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Nonintrusive Real Time Classification of Home and Office Appliances from Smart Meter by Using Machine Learning Techniques

机译:利用机器学习技术从智能电表进行非侵入式实时分类的家用和办公设备

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Noninvasive load monitoring have been investigated by researchers for decades due to its cost-effective benefits. Upon introduction of smart meters, obtaining data about power consumption of households became easier. Numerous different techniques have been applied on the power consumption data to gain useful information out of it. This study applies machine learning techniques (Bayes network, random forest and rotational forest) to determine the operation state of households, where households are assumed to be either in ON or OFF state. Tracebase power consumption signature repository was used to train and test proposed machine learning models. Tracebase dataset was preprocessed to generate 4 different datasets. Test results have shown that these machine learning algorithms are able to estimate operation state with high accuracy and Bayes network shows outstanding performance among them with overall accuracy of 95%. Proposed method is extremely cost-effective for load monitoring and could replace some of the physical sensors in the smart houses.
机译:由于具有成本效益,无创负荷监测已被研究人员研究了数十年。随着智能电表的推出,获取有关家庭用电量的数据变得更加容易。已经将许多不同的技术应用于功耗数据以从中获取有用的信息。这项研究应用机器学习技术(贝叶斯网络,随机森林和旋转森林)来确定家庭的运行状态,其中假定家庭处于开或关状态。 Tracebase功耗签名存储库用于训练和测试建议的机器学习模型。 Tracebase数据集经过预处理以生成4个不同的数据集。测试结果表明,这些机器学习算法能够以较高的精度估算运行状态,而贝叶斯网络在其中的卓越性能达到了95%的总体精度。所提出的方法对于负载监控而言是极具成本效益的,并且可以替代智能房屋中的某些物理传感器。

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