Stochastic Model to Forecast the Voltage Sags in Real Power Systems

L. Di Stasio, P. Verde, P. Varilone, M. De Santis, C. Noce
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引用次数: 2

Abstract

The forecast of the occurrence of voltage sags at the sites of a system is nowadays feasible thanks to the availability of huge quantity of recorded data. To forecast future performance from the statistical analysis of recorded sags, the stochastic modelling of the voltage sags is required since the events are not statistically time independent. The presence of groups of sags, named clusters, brings the phenomenon far from the conditions of Poisson model. This paper proposes the Gamma distribution to model the sags, which also include the clusters. Different techniques for assessing the parameters of the Gamma distribution are presented and applied to forecast the number of sags expected at selected sites in the year 2018, i.e., the year successive to those when the sags were measured. The outcomes of the forecast are compared with the sags effectively occurred in those sites in the year 2018, using different criteria for evaluating the forecast error. The results showed the viability of the approach and encourage further studies to improve the accuracy and extend the forecast to entire systems.
实际电力系统电压跌落的随机预测模型
由于有大量的记录数据,对系统现场电压跌落的预测现在是可行的。为了从记录的跌落的统计分析中预测未来的性能,需要对电压跌落进行随机建模,因为这些事件不是统计时间无关的。凹陷群(称为簇)的存在使这种现象远离泊松模型的条件。本文提出了Gamma分布来模拟下垂,其中也包括聚类。提出了评估伽玛分布参数的不同技术,并应用于预测2018年(即测量凹陷的连续年份)在选定地点的预期凹陷数量。利用不同的预测误差评价标准,将预测结果与这些站点2018年有效发生的下沉进行了比较。结果表明了该方法的可行性,并鼓励进一步研究以提高精度并将预测扩展到整个系统。
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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