论文标题

FELETPY:一种用于移动性运输服务的模块化开源模拟工具

FleetPy: A Modular Open-Source Simulation Tool for Mobility On-Demand Services

论文作者

Engelhardt, Roman, Dandl, Florian, Syed, Arslan-Ali, Zhang, Yunfei, Fehn, Fabian, Wolf, Fynn, Bogenberger, Klaus

论文摘要

近年来,运输(MOD)服务的市场份额大大增加,并且一旦车辆自动化充分利用,预计将上升甚至更高。这些服务可能会减少城市的空间消耗,因为如果更换私人车辆旅行,则需要更少的停车位。如果乘车额外共享,则相关的交通效率会提高。模拟有助于确定MOD对交通系统的实际影响,评估新的控制算法以提高服务效率,并制定监管措施的指南。本文介绍了基于开源代理的仿真框架。 Fleetpy(用编程语言编写的“ Python”)明确开发了以高度详细的方式建模MOD服务。它特别关注用户与运营商的交互建模,而其灵活性则可以集成和嵌入多个操作员在整个运输系统中。其模块化结构可确保先前开发的元素的转移和选择适当的建模细节。本文比较了Mod服务的现有模拟框架,并突出了Fleetpy的独家功能。提出了上层仿真流,然后是模拟所需的输入数据,而输出数据舰队产生。此外,还提供了当前实现的车队和高级描述中的模块。最后,纽约市曼哈顿的一个示例展示柜提供了对不同模块对模拟流,车队优化,旅行者行为和网络表示的影响的见解。

The market share of mobility on-demand (MoD) services strongly increased in recent years and is expected to rise even higher once vehicle automation is fully available. These services might reduce space consumption in cities as fewer parking spaces are required if private vehicle trips are replaced. If rides are shared additionally, occupancy related traffic efficiency is increased. Simulations help to identify the actual impact of MoD on a traffic system, evaluate new control algorithms for improved service efficiency and develop guidelines for regulatory measures. This paper presents the open-source agent-based simulation framework FleetPy. FleetPy (written in the programming language "Python") is explicitly developed to model MoD services in a high level of detail. It specially focuses on the modeling of interactions of users with operators while its flexibility allows the integration and embedding of multiple operators in the overall transportation system. Its modular structure ensures the transferabillity of previously developed elements and the selection of an appropriate level of modeling detail. This paper compares existing simulation frameworks for MoD services and highlights exclusive features of FleetPy. The upper level simulation flows are presented, followed by required input data for the simulation and the output data FleetPy produces. Additionally, the modules within FleetPy and high-level descriptions of current implementations are provided. Finally, an example showcase for Manhattan, NYC provides insights into the impacts of different modules for simulation flow, fleet optimization, traveler behavior and network representation.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源