Guoan Xu  Hongwen Jing  Tiejun Kuang
Affiliation:1. School of Safety Engineering, China University of Mining & Technology, Xuzhou 221116,China;2. Energy and Chemical Research Institute of Zhong Ping Shen Ma Group, Pingdingshan 467000, China;3. State Key Laboratory of Geomechanics and Deep Underground Engineering, China University of Mining & Technology, Xuzhou 221008, China;4. School of Mechanics and Civil Engineering, China University of Mining & Technology, Xuzhou 221116, China;5. Sitai Coal Mine, Datong Coal Mine Group, Datong 037016, China
Abstract:To solve the problems of blindness and inefficiency existing in the determination of meso-level mechanical parameters of particle flow code (PFC) models, we firstly designed and numerically carried out orthogonal tests on rock samples to investigate the correlations between macro- and meso-level mechanical parameters of rock-like bonded granular materials. Then based on the artificial intelligent technology, the intelligent prediction systems for nine meso-level mechanical parameters of PFC models were obtained by creating, training and testing the prediction models with the set of data got from the orthogonal tests. Lastly the prediction systems were used to predict the meso-level mechanical parameters of one kind of sandy mudstone, and according to the predicted results the macroscopic properties of the rock were obtained by numerical tests. The maximum relative error between the numerical test results and real rock properties is 3.28% which satisfies the precision requirement in engineering. It shows that this paper provides a fast and accurate method for the determination of meso-level mechanical parameters of PFC models.
Keywords:Particle flow code  Meso-level mechanical parameter  Macroscopic property  Orthogonal test  Intelligent prediction
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