基于灰色理论的配电网停电预测

Yang Zhang, A. Mazza, P. Colella, E. Bompard, E. Roggero, G. Galofaro
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引用次数: 2

摘要

配电网年停电与电网的可靠性密切相关,直接影响用户的满意度。恶劣的天气条件、不断增加的负荷以及老化的设备都是对电网基础设施的潜在威胁。良好的停机次数预测对于维护计划和投资成本效益分析至关重要。为了对电网中的停网情况进行预测,本文引入了GM(1,1)(一阶灰色模型)预测方法。为了提高预测精度,在建模过程中采用粒子群优化算法进行参数优化。根据中压城市配电网过去7年的记录,预测了中压城市配电网未来2年的停电次数。仿真结果验证了所提出的预测方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of Power Outages in Distribution Network with Grey Theory
Annual power outages in distribution network are highly related to the reliability of the power grid and directly affect the customers' satisfaction. The severe weather conditions, increasing loads as well as aging equipment are all potential threatens to the electrical grid infrastructure. A good prediction of the number of outages is essential for the maintenance planning and cost benefit analysis of investment. In order to predict the out-of-service cases in the power grid, the GM (1,1) (first-order Grey Modelling) forecasting method is introduced in this paper. To improve the accuracy of the prediction, the PSO (particle swarm optimization) algorithm is applied for the parameter optimization in the modeling. The number of outages in the next two years of a medium-voltage urban distribution network are predicted based on the records in the past 7 years. The good performance of the simulation results verifies the proposed forecasting method.
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