Salvato in:
Dettagli Bibliografici
Autori principali: Orfanoudakis, Stavros, Li, Ziyan, Yang, Ruixiao, Aristov, Nikolay, Vergara, Pedro P., Fan, Chuchu, Dugundji, Elenna
Natura: Preprint
Pubblicazione: 2026
Soggetti:
Accesso online:https://arxiv.org/abs/2604.26566
Tags: Aggiungi Tag
Nessun Tag, puoi essere il primo ad aggiungerne!!
_version_ 1866915967572901888
author Orfanoudakis, Stavros
Li, Ziyan
Yang, Ruixiao
Aristov, Nikolay
Vergara, Pedro P.
Fan, Chuchu
Dugundji, Elenna
author_facet Orfanoudakis, Stavros
Li, Ziyan
Yang, Ruixiao
Aristov, Nikolay
Vergara, Pedro P.
Fan, Chuchu
Dugundji, Elenna
contents 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. The problem, solved by Reinforcement Learning, is formulated as an event-driven semi-Markov decision process with shared charging resources, stochastic travel and energy requirements, and realistic nonlinear fast-charging behavior. To support learning in this setting, a graph-based representation of system state and feasible decisions is introduced, together with a rule-based action mask that restricts policies to operationally admissible actions; thus, improving training efficiency. Building on this formulation, an event-driven simulation environment is developed that supports both Reinforcement Learning and benchmarking against heuristic and mathematical programming baselines. Computational experiments across a range of fleet sizes show that the proposed learning-based algorithm consistently outperforms baselines and attains performance close to optimization benchmarks in many settings, while preserving high success rates under charging congestion and uncertainty.
format Preprint
id arxiv_https___arxiv_org_abs_2604_26566
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Learning to Route Electric Trucks Under Operational Uncertainty
Orfanoudakis, Stavros
Li, Ziyan
Yang, Ruixiao
Aristov, Nikolay
Vergara, Pedro P.
Fan, Chuchu
Dugundji, Elenna
Systems and Control
Machine Learning
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. The problem, solved by Reinforcement Learning, is formulated as an event-driven semi-Markov decision process with shared charging resources, stochastic travel and energy requirements, and realistic nonlinear fast-charging behavior. To support learning in this setting, a graph-based representation of system state and feasible decisions is introduced, together with a rule-based action mask that restricts policies to operationally admissible actions; thus, improving training efficiency. Building on this formulation, an event-driven simulation environment is developed that supports both Reinforcement Learning and benchmarking against heuristic and mathematical programming baselines. Computational experiments across a range of fleet sizes show that the proposed learning-based algorithm consistently outperforms baselines and attains performance close to optimization benchmarks in many settings, while preserving high success rates under charging congestion and uncertainty.
title Learning to Route Electric Trucks Under Operational Uncertainty
topic Systems and Control
Machine Learning
url https://arxiv.org/abs/2604.26566