论文标题
共享自动驾驶汽车的最佳停车计划
Optimal Parking Planning for Shared Autonomous Vehicles
论文作者
论文摘要
停车是城市交通系统中驾驶体验的关键要素。尤其是在即将到来的共享自动驾驶汽车(SAV)时代,城市交通网络中的停车运营将不可避免地发生变化。停车场将作为控制SAV服务水平的未使用车辆和仓库的储藏室。这项研究为SAV环境提供了一种分析停车计划模型(APPM),以提供对停车计划决策的更广泛见解。 APPM考虑了两种特定的计划方案:(i)单区APPM(S-APPM),将目标区域视为单个同质区域,以及(ii)两区APPM(T-APPM),该区域将目标区域视为两个不同的区域,例如两个不同的区域,例如市中心和郊区。 S-APPM提供了一种封闭式解决方案,以找到停车站和停车位的最佳密度以及最佳的SAV机队数量,这有助于理解规划决策与给定环境之间的明确关系,包括需求密度和成本因素。此外,为了在两个区域纳入不同的宏观特征,T-APPM占区域间和区域乘客旅行以及车辆的搬迁。我们进行了一项案例研究,以证明在韩国首尔大都市地区收集的实际数据所提出的方法。对成本因素进行敏感性分析,以为决策者提供进一步的见解。此外,我们发现目标区域中停车站和空间的最佳密度远低于当前情况。
Parking is a crucial element of the driving experience in urban transportation systems. Especially in the coming era of Shared Autonomous Vehicles (SAVs), parking operations in urban transportation networks will inevitably change. Parking stations will serve as storage places for unused vehicles and depots that control the level-of-service of SAVs. This study presents an Analytical Parking Planning Model (APPM) for the SAV environment to provide broader insights into parking planning decisions. Two specific planning scenarios are considered for the APPM: (i) Single-zone APPM (S-APPM), which considers the target area as a single homogeneous zone, and (ii) Two-zone APPM (T-APPM), which considers the target area as two different zones, such as city center and suburban area. S-APPM offers a closed-form solution to find the optimal density of parking stations and parking spaces and the optimal number of SAV fleets, which is beneficial for understanding the explicit relationship between planning decisions and the given environments, including demand density and cost factors. In addition, to incorporate different macroscopic characteristics across two zones, T-APPM accounts for inter- and intra-zonal passenger trips and the relocation of vehicles. We conduct a case study to demonstrate the proposed method with the actual data collected in Seoul Metropolitan Area, South Korea. Sensitivity analyses with respect to cost factors are performed to provide decision-makers with further insights. Also, we find that the optimal densities of parking stations and spaces in the target area are much lower than the current situations.