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Parameter Estimation for PMSM based on a Back Propagation Neural Network Optimized by Chaotic Artificial Fish Swarm Algorithm

机译:基于混沌人工鱼类群算法优化的基于反向传播神经网络的PMSM参数估计

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Permanent Magnet Synchronous Motor(PMSM) control system with strong nonlinearity makes it difficult to accurately identify motor parameters such as stator winding, dq axis inductance, and rotor flux linkage. Aiming at the premature convergence of traditional Back Propagation Neural Network(BPNN) in PMSM motor parameter identification, a new method of PMSM motor parameter identification is proposed. It uses Chaotic Artificial Fish Swarm Algorithm(CAFSA) to optimize the initial weights and thresholds of BPNN, and then strengthens training by BPNN algorithm. Thus, the global optimal network parameters are obtained by using the global optimization of CAFSA and the local search ability of BPNN. The simulation results and experimental data show that the initial value sensitivity of the network model optimized by CAFS-BPNN Algorithm is weak, the parameter setting is robust, and the system stability is good under complex conditions. Compared with other intelligent algorithms, such as RSL and PSO, CAFS-BPNNA has high identification accuracy and fast convergence speed for PMSM motor parameters.
机译:具有强大非线性的永磁同步电机(PMSM)控制系统使得难以准确地识别定子绕组,DQ轴电感和转子磁通连杆等电动机参数。针对传统背部传播神经网络(BPNN)的过早融合在PMSM电机参数识别中,提出了一种新的PMSM电机参数识别方法。它使用混沌人工鱼类群算法(CAFSA)来优化BPNN的初始重量和阈值,然后通过BPNN算法加强训练。因此,通过使用CAFSA的全局优化和BPNN的本地搜索能力来获得全局最优网络参数。仿真结果和实验数据表明,CAFS-BPNN算法优化的网络模型的初始值敏感性较弱,参数设置是坚固的,并且系统稳定性在复杂条件下良好。与其他智能算法相比,如RSL和PSO,CAFS-BPNNA具有高识别精度和PMSM电机参数的快速收敛速度。

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