Gkiotsalitis Konstantinos, Liu Tao
Department of Civil Engineering, University of Twente, Enschede, Netherlands.
National Engineering Laboratory of Integrated Transportation Big Data Application Technology, School of Transportation and Logistics, Southwest Jiaotong University, Chengdu, China.
Transp Res Rec. 2023 Apr;2677(4):765-777. doi: 10.1177/03611981221114119. Epub 2022 Aug 25.
The COVID-19 pandemic has had serious adverse impacts on public transport service providers. Most public transport lines exhibit reduced ridership levels while, at the same time, some of them may exhibit passenger demand levels beyond the pandemic-imposed capacity limitations. This study models the problem of bus dispatching time optimization within a periodic rolling horizon optimization framework that reacts to travel time and passenger demand variations. This model allows public transport service providers to adjust their bus schedules periodically to avoid in-vehicle crowding beyond the pandemic-imposed capacity limit. The proposed model is a mixed-integer linear program that considers the possible changes to vehicle schedules and tries to minimize the number of vehicles required to perform the service while adhering to the COVID-19 capacity restrictions. Case study results from the implementation of our model on bus Line 2 in the Twente region in the Netherlands are provided demonstrating the potential gains when rescheduling the trip dispatching times and vehicle schedules.
新冠疫情对公共交通服务提供商产生了严重的不利影响。大多数公交线路的客流量有所下降,与此同时,其中一些线路的乘客需求水平可能超出了疫情所带来的运力限制。本研究在周期性滚动时域优化框架内对公交调度时间优化问题进行建模,该框架能够应对出行时间和乘客需求的变化。该模型使公共交通服务提供商能够定期调整公交时刻表,以避免车内拥挤超过疫情所带来的运力限制。所提出的模型是一个混合整数线性规划模型,它考虑了车辆时刻表的可能变化,并试图在遵守新冠疫情运力限制的同时,尽量减少提供服务所需的车辆数量。文中给出了我们的模型在荷兰特温特地区2号线公交上实施的案例研究结果,展示了重新安排出行调度时间和车辆时刻表时的潜在收益。