Measured Rare Voltage Sags and Clusters of Sags: Prediction Models Driven by the Intermittence Indices

IF 3.3 Q3 ENERGY & FUELS IEEE Open Access Journal of Power and Energy Pub Date : 2024-03-06 DOI:10.1109/OAJPE.2024.3397365
G. M. Casolino;M. de Santis;L. Di Stasio;C. Noce;P. Varilone;P. Verde
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Abstract

The field measurement campaigns have revealed that voltage sags also occur as clusters and not only as rare phenomena. The clusters of sags represent a stochastic process due to their time dependence; the rare satisfy the requirements for a Poisson distribution process. To forecast both kinds of sags using the statistics of the measurements, different approaches are required. In this study, a general method for predicting both types of sags is proposed with a procedure that can be implemented automatically. The method uses intermittent indices to distinguish between the sites that have a prevalent number of rare sags and the sites where rare sags and clusters occurred. Based on this means of identification, the technique offers two distinct models for predicting each kind of sag. The final goal is to implement the procedure in a measurement system that can automatically pre-analyze the recorded sags and choose the best technique for prediction depending on the type of sag. The first results were satisfying with forecast errors reduced in comparison with those obtained without the proposed procedure.
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测量到的罕见电压骤降和骤降群:间歇指数驱动的预测模型
现场测量活动表明,电压骤降也会以群集的形式出现,而不仅仅是罕见的现象。电压骤降群因其时间依赖性而代表了一种随机过程;罕见现象则符合泊松分布过程的要求。要利用测量统计数据预测这两种瞬变,需要采用不同的方法。本研究提出了一种预测这两种瞬变的通用方法,其程序可自动执行。该方法使用间歇性指数来区分罕见曳光数量较多的站点和出现罕见曳光和曳光群的站点。基于这种识别方法,该技术提供了两种不同的模型来预测每一种塌陷。最终目标是在测量系统中实施该程序,该系统可自动对记录的塌陷进行预分析,并根据塌陷类型选择最佳预测技术。初步结果令人满意,预测误差与未采用建议程序时相比有所减少。
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CiteScore
7.80
自引率
5.30%
发文量
45
审稿时长
10 weeks
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