Classification of high frequency NILM switching transients based on denoising convolutional neural networks
Date
2022
Authors
Journal Title
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Publisher
University of Delaware
Abstract
Smart electric meters require efficient signal processing algorithms for load identification and energy disaggregation. Non-intrusive load monitoring (NILM) systems are able to extract features from the 60 Hz power signal in order to collect information about the end use of electric loads. Switching transients induced by turning on or off a certain appliance can be used to identify which appliance is connected or disconnected at a given time in the electrical network. The dataset used in this work is the most recent version of the Plug-Load Appliance Identification Dataset (PLAID) available online as a public resource/database for NILM research which contains records of voltages and currents of different electrical appliances captured at a high sampling frequency (30 kHz). This thesis presents a new approach for appliance classification with deep learning techniques by using a FIR high pass filter to remove the fundamental signal, then the short time Fourier transform (STFT) is computed for the feature extraction of high frequency start-up transients induced in the fundamental signal. The proposed convolutional neural network architecture yields a classification accuracy of 95.22% and 88.20% for twelve and sixteen different appliances, respectively.
Description
Keywords
Smart electric meters, Efficient signal processing algorithms, Load identification, Energy disaggregation