Competitors-Aware Stochastic Lap Strategy Optimisation for Race Hybrid Vehicles
Francesco Braghin, Luca Paparusso, Manuel Riani, Fabio Ruggeri

TL;DR
This paper introduces a novel framework for optimizing hybrid race vehicle energy strategies by incorporating competitors' behavior through stochastic simulation, significantly reducing lap times in realistic racing scenarios.
Contribution
It presents a new multi-agent Monte Carlo simulation approach to account for competitors in energy management optimization for race vehicles.
Findings
Significant lap time reduction achieved in real race data.
Effective modeling of competitors' behavior improves strategy optimization.
Integration of stochastic simulation enhances real-world applicability.
Abstract
World Endurance Championship (WEC) racing events are characterised by a relevant performance gap among competitors. The fastest vehicles category, consisting in hybrid vehicles, has to respect energy usage constraints set by the technical regulation. Considering absence of competitors, i.e. traffic conditions, the optimal energy usage strategy for lap time minimisation is typically computed through a constrained optimisation problem. To the best of our knowledge, the majority of state-of-the-art works neglects competitors. This leads to a mismatch with the real world, where traffic generates considerable time losses. To bridge this gap, we propose a new framework to offline compute optimal strategies for the powertrain energy management considering competitors. Through analysis of the available data from previous events, statistics on the sector times and overtaking probabilities are…
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Taxonomy
TopicsVehicle emissions and performance · Electric and Hybrid Vehicle Technologies · Traffic control and management
