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Low-complexity energy disaggregation using appliance load modelling

机译:使用设备负载模型进行低复杂度的能量分解

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Large-scale smart metering deployments and energy saving targets across the world have ignited renewed interest in residential non-intrusive appliance load monitoring (NALM), that is, disaggregating total household’s energy consumption down to individual appliances, using purely analytical tools. Despite increased research efforts, NALM techniques that can disaggregate power loads at low sampling rates are still not accurate and/or practical enough, requiring substantial customer input and long training periods. In this paper, we address these challenges via a practical low-complexity lowrate NALM, by proposing two approaches based on a combination of the following machine learning techniques: k-means clustering and Support Vector Machine, exploiting their strengths and addressing their individual weaknesses. The first proposed supervised approach is a low-complexity method that requires very short training period and is fairly accurate even in the presence of labelling errors. The second approach relies on a database of appliance signatures that we designed using publicly available datasets. The database compactly represents over 200 appliances using statistical modelling of measured active power. Experimental results on three datasets from US, Italy, Austria and UK, demonstrate the reliability and practicality.
机译:全球范围内的大规模智能电表部署和节能目标激发了人们对住宅非侵入式设备负荷监控(NALM)的新兴趣,即使用纯分析工具将家庭的总能耗分解为单个设备。尽管加大了研究力度,但是可以以低采样率分解功率负载的NALM技术仍然不够准确和/或不实用,需要大量的客户投入和较长的培训时间。在本文中,我们通过实用的低复杂度低速率NALM来解决这些挑战,它基于以下机器学习技术的组合提出了两种方法:k均值聚类和支持向量机,充分利用它们的优势并解决其各自的劣势。首先提出的监督方法是一种低复杂度的方法,它需要非常短的训练时间,并且即使在存在标签错误的情况下也相当准确。第二种方法依赖于我们使用公开可用的数据集设计的设备签名数据库。该数据库使用测量的有功功率的统计模型紧凑地表示200多个设备。来自美国,意大利,奥地利和英国的三个数据集的实验结果证明了其可靠性和实用性。

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