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A Novel BVC-RBF Neural Network Based System Simulation Model for Switched Reluctance Motor

机译:基于新型BVC-RBF神经网络的开关磁阻电机系统仿真模型

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摘要

Developing a precise system simulation model is a critical step in the design and analysis of optimal control strategies for a switched reluctance motor (SRM). To achieve this objective, the following works have been done in this paper. 1) A 3-D FEA model based on double scalar magnetic potential method (DSMP) is developed for obtaining the distributions of SRM magnetic field, then the flux linkage characteristics are calculated by using enhanced incremental energy method (EIEM). 2) In order to enhance modeling accuracy of the nonlinear flux linkage, a new RBF neural network with boundary value constraints (BVC-RBF) is used for approximating, based on the calculated flux linkage data. 3) The nonlinear BVC-RBF based simulation model of the SRM system is established for dynamic analysis with the power system block (PSB) modules of Matlab/simulink. 4) Simulation and experimental results are presented and compared for model validation. The validation study indicates that the developed model is highly accurate.
机译:开发精确的系统仿真模型是设计和分析开关磁阻电机(SRM)最佳控制策略的关键步骤。为了实现这一目标,本文进行了以下工作。 1)建立了基于双标量磁势法(DSMP)的3-D FEA模型来获取SRM磁场的分布,然后使用增强增量能量法(EIEM)计算了磁链特性。 2)为了提高非线性磁链的建模精度,基于计算出的磁链数据,使用具有边界值约束的新型RBF神经网络(BVC-RBF)进行近似。 3)建立了基于非线性BVC-RBF的SRM系统仿真模型,利用Matlab / simulink的电源系统模块(PSB)模块进行动态分析。 4)给出了仿真和实验结果,并进行了比较以进行模型验证。验证研究表明,开发的模型非常准确。

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