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Neural network-based model reference adaptive control of active power filter based on sliding mode approach

机译:基于神经网络的基于神经网络的模型基于滑动模式方法的有源电力滤波器的模型参考自适应控制

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Model reference adaptive sliding mode control (MRASMC) using radical basis function (RBF) neural network (NN) is proposed to control the single-phase active power filter (APF). The RBF NN is utilized to approximate nonlinear function and eliminate the modeling error. AC side model reference adaptive current controller not only guarantees the globally stability of the APF system but also generate the compensating current to track the harmonic current accurately. Moreover, a sliding mode controller based on exponential approach is designed to improve the tracking performance of DC side voltage. Simulation results demonstrate that MRASMC using RBF NN can improve the adaptability and robustness of the APF system and track the given instructional signal quickly.
机译:模型参考自适应滑模控制(MRASMC)使用自由基基函数(RBF)神经网络(NN)来控制单相有源电力滤波器(APF)。 RBF NN用于近似非线性函数并消除建模误差。 AC侧模型参考自适应电流控制器不仅保证了APF系统的全局稳定性,还可以生成补偿电流以准确地跟踪谐波电流。此外,基于指数方法的滑动模式控制器设计用于提高DC侧电压的跟踪性能。仿真结果表明,使用RBF NN的MRASMC可以提高APF系统的适应性和鲁棒性,并快速跟踪给定的教学信号。

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