Professor
Supervisor of Doctorate Candidates
Supervisor of Master's Candidates
Main positions: President of international exchange committee of the Chinese Society of Rock Mechanics and Engineering CSRME
Other Post: Vice President of the Chinese Society of Rock Mechanics and Engineering CSRME
Title of Paper:Study and Apply Rolling Predictive Control Model for Surrounding Rock Displacement Based on PSO-SVM
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Date of Publication:2008-07-02
Included Journals:EI、CPCI-S、Scopus
Page Number:1843-1847
Key Words:Underground engineer; Particle swarm optimization; Support vector machine; Predictive control; Surrounding rock displacement
Abstract:The excavation and construction of underground engineering is a dynamically adjusting process of system. The paper starts with the index of surrounding rock displacement which can reflect both observability and controllability of underground engineer system. The nonlinear machine learning tool -Support Vector Machine(SVM) which based on statistic learning theory is utilized to construct the time series model. Because penalty factor and kernel parameter of SVM affect the predicting accuracy evidently, and SVM has not provided the selection method, the parameters are optimized by global optimization arithmetic-particle swarm optimization. Based on the PSO-SVM evolutionary predictive model, appending the up-to-date monitoring information, multi-step extrapolating forecast model of surrounding rock displacement is constructed, and according to control criteria, the supporting scheme is adjusted, realizing the predictive control for underground engineer. An engineer sample is studied, the result states that the PSO-SVM model is feasible. The proposed predictive control method provides new approach for underground construction.
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