In this paper we assess how intra-day electricity prices can improve the prediction of zonal day-ahead wholesale electricity prices in Italy. We consider linear autoregressive models with exogenous variables (ARX) with and without interactions among predictors, and non-parametric models taken from the machine learning literature. In particular, we implement Random Forests and support vector machines, which should automatically capture the relevant interactions among predictors. Given the large number of predictors, ARX models are also estimated using LASSO regularization, which improves predictions when regressors are many and selects the important variables. In addition to zonal intra-day prices, among the predictors we include also the official demand forecasts and wind generation expectations. Our results show that the prediction performance of the simple ARX model is mostly superior to those of machine learning models. The analysis of the relevance of exogenous variables, using variable importance measures, reveals that intra-day market information successfully contributes to the forecasting performance, although the impact differs among the estimated models.

Golia, S., Grossi, L., Pelagatti, M. (2023). Machine Learning Models and Intra-Daily Market Information for the Prediction of Italian Electricity Prices. FORECASTING, 5(1), 81-101 [10.3390/forecast5010003].

Machine Learning Models and Intra-Daily Market Information for the Prediction of Italian Electricity Prices

Matteo Pelagatti
2023

Abstract

In this paper we assess how intra-day electricity prices can improve the prediction of zonal day-ahead wholesale electricity prices in Italy. We consider linear autoregressive models with exogenous variables (ARX) with and without interactions among predictors, and non-parametric models taken from the machine learning literature. In particular, we implement Random Forests and support vector machines, which should automatically capture the relevant interactions among predictors. Given the large number of predictors, ARX models are also estimated using LASSO regularization, which improves predictions when regressors are many and selects the important variables. In addition to zonal intra-day prices, among the predictors we include also the official demand forecasts and wind generation expectations. Our results show that the prediction performance of the simple ARX model is mostly superior to those of machine learning models. The analysis of the relevance of exogenous variables, using variable importance measures, reveals that intra-day market information successfully contributes to the forecasting performance, although the impact differs among the estimated models.
Articolo in rivista - Articolo scientifico
electricity spot prices; forecasting; intra-day electricity prices; random forests; support vector machines; variable importance;
English
30-dic-2022
2023
5
1
81
101
none
Golia, S., Grossi, L., Pelagatti, M. (2023). Machine Learning Models and Intra-Daily Market Information for the Prediction of Italian Electricity Prices. FORECASTING, 5(1), 81-101 [10.3390/forecast5010003].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/416777
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