具有不确定协变量的鲁棒车辆预分配

Z. Hao, Long He, Zhenyu Hu, Jun Jiang
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引用次数: 0

摘要

受新加坡一家领先出租车运营商的启发,我们考虑了具有不确定需求和其他不确定协变量信息(如天气)的闲置车辆预分配问题。在该问题中,运营商通过观察其闲置车辆的分布情况,主动分配闲置车辆以满足未来不确定的需求。在需求分布信息完备的情况下,该问题可表示为随机运输问题。然而,需求的非平稳性和空间相关性给从历史数据中准确估计其分布带来了重大挑战。我们采用了一种新颖的分布鲁棒优化方法,该方法可以利用协变量信息以及需求的时刻信息来构建场景模糊集。我们进一步说明了如何通过多元回归树来估计新的模糊集所需的关键参数,例如场景及其概率。虽然不确定协变量的信息在有需求分布的完美知识时没有价值,但我们证明了它可以减轻鲁棒解的过度保守性。利用线性决策规则技术可以精确、可跟踪地求解得到的分布鲁棒优化问题。我们通过广泛的数值模拟进一步验证了我们的解决方案的性能,并使用了我们合作伙伴出租车运营商的行程和车辆状态数据以及新加坡气象局的降雨数据进行了案例研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust Vehicle Pre-Allocation with Uncertain Covariates
Motivated by a leading taxi operator in Singapore, we consider the idle vehicle pre-allocation problem with uncertain demands and other uncertain covariate information such as weather. In this problem, the operator, upon observing its distribution of idle vehicles, proactively allocates the idle vehicles to serve future uncertain demands. With perfect information of demand distribution, the problem can be formulated as a stochastic transportation problem. Yet, the non-stationarity and spatial correlation of demands pose significant challenges in estimating its distribution accurately from historical data. We employ a novel distributionally robust optimization approach that can utilize covariate information as well as the moment information of demand to construct a scenario-wise ambiguity set. We further illustrate how the key parameters required by the new ambiguity set, such as the scenarios and their probabilities, can be estimated via multivariate regression tree. Although information about uncertain covariates provides no value when there is perfect knowledge of demand distribution, we show that it could alleviate the over-conservativeness of the robust solution. The resulting distributionally robust optimization problem can be exactly and tractably solved using linear decision rule technique. We further validate the performance of our solution via extensive numerical simulations, and a case study using trip and vehicle status data from our partner taxi operator, paired with the rainfall data from the Meteorological Service Singapore.
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