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Machine learning based analysis of factory energy load curves with focus on transition times for anomaly detection

机译:基于机器学习的工厂能量负载曲线分析,重点是异常检测转换时间

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An accurate understanding of energy load curves is the key for effective management of factory energy systems and basis for several energy applications (e.g. forecasts, anomaly detection). While load curve analysis has been a research topic with practical significance in many areas, there is a lack of methods particularly to evaluate different temporal transitions between energy states. Consequently, related energy saving potentials on factory level remain undetected. Against this background, the paper presents a methodology combining unsupervised univariate clustering and multivariate prediction based methods. Within an automotive use case for anomaly detection in energy performance management, those methods are getting applied and validated with real factory data.
机译:对能量负荷曲线的准确理解是有效管理工厂能量系统的钥匙和几种能量应用(例如预测,异常检测)。 虽然负载曲线分析一直是许多领域具有实际意义的研究课题,但缺乏方法,特别是在能量状态之间评估不同的时间过渡。 因此,有关工厂水平的相关节能潜力仍未被发现。 在此背景下,本文提出了一种组合无监督的单变量聚类和基于多变量预测的方法的方法。 在能量绩效管理中异常检测的汽车用例中,这些方法正在应用并使用实际的工厂数据进行验证。

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