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首页> 外文期刊>Probability in the Engineering and Informational Sciences >A CLUSTER DISTRIBUTION AS A MODEL FOR ESTIMATING HIGH-ORDER-EVENT PROBABILITIES IN POWER SYSTEMS
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A CLUSTER DISTRIBUTION AS A MODEL FOR ESTIMATING HIGH-ORDER-EVENT PROBABILITIES IN POWER SYSTEMS

机译:集群分布作为电力系统高阶概率估计模型

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摘要

We propose the use of the cluster distribution, derived from a negative binomial probability model, to estimate the probability of high-order events in terms of number of lines outaged within a short time, useful in long-term planning and also in short-term operational defense to such events. We use this model to fit statistical data gathered for a 30-year period for North America. The model is compared to the commonly used Poisson model and the power-law model. Results indicate that the Poisson model underestimates the probability of higher-order events, whereas the power-law model overestimates it. We use the strict chi-square fitness test to compare the fitness of these three models and find that the cluster model is superior to the other two models for the data used in the study.
机译:我们建议使用从负二项式概率模型得出的聚类分布,根据短时间内中断的线路数来估计高阶事件的概率,这对于长期计划以及短期计划均有用对此类事件的作战防御。我们使用此模型来拟合在过去30年中为北美收集的统计数据。将该模型与常用的泊松模型和幂律模型进行比较。结果表明,泊松模型低估了高阶事件的概率,而幂律模型则高估了它。我们使用严格的卡方适应度测试来比较这三个模型的适应度,发现对于研究中使用的数据,聚类模型优于其他两个模型。

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