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Transferrable Model-Agnostic Meta-learning for Short-Term Household Load Forecasting With Limited Training Data

Yu He, Fengji Luo, Gianluca Ranzi

2022IEEE Transactions on Power Systems31 citationsDOI

Abstract

This letter proposes a transferrable model-agnostic meta-learning (T-MAML) approach for short-term load forecasting for single households. The proposed approach enables multiple households to collaboratively train a generic artificial neural network (ANN) model. The generic ANN model is then further trained at each target household node for the STLF purpose. The proposed T-MAML based STLF approach is featured by: (1) significant reduction of computation and communication costs on the household side; and (2) superior STLF performance, especially when there is limited load data for training in a target household. Experiments based on a real Australian residential dataset are conducted to validate the effectiveness of the proposed approach.

Topics & Concepts

Computer scienceTerm (time)Artificial neural networkComputationTraining (meteorology)Artificial intelligenceMachine learningTraining setData modelingMeteorologyQuantum mechanicsPhysicsDatabaseAlgorithmEnergy Load and Power ForecastingHydrological Forecasting Using AISolar Radiation and Photovoltaics
Transferrable Model-Agnostic Meta-learning for Short-Term Household Load Forecasting With Limited Training Data | Litcius