基于credential网络的风电场集群坡道事件区间概率估计

Wang Xinyi, Han Xueshan, Yang Ming, Yu Yixiao
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引用次数: 0

摘要

大规模的风电并网使得风电坡道事件的影响更加不容忽视。与单站预测相比,集群预测能更直观地反映电力突变对电力系统的影响,预测结果更有利于调度员的决策。为此,本文提出了一种针对风电场集群的不精确概率预测方法。通过相关分析和主成分分析对数据进行降维,避免因输入变量过多导致数据维数过大,影响计算速度等问题。建立了表征风电场集群坡道事件与证据变量依赖关系的可信度网络(CN),并利用不精确Dirichlet模型(IDM)对条件依赖关系进行了统计量化。最后,结合气象信息,以概率区间的形式对斜坡事件进行分类推断,并利用评价指标对斜坡事件的预测效果进行评价。本文以新疆某风电场集群为例,验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Interval Probability Estimation of Wind Farm Cluster Ramp Events Based on Credal Network
Large-scale wind power integration makes the impact of wind power ramp events more impossible to ignore. Compared with single station prediction, cluster prediction can reflect the impact of power mutation on the power system more intuitively, and the prediction results are more conducive to the decision-making of dispatchers. Therefore, this paper proposed an imprecise probabilistic prediction method for wind farm cluster. Data dimensionality reduction was carried out through correlation analysis and principal component analysis to avoid problems such as excessive data dimension caused by too many input variables and the influence of calculation speed. The credal network (CN) was established to express the dependent relationship between wind farm cluster ramp events and evidence variables, and the conditional dependent relationship was statistically quantified by using the imprecise Dirichlet model (IDM). Finally, combined with meteorological information, the ramp events were classified and inferred in the form of probability intervals, and the prediction performance was evaluated by using evaluation indexes. In this paper, the validity of the method was verified by using the data of a wind farm cluster in Xinjiang.
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