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Energy Forecasting with Transformers, NeuralProphet, and Gradient Boosting

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Energy Forecasting Project

This project involves two forecasting problems.

  • Hourly energy demand forecasting
  • Hourly wind power plant production forecasting

iTransformer, NeuralProphet, XGBoost and LightGBM models are implemented for next 1-hour and 24-hour forecasting.

The objective is providing forecasting for test.csv datasets which comprise only data of exogenous variables for a long horizon and do not include the time series of target variables.

Tested with Python 3.9.13 environment installed with pip.

Note

The datasets train.csv and test.csv in data/electricity_demand/ and data/wind_plant/ folders are private; therefore, they haven't been uploaded.

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Energy Forecasting with Transformers, NeuralProphet, and Gradient Boosting

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