Daily Electricity Load Forecasting predicts the next day’s power demand using historical data, weather patterns, and consumption trends. It helps utilities optimize energy generation, reduce costs, and ensure grid reliability. Accurate forecasting supports load balancing, demand response, and renewable energy integration, improving overall energy efficiency and stability.

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Energy Predictive Models with Limited Data using Transfer Learning

In this paper, we consider the problem of developing predictive models with limited data for energy assets such as electricity loads, PV power generations, etc. We specifically investigate the cases where the amount of historical data is not sufficient to effectively train the prediction model. We first develop an energy predictive model based on convolutional neural network (CNN) which is well suited to capture the interaday, daily, and weekly cyclostationary patterns, trends and seasonalities in energy assets time series. A transfer learning strategy is then proposed to address the challenge of limited training data. We demonstrate our approach on a usecase of daily electricity demand forecasting. we show practicing the transfer learning strategy on the CNN model results in significant improvement to existing forecasting methods.