A market-rule-informed neural network for imbalance electricity price forecasting matches generic deep learning accuracy while using substantially fewer parameters and less training time.
Short-term forecasting of electricity spot prices containing random spikes using a time-varying autoregressive model combined with kernel regression
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A Market-Rule-Informed Neural Network for Efficient Imbalance Electricity Price Forecasting
A market-rule-informed neural network for imbalance electricity price forecasting matches generic deep learning accuracy while using substantially fewer parameters and less training time.
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