LGAIMay 20, 2022

A Hybrid Model for Forecasting Short-Term Electricity Demand

arXiv:2205.10449v15 citationsh-index: 17
Originality Incremental advance
AI Analysis

This work addresses forecasting accuracy for the UK electricity market, representing an incremental improvement over existing methods.

The paper tackled short-term electricity demand forecasting in the UK by developing HYENA, a hybrid model that reduced MAPE loss by 16% and RMSE loss by 10% compared to the best benchmark.

Currently the UK Electric market is guided by load (demand) forecasts published every thirty minutes by the regulator. A key factor in predicting demand is weather conditions, with forecasts published every hour. We present HYENA: a hybrid predictive model that combines feature engineering (selection of the candidate predictor features), mobile-window predictors and finally LSTM encoder-decoders to achieve higher accuracy with respect to mainstream models from the literature. HYENA decreased MAPE loss by 16\% and RMSE loss by 10\% over the best available benchmark model, thus establishing a new state of the art for the UK electric load (and price) forecasting.

Foundations

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