A Novel Trajectory Prediction Approach for the Active Magnetorheological Fluid Bearing-Rotor System based on VMD-IGWO-LSTM
编号:126
访问权限:仅限参会人
更新:2023-06-01 11:22:46 浏览:517次
口头报告
摘要
In order to address the problems of insufficient load capacity and rotor vibration of large grinding ball mill, an active fluid-film bearing lubricated with magnetorheological fluid (MRF) is proposed. Firstly, the geometry of the MRF bearing is designed and its intelligent lubrication mechanism is analyzed to clarify its advantages. In addition, mathematical model of MRF fluid-film bearing-rotor system is derived to select the appropriate variable parameters as inputs and outputs of training model, and the FEM simulation is utilized to obtain the dataset of rotor trajectory in COMSOL Multiphysics. Moreover, a novel prediction approach based on variational mode decomposition (VMD), improved grey wolf optimization (IGWO) and long short-term memory (LSTM), namely VMD-IGWO-LSTM, is proposed to predict the rotor trajectory of the active MRF bearing-rotor system in this work. Finally, the experiments demonstrate the effectiveness of the proposed method compared with other methods.
关键词
Magnetorheological fluid,fluid-film bearing,variational mode decomposition,improved gray wolf optimization,Long short-term memory
稿件作者
Peng Lai
China University of Mining and Technology
Shen Yurui
China University of Mining and Technology
Wang Qiyu
China University of Mining and Technology
Hua Dezheng
China University of Mining and Technology
Liu Xinhua
China University of Mining and Technology
发表评论