AI RESEARCH
Learning to Route Electric Trucks Under Operational Uncertainty
arXiv CS.LG
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ArXi:2604.26566v1 Announce Type: cross Electric truck operations require routing decisions that remain feasible under limited battery range, long charging times, travel and energy consumption, and competition for shared charging infrastructure. These features make electric truck routing a coupled logistics and energy problem, limiting the practicality of heuristics-based methods and rendering them computationally infeasible at scale. This paper proposes a learning-based framework for the stochastic electric truck routing under charging constraints and operational uncertainty.