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Research on state evaluation and risk assessment for relay protection system based on machine learning algorithm

机译:基于机器学习算法的继电保护系统国家评价与风险评估研究

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摘要

The relay protection system plays an important role in ensuring the stable operation of power systems. Combined with operation data collected from a region in China, this study is aimed at providing a reliable quantitative basis for relay protection systems' operating maintenance by the aid of a semi-supervised Mahalanobis distance machine learning algorithm. The evaluation result is first applied as a training set on the basis of the analytic hierarchy process fuzzy synthetic evaluation. Then, contrastive analysis is conducted in terms of accuracy, processing time, and feasibility. It includes comparative cases with a supervised multiple regression analysis algorithm and unsupervised K-means algorithm. The comparison result reveals that the algorithm can effectively and accurately predict the running state of the equipment and offer a quantitative reference for relative maintenance strategy.
机译:继电保护系统在确保动力系统的稳定运行方面起着重要作用。该研究旨在通过半监督的Mahalanobis距离机器学习算法为中继保护系统的运行维护提供可靠的定量基础。在基于分析层次过程模糊综合评估的基础上,首先将评估结果作为培训。然后,在准确性,处理时间和可行性方面进行对比分析。它包括具有监督多元回归分析算法和无监督的K均值算法的比较例。比较结果表明,该算法可以有效准确地预测设备的运行状态,并提供相对维护策略的定量参考。

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