Skip to content

Latest commit

 

History

History
12 lines (8 loc) · 1.52 KB

File metadata and controls

12 lines (8 loc) · 1.52 KB

Bridging-ESM-with-an-ensemble-deep-learning-approach-for-EPF

Input data and source code for the paper "Bridging an energy system model with an ensemble deep-learning approach for electricity price forecasting"

Souhir Ben Amor, Thomas Möbius, Felix Müsgens (2024). in review.

This paper combines a techno-economic energy system model with an econometric model to maximise electricity price forecasting accuracy. The proposed combination model is tested on the German day-ahead wholesale electricity market. Our paper also benchmarks the results against several econometric alternatives. Lastly, we demonstrate the economic value of improved price estimators maximising the revenue from an electric storage resource. The results demonstrate that our integrated model improves overall forecasting accuracy by 18%, compared to available literature benchmarks. Furthermore, our robustness checks reveal that a) the Ensemble Deep Neural Network model performs best in our dataset and b) adding output from the techno-economic energy systems model as econometric model input improves the performance of all econometric models. The empirical relevance of the forecast improvement is confirmed by the results of the exemplary storage optimisation, in which the integration of the techno-economic energy system model leads to a revenue increase of up to 10%.

The code reproduces the the storage dispatch application

Note that model output files are not uploaded to github due to limits on individual file size and on repository size in general.