A robust identification method for transmission line parameters based on BP neural network and modified SCADA data

Min Lu, Xueqi Jin, Xiaozhong Wang, Yan Xu, Yangyingfu Wang, He Kong, L. Gu, Kaiyang Luo, A. Xue
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引用次数: 3

Abstract

Accurate transmission line (TL) parameters are the basis of power system calculations. In recent years, artificial intelligence (AI) develops rapidly, which has been applied widely in power systems. However, AI is rarely applied to TL parameter identification. Thus, combining the TL model and AI, this paper proposes a robust identification method for TL parameters combined with BP (back propagation) neural network and median robust estimation, with the modified SCADA measurements based on TL model. Specifically, first, the robust identification method for TL parameter combined with BP neutral network and median estimation is proposed. And then, the training set that considers various working conditions and different line parameters is constructed based on the π-equivalent model. Furthermore, the input data of BP neural network is construed by modifying the SCADA data based on TL model. In addition, the median estimation is used to obtain the final result, which could reduce the interference of noise. Finally, the results with simulated data and measured SCADA measurements data show the effectiveness and practicality of the proposed method, respectively.
基于BP神经网络和修正SCADA数据的输电线路参数鲁棒识别方法
准确的输电线路参数是电力系统计算的基础。近年来,人工智能技术发展迅速,在电力系统中得到了广泛的应用。然而,人工智能很少应用于TL参数识别。因此,本文将TL模型与人工智能相结合,利用基于TL模型的修正SCADA测量,提出了一种结合BP(反向传播)神经网络和中值鲁棒估计的TL参数鲁棒识别方法。具体而言,首先提出了BP神经网络与中值估计相结合的TL参数鲁棒识别方法;然后,基于π-等效模型构造考虑各种工况和不同线路参数的训练集。此外,基于TL模型对SCADA数据进行修改,对BP神经网络的输入数据进行解释。此外,采用中值估计得到最终结果,可以减少噪声的干扰。最后,利用模拟数据和SCADA实测数据分别验证了所提方法的有效性和实用性。
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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