Parking Pricing and Design in the Morning Commute Problem with Regular and Autonomous Vehicles

M. Nourinejad, Mahyar Amirgholy
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引用次数: 9

Abstract

Autonomous vehicles can profoundly change parking behavior in the future. Instead of searching for parking, autonomous vehicle owners get dropped off at their final destination and send their occupant-free cars to a parking spot. In this paper, we study the impact of parking in a bi-class morning commute problem with autonomous and regular vehicles. We consider a spatial distribution of parking spaces, which allows us to capture the parking location of travelers. In the equilibrium condition, autonomous vehicles leave home later (than regular vehicles), and park farther away from their destination. The regular vehicle travelers, however, leave home sooner to park closer to the destination with a smaller walking distance. The reverse occurs if regular travelers abdicate walking and take a faster mode from their parking space to the city center. To optimize the system, we develop temporal and spatial parking pricing strategies and a new parking supply design scheme, as practical alternatives for the conventional dynamic congestion pricing. The proposed parking pricing strategies incentivize commuters to adjust their travel schedules by charging a parking price that increases with distance from the city center. Hence, those who park closer to their destination have to pay less. This is a counter-intuitive finding at first which arises from a trade-off with the earliness penalty of users who park close to the destination. We show that system optimality is also reached by redistributing the parking supply. Our numerical experiments capture the impact the autonomous vehicle penetration rate on the performance of the system and the proposed parking pricing and design strategies.
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普通车辆和自动驾驶车辆早晨通勤问题中的停车定价和设计
自动驾驶汽车将在未来深刻地改变停车行为。自动驾驶汽车的车主无需寻找停车位,而是在最终目的地下车,并将无人驾驶汽车停放在停车位上。在本文中,我们研究了自动驾驶和常规车辆的双类早晨通勤问题中停车的影响。我们考虑停车位的空间分布,这使我们能够捕捉到旅行者的停车位置。在均衡条件下,自动驾驶车辆离家较晚(比普通车辆),并且停车距离目的地较远。然而,经常驾车出行的人会更早离开家,把车停在离目的地更近的地方,步行距离更短。如果经常出行的人放弃步行,从停车场到市中心采取更快的方式,情况就会相反。为了优化系统,我们开发了时空停车收费策略和新的停车供应设计方案,作为传统动态拥堵收费的实用替代方案。拟议的停车定价策略通过收取与市中心距离增加的停车价格来激励通勤者调整他们的出行计划。因此,那些把车停在离目的地更近的地方的人必须支付更少的钱。乍一看,这是一个违反直觉的发现,它源于对在目的地附近停车的用户的提前处罚的权衡。我们表明,通过重新分配停车供应也可以达到系统的最优性。我们的数值实验捕捉了自动驾驶车辆渗透率对系统性能的影响,以及提出的停车定价和设计策略。
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