论文标题
使用新型基于代理的建模框架来识别关键的车队尺寸,以自动乘坐乘车
Identifying Critical Fleet Sizes Using a Novel Agent-Based Modelling Framework for Autonomous Ride-Sourcing
论文作者
论文摘要
乘车平台通过解决与客户匹配,定价和车辆路线相关的决策问题来实现按需共享运输服务。这些问题经常使用汇总数学模型来表示,并通过研究人员设计的算法方法解决。乘车环境的复杂性日益复杂,损害了汇总方法的准确性。因此,它标志着需要替代实践的需求,例如基于代理的模型,这些模型捕获了乘车系统中复杂动态的水平。使用这些基于代理的模型模拟乘车舰队一直是许多研究的重点。但是,这发生在没有规定的方法的情况下,就如何构建模型以现实地模仿车队运营。为了弥合这一研究差距,我们为建立基于定制的代理机器的车队的模型提供了一个框架,该模型源自基于代理的建模理论的基础知识。我们还引入了基于我们的框架构建模拟器所需的不同模块的模型构建顺序。为了展示我们的框架的实力,我们使用它来解决自动乘坐乘货运车队的最小车队尺寸估计的高度非线性问题。我们通过根据排队理论原理研究系统参数的关系,并通过得出和验证一个新型模型来进行拾取等待时间来做到这一点。通过对曼哈顿,旧金山,巴黎和巴塞罗那市区城市地区的乘车舰队功能进行建模,我们发现乘车货运舰队的队列在零任务时间以高于关键的车队规模。我们还表明,拾取等待时间在乘坐乘以乘车操作中最小车队大小的估计中具有关键作用,鉴于系统参数,基于代理的建模是其标识的更可靠的途径。
Ride-sourcing platforms enable an on-demand shared transport service by solving decision problems often related to customer matching, pricing and vehicle routing. These problems have been frequently represented using aggregated mathematical models and solved via algorithmic approaches designed by researchers. The increasing complexity of ride-sourcing environments compromises the accuracy of aggregated methods. It, therefore, signals the need for alternative practices such as agent-based models which capture the level of complex dynamics in ride-sourcing systems. The use of these agent-based models to simulate ride-sourcing fleets has been a focal point of many studies; however, this occurred in the absence of a prescribed approach on how to build the models to mimic fleet operations realistically. To bridge this research gap, we provide a framework for building bespoke agent-based models for ride-sourcing fleets, derived from the fundamentals of agent-based modelling theory. We also introduce a model building sequence of the different modules necessary to structure a simulator based on our framework. To showcase the strength of our framework, we use it to tackle the highly non-linear problem of minimum fleet size estimation for autonomous ride-sourcing fleets. We do so by investigating the relationship of system parameters based on queuing theory principles and by deriving and validating a novel model for pickup wait times. By modelling the ride-sourcing fleet function in the urban areas of Manhattan, San Francisco, Paris and Barcelona, we find that ride-sourcing fleets operate queues with zero assignment times above the critical fleet size. We also show that pickup wait times have a pivotal role in the estimation of the minimum fleet size in ride-sourcing operations, with agent-based modelling to be a more reliable route for their identification given the system parameters.