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Current peak based device classification in NILM on a low-cost embedded platform using extra-trees

机译:使用额外树木的低成本嵌入式平台上的尼尔目前基于峰的设备分类

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Non-Intrusive Load Monitoring (NILM) is a method for disaggregation of energy consumption of individual appliances in a household. This involves the classification of individual appliances, for which a number of electrical features in combination with machine learning algorithms have been used. Extraction of most of these features is a computationally demanding task, and use of complex machine learning algorithms further adds to this complexity. Although solutions to this problem exist, they tend to be expensive and unaffordable to consumers in developing countries. This necessitates a need for an inexpensive solution capable of running on low-cost embedded platforms. In this paper, the authors implement a machine learning approach on an embedded platform to address this problem using current-based features for device classification. The model was evaluated using the Building-Level fUlly-labeled dataset for Electricity Disaggregation (BLUED) which contains electrical measurements for a household in the US for one week. The classifier was trained on Raspberry Pi 3 in about 4 seconds and classification of an event was performed in under 400 ms, validating the feasibility of the classification model on such a platform.
机译:非侵入式载荷监测(尼尔)是一种分解家庭中各设备能耗的方法。这涉及单个设备的分类,其中许多电气特征与机器学习算法结合使用。大多数这些特征的提取是一种计算要求苛刻的任务,并且使用复杂的机器学习算法进一步增加了这种复杂性。虽然存在对此问题的解决方案,但它们往往是发展中国家的消费者昂贵且不适用。这需要需要一种能够在低成本嵌入式平台上运行的廉价解决方案。在本文中,作者在嵌入式平台上实施了一种机器学习方法,以解决使用基于当前的设备分类的特征来解决此问题。使用建筑级全标标签数据集进行评估模型,用于电力分列(BLUED),其中包含一周内的家庭的电气测量。分类器在Raspberry PI 3上培训,在大约4秒内培训,并且在400毫秒以下进行事件的分类,验证在这种平台上的分类模型的可行性。

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