首页> 外文期刊>International Journal of Adaptive Control and Signal Processing >Lyapunov-based training algorithm applied to a continually on line-trained ANN used in the current-loop control of a single-phase switched rectifier
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Lyapunov-based training algorithm applied to a continually on line-trained ANN used in the current-loop control of a single-phase switched rectifier

机译:基于Lyapunov的训练算法应用于单相开关整流器电流环控制中的连续在线训练的ANN

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摘要

This paper presents an implementation of a PWM single-phase switched rectifier controlled by a continually online-trained artificial neural network (COT-ANN). The stability of the COT-ANN training is ensured by using a suitable description of the switched rectifier and a Lyapunov-based training algorithm. The stability of the neural network is verified using a norm metric of the ANN matrix weights. The proposed switched rectifier can reverse the power flow direction while attaining power factor regulation. Simulations are used to test the validity of the proposed algorithm and the results are finally verified by a practical implementation of this system.
机译:本文提出了一种由连续在线训练的人工神经网络(COT-ANN)控制的PWM单相开关整流器的实现。通过使用合适的开关整流器描述和基于Lyapunov的训练算法,可以确保COT-ANN训练的稳定性。使用ANN矩阵权重的范数度量来验证神经网络的稳定性。所提出的开关整流器可以在实现功率因数调节的同时反转功率流向。仿真实验验证了所提算法的有效性,并通过该系统的实际实现对结果进行了验证。

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