LGMLFeb 5, 2019

Neural Network for NILM Based on Operational State Change Classification

arXiv:1902.02675v2
AI Analysis

This is an incremental improvement for energy management systems, offering a more feasible and lower-complexity approach across various appliances.

The paper tackles energy disaggregation by using a neural network to estimate appliance operational state changes instead of on-off states or power consumption, achieving competitive performance on the REDD dataset compared to benchmark methods.

Energy disaggregation in a non-intrusive way estimates appliance level electricity consumption from a single meter that measures the whole house electricity demand. Recently, with the ongoing increment of energy data, there are many data-driven deep learning architectures being applied to solve the non-intrusive energy disaggregation problem. However, most proposed methods try to estimate the on-off state or the power consumption of appliance, which need not only large amount of parameters, but also hyper-parameter optimization prior to training and even preprocessing of energy data for a specified appliance. In this paper, instead of estimating on-off state or power consumption, we adapt a neural network to estimate the operational state change of appliance. Our proposed solution is more feasible across various appliances and lower complexity comparing to previous methods. The simulated experiments in the low sample rate dataset REDD show the competitive performance of the designed method, with respect to other two benchmark methods, Hidden Markov Model-based and Graph Signal processing-based approaches.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes