TRIPS体系结构
补贴
激励
计算机科学
交通拥挤
运输工程
公共交通
流量网络
拥挤收费
激励计划
预算约束
运筹学
经济
微观经济学
数学优化
工程类
数学
市场经济
作者
Amirmahdi Tafreshian,Neda Masoud
出处
期刊:Transportation Science
[Institute for Operations Research and the Management Sciences]
日期:2022-01-21
卷期号:56 (4): 827-847
被引量:9
标识
DOI:10.1287/trsc.2021.1121
摘要
Traffic congestion has become a serious issue around the globe, partly owing to single-occupancy commuter trips. Ridesharing can present a suitable alternative for serving commuter trips. However, there are several important obstacles that impede ridesharing systems from becoming a viable mode of transportation, including the lack of a guarantee for a ride back home as well as the difficulty of obtaining a critical mass of participants. This paper addresses these obstacles by introducing a traveler incentive program (TIP) to promote community-based ridesharing with a ride back home guarantee among commuters. The TIP program allocates incentives to (1) directly subsidize a select set of ridesharing rides and (2) encourage a small, carefully selected set of travelers to change their travel behavior (i.e., departure or arrival times). We formulate the underlying ride-matching problem as a budget-constrained min-cost flow problem and present a Lagrangian relaxation-based algorithm with a worst-case optimality bound to solve large-scale instances of this problem in polynomial time. We further propose a polynomial-time, budget-balanced version of the problem. Numerical experiments suggest that allocating subsidies to change travel behavior is significantly more beneficial than directly subsidizing rides. Furthermore, using a flat tax rate as low as 1% can double the system’s social welfare in the budget-balanced variant of the incentive program.
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