基于神经网络的二极管整流系统参数平均值建模

Kangkang Wang, Wei Wei, Shilin Gao, Shaowei Huang, Xinwei Sun, Bo Zhou
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引用次数: 1

摘要

在交流电力系统中,二极管整流器常被用作许多电子负载的前端电路。在电力电子系统的研究中,平均建模(AVM)是必不可少的,其中复杂的开关子电路可以被适当的非开关平均子电路和相关可控源等电路元件所取代。对于二极管整流器的参数化AVM,在工作条件下,可能需要重新制定PAVM,并且需要进行多次详细的仿真,耗时长。近年来,神经网络在人工智能领域得到了广泛的应用。本文利用神经网络对PAVM中的参数函数进行学习,并将基于神经网络的PAVM与详细模型进行比较。实验结果表明了该模型的有效性和准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Parametric Average-Value Modeling of Diode Rectifier Systems Based on Neural Network
In an ac power system, the diode rectifier is often used as the front-end circuit of many electronic loads. In the research of power electronic systems, averaging modeling (AVM) is essential, in which complex switching subcircuits can be replaced by appropriate non-switching averaging subcircuits and dependent controllable sources and other circuit components. For parametric AVM of diode rectifier, when the operational conditions, the PAVM may need to be re-formulated and many times of detailed simulation is needed, which is time-consuming. The neural network has been widely used in the field of artificial intelligence in recent years. This paper uses the neural network to learn the parametric functions in PAVM and compares the neural network-based PAVM with the detailed model. Test results show the effectiveness and accuracy of the proposed PAVM model.
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