基于机器学习的地热发电厂故障检测系统

Zulkarnain, I. Surjandari, Resha Rafizqi Bramasta, Enrico Laoh
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引用次数: 4

摘要

地热发电厂是印尼具有巨大潜力的可再生清洁能源。关键机器人工故障检测系统是印尼地热发电厂运行中存在的问题之一。在确定发动机状况时容易出现的错误和在得知警报时的延迟是出现的两个主要问题。机器学习算法在建立故障检测模型中的应用已经在各种行业和对象中得到了应用。本研究是将机器学习算法应用于地热发电厂关键发动机的故障检测分类模型的建立。使用的算法是基本分类器和集成分类器,比较哪种算法产生的分类指标最好。这项研究可以为印尼地热发电厂行业提供洞察力,利用机器学习算法利用传感器数据来克服现有的故障检测系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fault Detection System Using Machine Learning on Geothermal Power Plant
Geothermal power plants are a renewable clean energy source with great potential that Indonesia has. The manual fault detection system at the critical machine is one of the problems in the operation of geothermal power plants in Indonesia. Vulnerable errors in determining engine conditions and delays in knowing alerts are two major problems that arise. The application of machine learning algorithms in making fault detection models has been used in various industries and objects. This research is the application of machine learning algorithms to create fault detection classification models on critical engines of geothermal power plants. The algorithm used is the basic classifier and ensemble classifier to compare which algorithms produce the best classification indicators of classifications. This research can provide insight into the geothermal power plant industry in Indonesia to overcome existing fault detection system by utilizing sensor data using machine learning algorithm.
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