Anomaly Detection for Hydroelectric Power Plants: a Machine Learning-based Approach

Mattia Fanan, Claudio Baron, R. Carli, Marc-Aurèle Divernois, J. Marongiu, Gian-Antonio Susto
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Abstract

Hydroelectric is currently the most prominent among the sources of green energy, but, differently from the other sources, it has very strict requirements in terms of security that are taken into account with extremely robust constraints both at design and operations control times. In this paper, we evaluated the effectiveness of anomaly detection and explainability algorithms to supplement Decision Support System insights in Predictive Maintenance and Root Cause Analysis for hydroelectric power plants. The objective is to reduce operational costs and increase reliability in the plant, making hydroelectric technology more appealing to investors and promoting the transition to renewable energy. Specifically, the performance of several anomaly detection models was compared on real-world data with respect to the needs of the expert of the domain, that is the final user of the DSS, to work as an additional feature to speed up predictive maintenance. Additionally, the impact of SHapley Additive exPlanations values on helping the user understand the anomaly causes was investigated. Our findings are that the most performing algorithm was Auto-Encoder since it was able to find all recorded anomalies and even propose additional ones later confirmed by domain experts. The application of SHAP values was found to effectively guide the user toward the features related to the anomaly, although its application on streaming data was slow.
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水电站异常检测:一种基于机器学习的方法
水电是目前绿色能源中最为突出的一种,但与其他能源不同的是,水电在安全方面有非常严格的要求,在设计和运行控制时都要考虑到极其严格的约束。在本文中,我们评估了异常检测和可解释性算法的有效性,以补充水电站预测性维护和根本原因分析中的决策支持系统见解。其目标是降低运营成本,提高电厂的可靠性,使水力发电技术对投资者更具吸引力,并促进向可再生能源的过渡。具体而言,在实际数据上比较了几种异常检测模型的性能,并将其与该领域专家(即DSS的最终用户)的需求进行了比较,以作为加速预测性维护的附加功能。此外,还研究了SHapley加性解释值对帮助用户理解异常原因的影响。我们的发现是,表现最好的算法是Auto-Encoder,因为它能够找到所有记录的异常,甚至提出额外的,后来由领域专家确认。我们发现,SHAP值的应用可以有效地引导用户找到与异常相关的特征,尽管它在流数据上的应用速度很慢。
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