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Monitoring Home Energy Usage Using an Unsupervised NILM Algorithm Based on Entropy Index Constraints Competitive Agglomeration (EICCA)

机译:使用基于熵指标约束竞争集聚(EICCA)的无监督NILM算法监控家庭能源使用

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Given that residential sectors in both developed and developing nations contribute to a significant portion of electric energy consumption, addressing energy efficiency and conservation in this sector is envisioned to have a considerable effect on the levels of nationwide and global electric energy consumption. Various approaches have been utilized to address these challenges with a number of positive outcomes being realized through Load Monitoring and Non-Intrusive Load Monitoring (NILM) in particular. These positive outcomes have been attributed to the increase in energy awareness of homeowners. Due to limited resources in a residential environment, methods utilizing unsupervised learning together with NILM can provide valuable and practical solutions. Such solutions are of great importance to developing nations and low-income households as they lower the barrier for adoption by reducing the costs and effort required to monitor electric energy usage. In this paper we present a low-complexity unsupervised NILM algorithm which has practical applications for monitoring electric energy usage within homes. We make use of Entropy Index Constraints Competitive Agglomeration (EICCA) to automatically discover an optimal set of feature clusters, and invariant Active Power (P) features to detect appliance usage given aggregated household energy data which includes noise. We further present an approach that can be used to obtain Type Ⅱ appliance models, which can provide valuable feedback to homeowners. The results of experimental validation indicate that our proposed work has comparable performance with recent work in unsupervised NILM including the state of the art with regards to energy disaggregation.
机译:鉴于发达国家和发展中国家的居民部门都在电能消耗中占很大比重,因此设想解决该部门的能源效率和节约问题将对全国和全球电能消耗水平产生相当大的影响。通过负载监控和非侵入式负载监控(NILM),已采用了各种方法来应对这些挑战,并取得了许多积极成果。这些积极成果归因于房主对能源的意识增强。由于居住环境中的资源有限,将无监督学习与NILM结合使用的方法可以提供有价值的实用解决方案。这样的解决方案对发展中国家和低收入家庭来说非常重要,因为它们通过降低监测电能使用所需的成本和精力来降低采用的障碍。在本文中,我们提出了一种低复杂度的无监督NILM算法,该算法在监视家庭中的电能使用方面具有实际应用。我们利用熵指数约束竞争集聚(EICCA)自动发现一组最佳的功能集群,并使用不变的有功功率(P)功能在给定的包括噪音在内的汇总家庭能源数据的情况下检测设备的使用情况。我们进一步提出了一种可用于获取Ⅱ类设备模型的方法,该模型可为房主提供有价值的反馈。实验验证的结果表明,我们提出的工作与在无监督NILM中的最新工作(包括在能量分解方面的最新技术)具有可比的性能。

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