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Double Fourier Integral Analysis Based Convolutional Neural Network Regression for High-Frequency Energy Disaggregation

Pascal A. Schirmer, Iosif Mporas

2021IEEE Transactions on Emerging Topics in Computational Intelligence27 citationsDOIOpen Access PDF

Abstract

Non-Intrusive Load Monitoring aims to extract the energy consumption of individual electrical appliances through disaggregation of the total power load measured by a single smart-meter. In this article we introduce Double Fourier Integral Analysis in the Non-Intrusive Load Monitoring task in order to provide more distinct feature descriptions compared to current or voltage spectrograms. Specifically, the high-frequency aggregated current and voltage signals are transformed into two-dimensional unit cells as calculated by Double Fourier Integral Analysis and used as input to a Convolutional Neural Network for regression. The performance of the proposed methodology was evaluated in the publicly available U.K.-DALE dataset. The proposed approach improves the estimation accuracy by 7.2% when compared to the baseline energy disaggregation setup using current and voltage spectrograms.

Topics & Concepts

SpectrogramFourier transformComputer scienceConvolutional neural networkEnergy (signal processing)Short-time Fourier transformVoltageRegression analysisRegressionFourier analysisPower (physics)Smart meterEnergy consumptionLinear regressionPattern recognition (psychology)Artificial intelligenceStatisticsMathematicsElectricityEngineeringMachine learningElectrical engineeringPhysicsQuantum mechanicsMathematical analysisSmart Grid Energy ManagementBuilding Energy and Comfort OptimizationEnergy Load and Power Forecasting
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