用于断路器状态模式智能识别的训练样本生成

A. Khalyasmaa, M. Senyuk, S. Eroshenko
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引用次数: 2

摘要

本文提出了断路器状态模式智能识别对训练样本的系统要求。为了确定训练样本的最优参数,在Python 3中使用XGBoost算法进行了一系列计算。因此,对训练样本参数的大小、熵和信息量提出了要求。以实际500/220/110千伏变电站安装的2台U- 110-2000型油断路器为算例。一个断路器状态模式识别问题对训练样本的要求已经得到确认。提供的标准可用于机器学习模型的训练,作为自动系统断路器技术状态评估的一部分。类似的系统将允许优化电力设备维修时间表。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Training sample formation for intelligent recognition of circuit breakers states patterns
This paper presents the system of requirements to the training sample for Intelligent recognition of circuit breakers’ states patterns. To determine optimum parameters of the training sample a series of calculations by means of XGBoost algorithm performed in Python 3 has been carried out. As a result, requirements to size, entropy and informational content of the training sample parameters have been developed. Two oil U- 110-2000 breakers installed on a real 500/220/110 kV substation have been chosen as a calculation example. Requirements to the training sample for a problem of recognition of circuit breakers states patterns have been confirmed. The offered criteria can be used for training of machine learning model as a part of the automated system circuit breakers technical state assessment. Similar system will allow optimizing schedules of power equipment repairs.
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