In this work, a method for unsupervised energy disaggregation in private households equipped with smart meters is proposed. This method aims to classify power consumption as active or passive, granting the ability to report on the residents' activity and presence without direct interaction. This lays the foundation for applications like non-intrusive health monitoring of private homes. The proposed method is based on minimizing a suitable energy functional, for which the iPALM (inertial proximal alternating linearized minimization) algorithm is employed, demonstrating that various conditions guaranteeing convergence are satisfied. In order to confirm feasibility of the proposed method, experiments on semi-synthetic test data sets and a comparison to existing, supervised methods are provided.
翻译:在这项工作中,提出了在配备智能仪表的私人住户中进行不受监督的能源分解的方法,目的是将电力消费分类为主动或被动的,使能报告居民的活动和存在,而无需直接互动,这为诸如对私人住宅进行非侵入性健康监测等应用奠定了基础,拟议方法的基础是尽量减少适当的能源功能,为此采用了iPALM(原始近似半线性交替最小化)算法,表明满足了保证汇合的各种条件,为了确认拟议方法的可行性,提供了半合成试验数据集试验和与现有监督方法的比较。