基于历史数据的水轮发电机机器学习监测

Shiva Prasad Dahal, M. Dahal, B. Silwal
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引用次数: 0

摘要

对水电厂同步发电机的健康监测进行了探讨。近年来,电站维护的重点已从预防性维护转向预测性维护。机器预测是状态维修的重要组成部分。它旨在监视和跟踪故障的时间演变,以便可以执行维护,或者可以终止任务以避免灾难性故障。本文研究了以定子端电压和定子绕组电流为输入,定子绕组温度为输出的同步发电机定子绕组健康检测的机器学习模型。对尼泊尔Sardikhola水电站同步发电机5年多的实时数据进行了预测,并提出了自适应神经模糊干扰系统(ANFIS)模型。该模型根据定子端电压和电流预测定子绕组温度的故障数据范围和健康数据范围。
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Historical Data Based Monitoring of Hydro Generator Using Machine Learning
This paper discusses the health monitoring of synchronous generators used in hydropower plants. In recent years, maintenance of generating stations has shifted its focus from preventive maintenance to predictive maintenance. Machine prognosis is a significant part of condition-based maintenance. It intends to monitor and track the time evolution of a fault, so that maintenance can be performed, or the task can be terminated to avoid a catastrophic failure. This paper focuses on the machine learning model for health detection of stator winding of synchronous generator by using stator terminal voltage and stator winding current as input and stator winding temperature as output. More than five years of real-time data of a synchronous generator of Sardikhola hydropower plant in Nepal are collected to predict and present the Adaptive Neuro-Fuzzy Interference System (ANFIS) model. This model predicts faulty data range and healthy data range of stator winding temperature corresponding to stator terminal voltage and current.
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