车队管理
稳健性(进化)
多项式logistic回归
数学优化
运筹学
收入
模棱两可
收益管理
计算机科学
稳健优化
调度(生产过程)
凸性
马尔可夫决策过程
二次方程
集合(抽象数据类型)
动态定价
样品(材料)
排队论
混合动力系统
随机规划
转运(资讯保安)
收益
线性规划
供求关系
计量经济学
凸优化
作者
Guowei Zhang,Ning Zhu,Ning Jia,Long Zhao,Qiao‐Chu He
标识
DOI:10.1177/10591478251386538
摘要
While mobility-as-a-service platforms have revolutionized urban transportation and fundamentally transformed travelers’ experience and engagement, they encounter a significant challenge in maintaining a temporal and spatial balance between supply and demand, particularly with the inclusion of crowd-sourced freelance drivers. In this study, we propose a hybrid supply-side management problem that accounts for heterogeneous revenue dependent on surge pricing, where surge pricing not only determines per-trip earnings but also influences demand elasticity and overall revenue generation. This problem combines the physical repositioning of in-house vehicles with an incentive-driven approach for freelance vehicles. A multinomial logit model is employed to model the repositioning behavior of crowd-sourced drivers, and reformulated as a low-level equilibrium problem embedded in a bi-level program. To characterize the surge price-dependent uncertain demand, a tailored residual-based Wasserstein ambiguity set is constructed. Notably, the proposed residual-based Wasserstein DRO model is demonstrated to satisfy both finite sample guarantee and asymptotic optimality. A linear decision rule approximation facilitates a tractable reformulation, and it is shown to incur no loss of optimality for the single-period case. We validate the practical applicability of our model using a dataset from RideAustin. We find that the hybrid fleet approach gets the best of both worlds by increasing average revenue using crowd-sourced vehicles and enhancing system robustness using in-house vehicles. Interestingly, we show that a “sweet-spot” may exist as an optimal ratio between the number of in-house and crowd-sourced vehicles that maximizes the overall revenue.
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