Adaptive collective routing using gaussian process dynamic congestion models

Siyuan Liu, Yisong Yue, R. Krishnan
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引用次数: 47

Abstract

We consider the problem of adaptively routing a fleet of cooperative vehicles within a road network in the presence of uncertain and dynamic congestion conditions. To tackle this problem, we first propose a Gaussian Process Dynamic Congestion Model that can effectively characterize both the dynamics and the uncertainty of congestion conditions. Our model is efficient and thus facilitates real-time adaptive routing in the face of uncertainty. Using this congestion model, we develop an efficient algorithm for non-myopic adaptive routing to minimize the collective travel time of all vehicles in the system. A key property of our approach is the ability to efficiently reason about the long-term value of exploration, which enables collectively balancing the exploration/exploitation trade-off for entire fleets of vehicles. We validate our approach based on traffic data from two large Asian cities. We show that our congestion model is effective in modeling dynamic congestion conditions. We also show that our routing algorithm generates significantly faster routes compared to standard baselines, and achieves near-optimal performance compared to an omniscient routing algorithm. We also present the results from a preliminary field study, which showcases the efficacy of our approach.
基于高斯过程动态拥塞模型的自适应集体路由
研究了存在不确定和动态拥堵条件下的道路网络中合作车队的自适应路由问题。为了解决这个问题,我们首先提出了一个高斯过程动态拥塞模型,该模型可以有效地表征拥塞条件的动态性和不确定性。我们的模型是有效的,因此可以在面对不确定性的情况下实现实时自适应路由。利用该拥塞模型,提出了一种有效的非近视眼自适应路径算法,使系统中所有车辆的总行驶时间最小。我们的方法的一个关键特性是能够有效地推断勘探的长期价值,这使得整个车队能够共同平衡勘探/开发之间的权衡。我们基于两个亚洲大城市的交通数据验证了我们的方法。我们的拥塞模型对动态拥塞条件的建模是有效的。我们还表明,与标准基线相比,我们的路由算法生成的路由明显更快,并且与全知路由算法相比,实现了近乎最佳的性能。我们还介绍了初步实地研究的结果,这表明了我们的方法的有效性。
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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