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Non-Intrusive Load Monitoring (NILM): Unsupervised Machine Learning and Feature Fusion : Energy Management for Private and Industrial Applications

机译:非侵入式负荷监测(尼尔):无监督机器学习和特征融合:私人和工业应用的能源管理

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Energy savings are an important building block for the clean energy transition. Studies show that the consideration of overall load profiles is not sufficient to identify significant saving potentials -as is the case with smart meters. Nonintrusive Load Monitoring enables a device specific consumption disaggregation in a cost effective way. Our work focuses on the fusion of low, mid and high frequency features which can enhance the disaggregation performance. Furthermore our suggested approach consists of an unsupervised machine learning technique which enables novelty detection, a small training phase and live processing. We conclude this paper with the algorithm evaluation on household and industrial datasets.
机译:节能是清洁能源过渡的重要构建块。研究表明,考虑整体负载型材的考虑不足以识别显着的节省潜力 - 是智能电表的情况。非功能性负荷监控使设备特定的消费能力能够以成本效益的方式进行。我们的工作侧重于融合的低频,中高频功能,可以提高分类性能。此外,我们建议的方法包括一个无监督的机器学习技术,它能够启用新颖性检测,小型训练阶段和现场处理。我们将本文与家庭和工业数据集的算法评估结束。

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