Circuit Parameter Identification of Degrading DC-DC Converters Based on Physics-informed Neural Network

Shaowei Chen, Jinling Zhang, Shengyue Wang, Pengfei Wen, Shuai Zhao
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引用次数: 2

Abstract

Power Electronic Systems (PES) is widely used in energy sectors such as renewable energy and aerospace. It is very important to design a reliable PES health monitoring system. This paper provides a new condition monitoring method based on Physics-informed Neural Network (PINN). Although the actual PES has a complex topology and is in a dynamically changing operating environment, the operation process does not violate the circuit physical models. Considering the charge and discharge process in the DC-DC converter, the physical formula is derived through the state-space average method. Then the physical formula is added to the deep learning model of LSTM as prior knowledge, to estimate the degradation parameters of the DC-DC converter. The uncertainty method is used to determine the weighting coefficients for data fitting and physical information fitting tasks. The PINN method can improve the estimation accuracy and generalization ability of the model in the case of limited data, which is conducive to the realization of the condition monitoring of complex PES. It is significant to improve the reliability of new energy vehicles and military equipment.
基于物理信息神经网络的退化DC-DC变换器电路参数辨识
电力电子系统(PES)广泛应用于可再生能源和航空航天等能源领域。设计一个可靠的PES健康监测系统是非常重要的。提出了一种新的基于物理信息神经网络(PINN)的状态监测方法。虽然实际的PES具有复杂的拓扑结构,并且处于动态变化的运行环境中,但其运行过程并不违反电路物理模型。考虑DC-DC变换器的充放电过程,采用状态空间平均法推导了物理公式。然后将物理公式作为先验知识加入到LSTM的深度学习模型中,估计DC-DC变换器的退化参数。采用不确定性方法确定数据拟合和物理信息拟合任务的权重系数。PINN方法可以提高模型在有限数据情况下的估计精度和泛化能力,有利于实现复杂PES的状态监测。对提高新能源汽车和军事装备的可靠性具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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