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Transformer training strategies for forecasting multiple load time series

Matthias Hertel, Maximilian Beichter, Benedikt Heidrich, Oliver Neumann, Benjamin Schäfer, Ralf Mikut, Veit Hagenmeyer

2023Energy Informatics25 citationsDOIOpen Access PDF

Abstract

Abstract In the smart grid of the future, accurate load forecasts on the level of individual clients can help to balance supply and demand locally and to prevent grid outages. While the number of monitored clients will increase with the ongoing smart meter rollout, the amount of data per client will always be limited. We evaluate whether a Transformer load forecasting model benefits from a transfer learning strategy, where a global univariate model is trained on the load time series from multiple clients. In experiments with two datasets containing load time series from several hundred clients, we find that the global training strategy is superior to the multivariate and local training strategies used in related work. On average, the global training strategy results in 21.8% and 12.8% lower forecasting errors than the two other strategies, measured across forecasting horizons from one day to one month into the future. A comparison to linear models, multi-layer perceptrons and LSTMs shows that Transformers are effective for load forecasting when they are trained with the global training strategy.

Topics & Concepts

Computer scienceUnivariateTransformerSmart gridGridTraining (meteorology)Smart meterMultivariate statisticsPerceptronMachine learningOperations researchVoltageArtificial neural networkEngineeringMathematicsPhysicsElectrical engineeringGeometryMeteorologyEnergy Load and Power ForecastingSolar Radiation and PhotovoltaicsGrey System Theory Applications
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