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A Hybrid Approach to Short-Term Load Forecasting Aimed at Bad Data Detection in Secondary Substation Monitoring Equipment

机译:变电站监控设备不良数据检测的短期负荷预测混合方法

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摘要

Bad data as a result of measurement errors in secondary substation (SS) monitoring equipment is difficult to detect and negatively affects power system state estimation performance by both increasing the computational burden and jeopardizing the state estimation accuracy. In this paper a short-term load forecasting (STLF) hybrid strategy based on singular spectrum analysis (SSA) in combination with artificial neural networks (ANN), is presented. This STLF approach is aimed at detecting, identifying and eliminating and/or correcting such bad data before it is provided to the state estimator. This approach is developed to improve the accuracy of the load forecasts and it is tested against real power load data provided by electricity suppliers. Depending on the week considered, mean absolute percentage error (MAPE) values which range from 1.6% to 3.4% are achieved for STLF. Different systematic errors, such as gain and offset error levels and outliers, are successfully detected with a hit rate of 98%, and the corresponding measurements are corrected before they are sent to the control center for state estimation purposes.
机译:由于二次变电站(SS)监视设备中的测量错误而导致的不良数据难以检测,并且会增加计算量并危及状态估计精度,从而对电力系统状态估计性能产生负面影响。本文提出了一种基于奇异频谱分析(SSA)结合人工神经网络(ANN)的短期负荷预测(STLF)混合策略。这种STLF方法旨在在将这些不良数据提供给状态估计器之前对其进行检测,识别和消除和/或校正。开发这种方法是为了提高负荷预测的准确性,并且已针对电力供应商提供的实际电力负荷数据进行了测试。根据所考虑的星期,STLF的平均绝对百分比误差(MAPE)值达到1.6%至3.4%。已成功检测出不同的系统误差,例如增益和失调误差水平以及异常值,命中率为98%,并且在将相应的测量值发送到控制中心进行状态估计之前,对其进行了校正。

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