A prediction method for power frequency quality based on Bayesian theorem and uncertainty classification

Yawei Wei, Shamina Hossain, H. Kirkham
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Abstract

With the continuous concern on power system stability and increasing interesting on advanced PMU device application, the focus shifts from ordinary grid measurement data acquisition to system stability monitor and possible event forecast.Among these analysis, frequency quality and stability is always first priority. A proper prediction can help grid to adjust their operation quicker and increase the power reliability, however it still depend on the original data accuracy. In this paper, the proposed method presents a novel frequency quality detection and prediction method on the background of Bayesian theorem and BIPMs Guide to the expression of Uncertainty in Measurement (G.U.M). By analyzing the data stream from PMU in historical record, the proposed method draws an overall conclusion of system frequency quality with confidential level, uncertainty estimation and short time prediction value,which is easy to illustrate for control center operator. It has been tested using data from Michigan Tech Power Energy Lab. The preliminary DC signal tests the normal result for method validation. Testing results show this Bayesian-based prediction method has a great potential in power system frequency quality analysis and dynamic event prediction.
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基于贝叶斯定理和不确定性分类的工频质量预测方法
随着人们对电力系统稳定性的持续关注和对先进PMU设备应用的日益关注,人们的关注点从普通的电网测量数据采集转向了系统稳定性监测和可能发生的事件预测。在这些分析中,频率质量和稳定性始终是第一位的。正确的预测可以帮助电网更快地调整运行,提高电力可靠性,但仍然依赖于原始数据的准确性。本文以贝叶斯定理和bipm测量不确定度表达指南(G.U.M)为背景,提出了一种新的频率质量检测与预测方法。该方法通过对PMU历史记录数据流的分析,得出了具有保密性、不确定性估计和短时预测值的系统频率质量总体结论,便于控制中心操作人员演示。它已经使用密歇根理工大学电力能源实验室的数据进行了测试。初步的直流信号测试了方法验证的正常结果。试验结果表明,该方法在电力系统频率质量分析和动态事件预测中具有很大的应用潜力。
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