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求解大规模随机请求的动态车辆路径问题

Solving large-scale dynamic vehicle routing problems with stochastic requests

European Journal of Operational Research · 2022
被引 63 · 同刊同年前 7%
ABS 4

中文导读

针对动态车辆路径问题,提出基于背包的线性模型来近似期望收益,并设计高效的在线调度策略,在真实路网的大规模实例上验证了有效性。

Abstract

Dynamic vehicle routing problems (DVRPs) arise in several applications such as technician routing, meal delivery, and parcel shipping. We consider the DVRP with stochastic customer requests (DVRPSR), in which vehicles must be routed dynamically with the goal of maximizing the number of served requests. We model the DVRPSR as a multi-stage optimization problem, where the first-stage decision defines route plans for serving scheduled requests. Our main contributions are knapsack-based linear models to approximate accurately the expected reward-to-go, measured as the number of accepted requests, at any state of the stochastic system. These approximations are based on representing each vehicle as a knapsack with a capacity given by the remaining service time available along the vehicle’s route. We combine these approximations with optimal acceptance and assignment decision rules and derive efficient and high-performing online scheduling policies. We further leverage good predictions of the expected reward-to-go to design initial route plans that facilitate serving dynamic requests. Computational experiments on very large instances based on a real street network demonstrate the effectiveness of the proposed methods in prescribing high-quality offline route plans and online scheduling decisions.

运筹学数学优化车辆路径问题人工智能