基于深度学习的电力系统不良数据识别方法

Runchong Dong, Jing Ma, Xingpei Chen, Wang Jianhua
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引用次数: 0

摘要

在实际运行过程中,一些电力系统不良数据识别方法存在准确率不高的问题,为此,设计了一种基于深度学习的电力系统不良数据识别方法来改善这一缺陷。从电力系统用户处采集数据,采用高采样率减小非整数采样引起的相位偏差,得到测量信号周期,基于深度学习对配电网运行状态进行评估,计算状态向量,找到最大标准残值,得到不良数据的位置,设计不良数据识别方法。实验结果:本文所设计的电力系统不良数据识别方法的平均准确率为:78.26%,表明所设计的电力系统不良数据识别方法在充分集成深度学习后具有更好的性能。
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A deep learning-based approach for identifying bad data in power systems
In the actual operation process, some of the power system bad data identification methods have the problem of low accuracy, for this reason, a deep learning-based power system bad data identification method is designed to improve this defect. The data is collected from power system users, the phase deviation caused by non-integer sampling is reduced by high sampling rate, the measurement signal period is obtained, the operational state of the distribution network is evaluated based on deep learning, the state vector is calculated, the maximum standard residual value is found, the location of the bad data is obtained, and the bad data identification method is designed. Experimental results: The mean accuracy of the power system bad data identification method in the paper is: 78.26%, which indicates that the designed power system bad data identification method performs better after fully integrating the deep learning.
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