A Probabilistic Approach for Demand-Aware Ride-Sharing Optimization

Qiulin Lin, Wenjie Xu, Minghua Chen, Xiaojun Lin
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引用次数: 9

Abstract

Ride-sharing is a modern urban-mobility paradigm with tremendous potential in reducing congestion and pollution. Demand-aware design is a promising avenue for addressing a critical challenge in ridesharing systems, namely joint optimization of request-vehicle assignment and routing for a fleet of vehicles. In this paper, we develop a probabilistic demand-aware framework to tackle the challenge. We focus on maximizing the expected number of passenger pickups, given the probability distributions of future demands. The key idea of our approach is to assign requests to vehicles in a probabilistic manner. It differentiates our work from existing ones and allows us to explore a richer design space to tackle the request-vehicle assignment puzzle with a performance guarantee but still keeping the final solution practically implementable. The optimization problem is non-convex, combinatorial, and NP-hard in nature. As a key contribution, we explore the problem structure and propose an elegant approximation of the objective function to develop a dual-subgradient heuristic. We characterize a condition under which the heuristic generates a (1 -- 1/e) approximation solution. Our solution is simple and scalable, amendable for practical implementation. Results of numerical experiments based on real-world traces in Manhattan show that, as compared to a conventional demand-oblivious scheme, our demand-aware solution improves the passenger pickups by up to 46%. The results also show that joint optimization at the fleet level leads to 19% more pickups than that by separate optimizations at individual vehicles.
需求感知型拼车优化的概率方法
拼车是一种现代城市交通模式,在减少拥堵和污染方面具有巨大潜力。需求感知设计是解决拼车系统中一个关键挑战的有前途的途径,即联合优化请求车辆分配和车队路线。在本文中,我们开发了一个概率需求感知框架来应对这一挑战。我们关注的是在给定未来需求的概率分布的情况下,最大限度地提高预期的载客数量。我们方法的关键思想是以概率的方式将请求分配给车辆。它将我们的工作与现有的工作区分开来,并允许我们探索更丰富的设计空间,以解决请求-车辆分配难题,同时保证性能,但仍保持最终解决方案的实际可实现性。优化问题是非凸的,组合的,本质上是np困难的。作为一个关键的贡献,我们探索了问题的结构,并提出了一个优雅的近似目标函数,以发展一个双次梯度启发式。我们描述了启发式生成(1—1/e)近似解的条件。我们的解决方案简单且可扩展,可用于实际实现。基于曼哈顿真实世界轨迹的数值实验结果表明,与传统的需求无关方案相比,我们的需求感知解决方案将乘客接客率提高了46%。结果还表明,车队层面的联合优化比单个车辆层面的单独优化多出19%的拾取量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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