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Electricity demand forecasting by multi-task learning
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2017
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Unknown Venue
EngineeringMachine LearningData ScienceSmart GridEnergy ManagementMultiple LinesPredictive AnalyticsDemand ForecastingOutput KernelEnergy ForecastingIrish CommissionMulti-task LearningForecastingElectricity Demand ForecastingEnergy PredictionStatisticsKernel Method
We explore the application of kernel-based multi-task learning techniques to forecast the demand of electricity measured on multiple lines of a distribution network. We show that recently developed output kernel learning techniques are particularly well suited to solve this problem, as they allow to flexibly model the complex seasonal effects that characterize electricity demand data, while learning and exploiting correlations between multiple demand profiles. We also demonstrate that kernels with a multiplicative structure yield superior predictive performance with respect to the widely adopted (generalized) additive models. Our study is based on residential and industrial smart meter data provided by the Irish Commission for Energy Regulation (CER).