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DiffNILM: A Novel Framework for Non-Intrusive Load Monitoring Based on the Conditional Diffusion Model

Ruichen Sun, Kun Dong, Jianfeng Zhao

2023Sensors29 citationsDOIOpen Access PDF

Abstract

Non-intrusive Load Monitoring (NILM) is a critical technology that enables detailed analysis of household energy consumption without requiring individual metering of every appliance, and has the capability to provide valuable insights into energy usage behavior, facilitate energy conservation, and optimize load management. Currently, deep learning models have been widely adopted as state-of-the-art approaches for NILM. In this study, we introduce DiffNILM, a novel energy disaggregation framework that utilizes diffusion probabilistic models to distinguish power consumption patterns of individual appliances from aggregated power. Starting from a random Gaussian noise, the target waveform is iteratively reconstructed via a sampler conditioned on the total active power and encoded temporal features. The proposed method is evaluated on two public datasets, REDD and UKDALE. The results demonstrated that DiffNILM outperforms baseline models on several key metrics on both datasets and shows a remarkable ability to effectively recreate complex load signatures. The study highlights the potential of diffusion models to advance the field of NILM and presents a promising approach for future energy disaggregation research.

Topics & Concepts

Computer scienceMetering modeEnergy consumptionProbabilistic logicData miningEnergy (signal processing)Conditional random fieldKey (lock)Baseline (sea)Artificial intelligenceWaveformMachine learningEngineeringStatisticsRadarGeologyMathematicsMechanical engineeringTelecommunicationsOceanographyComputer securityElectrical engineeringSmart Grid Energy ManagementEnergy Load and Power ForecastingBuilding Energy and Comfort Optimization
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