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Application of a recurrent wavelet fuzzy-neural network in the positioning control of a magnetic-bearing mechanism

机译:递归小波模糊神经网络在电磁轴承定位控制中的应用

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A new recurrent wavelet fuzzy neural network (RWFNN) with adaptive learning rates is proposed to control the rotor position on the axial direction of a thrust magnetic bearing (TMB) mechanism in this study. First, the dynamic analysis of the TMB with differential driving mode (DDM) is derived. Because the dynamic characteristics and system parameters of the TMB mechanism are high nonlinear and time-varying, the RWFNN, which integrates wavelet transforms with fuzzy rules, is proposed to achieve precise positioning control of the TMB. For the designed RWFNN controller, the online learning algorithm is derived using back-propagation method. Moreover, since the improper selection of learning rates for the RWFNN will deteriorate the control performance, an improved particle swarm optimization (IPSO) is adopted to adapt the learning rates of the RWFNN on-line. Numerical simulations show the validity of TMB system using the proposed RWFNN controller with IPSO under the occurrence of uncertainties. (C) 2015 Elsevier Ltd. All rights reserved.
机译:提出了一种新的具有自适应学习率的递归小波模糊神经网络(RWFNN),以控制转子在推力磁轴承(TMB)机构轴向上的位置。首先,推导了具有差分驱动模式(DDM)的TMB的动态分析。由于TMB机构的动力学特性和系统参数具有很高的非线性和时变特性,因此提出了将小波变换与模糊规则相结合的RWFNN,以实现对TMB的精确定位控制。对于设计的RWFNN控制器,使用反向传播方法导出在线学习算法。此外,由于对于RWFNN的学习速率选择不当会降低控制性能,因此采用了改进的粒子群优化(IPSO)在线调整RWFNN的学习速率。数值仿真表明,在不确定性情况下,采用提出的带IPSO的RWFNN控制器对TMB系统的有效性。 (C)2015 Elsevier Ltd.保留所有权利。

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