基于机器学习的可再生能源级联跳闸评估在线识别方法研究

Wu Feng, Bao Yan-hong, Ruan Jingjing, Ren Xian-cheng, Liu Shaofeng, Tu Wang
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引用次数: 2

摘要

由于影响可再生能源级联跳闸的因素较多,难以快速准确地评估可再生能源跳闸风险。机器学习在电力系统安全稳定评估中得到了广泛的研究。机器学习可以保证可再生能源级联跳闸识别的准确性和快速性。提出了一种考虑保守原理的基于支持向量机的级联跳闸评价方法。该方法结合因果分析和统计理论提取关键特征量。通过训练建立系统特征量与可再生能源脱扣之间的映射关系,识别突发情况下的级联可再生能源脱扣,并根据仿真结果滚动更新预测模型,避免误判的发生。通过实际电力系统的算例验证了该方法的有效性和实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Study on Online Recognition Method of Renewable Energy Cascading Tripping Evaluation Based on Machine Learning
Considering that there are many factors affecting renewable energy cascading tripping, it is difficult to assess renewable energy tripping risk quickly and accurately. Machine learning has been extensively studied in power system security and stability evaluation. Machine learning can ensure both accuracy and rapidity of renewable energy cascading tripping identification. A method of cascading tripping evaluation based on support vector machine considering conservative principle is proposed. The method combines causal analysis and statistical theory to extract key characteristic quantities. The mapping relationship between system characteristic quantities and renewable energy tripping is established by training to identify cascading renewable energy tripping under contingency and update the prediction model rolling with simulation results to avoid the occurrence of misjudgment. The validity and practicality of the proposed method is verified by an example of actual power system.
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