Model Predictive Control Strategies for Electric Endurance Race Cars Accounting for Competitors Interactions

Jorn van Kampen, Mauro Moriggi, Francesco Braghin, Mauro Salazar

Research output: Working paperPreprintAcademic

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Abstract

This paper presents model predictive control strategies for battery electric endurance race cars accounting for interactions with the competitors. In particular, we devise an optimization framework capturing the impact of the actions of the ego vehicle when interacting with competitors in a probabilistic fashion, jointly accounting for the optimal pit stop decision making, the charge times and the driving style in the course of the race. We showcase our method for a simulated 1h endurance race at the Zandvoort circuit, using real-life data of internal combustion engine race cars from a previous event. Our results show that optimizing both the race strategy as well as the decision making during the race is very important, resulting in a significant 21s advantage over an always overtake approach, whilst revealing the competitiveness of e-race cars w.r.t. conventional ones.
Original languageEnglish
PublisherarXiv.org
Number of pages6
Volume2403.06885
DOIs
Publication statusPublished - 11 Mar 2024

Bibliographical note

Submitted to L-CSS 2024

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