Anomaly Detection Mechanism for Solar Generation using Semi-supervision Learning Model

Chia-Wei Tsai, Chun-Wei Yang, Feng-Ling Hsu, Hsih-Min Tang, N. Fan, Cheng-Yang Lin
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引用次数: 1

Abstract

Solar is an important energy resource at present, and thus how to generate power efficiently by using solar is the crucial research topics in next generation power system. Among these research topics, managing and maintaining the solar panels for avoiding the situation which cannot generate power due to damage is also an interesting issue. Because the cost of developing the solar plant is expensive and needing the extra-cost to maintain solar, how to maintain the solar panels effectively is another important issue. In this study, an anomaly detection mechanism with using the semi-supervision learning model is proposed to pre-identify whether the solar panel will occur the abnormal events or not. In the anomaly detection mechanism, this study uses the clustering algorithm to filter the normal events, and then adopts the neuron network model, Autoencoder, to develop the classificator. This study takes the data collected from a 500kW solar power plant to train models and verify the feasibility of the proposed anomaly detection mechanism.
基于半监督学习模型的太阳能发电异常检测机制
太阳能是当前重要的能源资源,如何高效利用太阳能发电是下一代电力系统的重要研究课题。在这些研究课题中,管理和维护太阳能电池板以避免因损坏而无法发电的情况也是一个有趣的问题。由于开发太阳能发电厂的成本昂贵,并且需要额外的成本来维护太阳能,因此如何有效地维护太阳能电池板是另一个重要的问题。本文提出了一种利用半监督学习模型的异常检测机制,对太阳能电池板是否会发生异常事件进行预识别。在异常检测机制上,本研究采用聚类算法对正常事件进行过滤,然后采用神经元网络模型Autoencoder开发分类器。本研究利用500kW太阳能电站的数据对模型进行训练,验证所提出的异常检测机制的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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