Voltage transformer metering error state prediction method based on GA-BP algorithm

IF 3.1 Q1 Mathematics
Shuai Gao, Lin Zhao, Zhenyu Jiang, Yin Zhang, Yicheng Bai
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引用次数: 0

Abstract

Abstract The metering accuracy of the voltage transformer is related to the normal operation of the power system, and the metering results can be optimized through the prediction of the error state. In this paper, according to the generation mechanism of the measurement error of the transformer, the maximum information coefficient is used to extract the error characteristic quantity, and the measurement perturbation model is constructed by combining the ambient temperature and the secondary load factor. Due to the specificity of the ambient temperature, a BP neural network is also used to compensate for the temperature of the perturbation model, which prepares for the improved BP neural network based on a genetic algorithm to recognize the error data. Finally, the simulated operation of the three-phase voltage transformer and the measured data of the wiring substation were utilized for validation, respectively. With the help of three-phase CVT simulation, the error change of A-phase simulated CVT amplitude information at the 4001st sampling point is 0.0962%, and the error change of phase information is -4.572′.GA-BP neural network also has high sensitivity to the difficult-to-detect asymptotic error and is able to realize the error calibration of voltage transformer.
基于 GA-BP 算法的电压互感器计量误差状态预测方法
摘要电压互感器的计量精度关系到电力系统的正常运行,通过对误差状态的预测可以优化计量结果。本文根据变压器测量误差的产生机理,利用最大信息系数提取误差特征量,结合环境温度和二次负荷因素构建测量扰动模型。由于环境温度的特殊性,采用BP神经网络对扰动模型的温度进行补偿,为基于遗传算法的改进BP神经网络识别误差数据做好准备。最后分别利用三相电压互感器的模拟运行和配电所的实测数据进行验证。通过三相CVT仿真,a相模拟CVT在第4001个采样点的幅值信息误差变化为0.0962%,相位信息误差变化为-4.572 '。GA-BP神经网络对难以检测的渐近误差具有较高的灵敏度,能够实现电压互感器的误差标定。
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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来源期刊
Applied Mathematics and Nonlinear Sciences
Applied Mathematics and Nonlinear Sciences Engineering-Engineering (miscellaneous)
CiteScore
2.90
自引率
25.80%
发文量
203
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