Amara-Ouali, Yvenn
Conformal Prediction for Hierarchical Data
Principato, Guillaume, Amara-Ouali, Yvenn, Goude, Yannig, Hamrouche, Bachir, Poggi, Jean-Michel, Stoltz, Gilles
Reconciliation has become an essential tool in multivariate point forecasting for hierarchical time series. However, there is still a lack of understanding of the theoretical properties of probabilistic Forecast Reconciliation techniques. Meanwhile, Conformal Prediction is a general framework with growing appeal that provides prediction sets with probabilistic guarantees in finite sample. In this paper, we propose a first step towards combining Conformal Prediction and Forecast Reconciliation by analyzing how including a reconciliation step in the Split Conformal Prediction (SCP) procedure enhances the resulting prediction sets. In particular, we show that the validity granted by SCP remains while improving the efficiency of the prediction sets. We also advocate a variation of the theoretical procedure for practical use. Finally, we illustrate these results with simulations.
Forecasting Electric Vehicle Charging Station Occupancy: Smarter Mobility Data Challenge
Amara-Ouali, Yvenn, Goude, Yannig, Doumèche, Nathan, Veyret, Pascal, Thomas, Alexis, Hebenstreit, Daniel, Wedenig, Thomas, Satouf, Arthur, Jan, Aymeric, Deleuze, Yannick, Berhaut, Paul, Treguer, Sébastien, Phe-Neau, Tiphaine
The transport sector is a major contributor to greenhouse gas emissions in Europe. Shifting to electric vehicles (EVs) powered by a low-carbon energy mix would reduce carbon emissions. However, to support the development of electric mobility, a better understanding of EV charging behaviours and more accurate forecasting models are needed. To fill that gap, the Smarter Mobility Data Challenge has focused on the development of forecasting models to predict EV charging station occupancy. This challenge involved analysing a dataset of 91 charging stations across four geographical areas over seven months in 2020-2021. The forecasts were evaluated at three levels of aggregation (individual stations, areas and global) to capture the inherent hierarchical structure of the data. The results highlight the potential of hierarchical forecasting approaches to accurately predict EV charging station occupancy, providing valuable insights for energy providers and EV users alike. This open dataset addresses many real-world challenges associated with time series, such as missing values, non-stationarity and spatio-temporal correlations.