An agent-based simulation modeling framework for Mobility-as-a-Service (MaaS)

IF 2.4 Q3 TRANSPORTATION
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Abstract

This study develops an agent-based intelligent Mobility-as-a-Service (MaaS) simulation model consisting of three types of agents (i.e., MaaS fleet unit, travelers, and central intelligent mobility assignment module) to assess mobility service assignment processes balancing conflicting entities (e.g., demand and supply) within the MaaS ecosystem. The study follows a two-level optimization method (i.e., lower, and upper levels). It employs artificial intelligence and multicriteria decision making to solve two-dimensional mobility assignment problems (demand vs. supply). The novelty of this assignment process is that it implements an intelligence module accounting for the past system performance to make a future assignment decision in favor of both sides of the operation. This study processes 24-hour trip requests extracted from Nova Scotia Travel Activity (NovaTRAC) survey data in real-time. Two scenarios (1-D and 2-D assignments) are compared using the cost criteria, such as total waiting time, empty time, and idle time. The 1-D scenario refers to mobility assignment that emphasizes the demand side only, and the 2-D scenario formulates mobility assignment by balancing the demand and supply sides of the MaaS ecosystem. Experimental results indicate that a MaaS fleet of 350 units is the most balanced fleet in both scenarios. However, the 2-D optimization method reduces the overall supply cost by 25%. Moreover, 2-D operation demonstrates a higher fleet utilization over a considerable period, whereas the 1-D design guarantees a higher fleet utilization only during the peak period. Results of this study provide us with a benchmark for assessing more complex MaaS operation scenarios which will further aid in advancing the operational MaaS ecosystem. Our findings can help policymakers implement cost-effective MaaS solutions supporting sustainable urban mobility and SDG 13: Climate Action.
基于代理的移动即服务(MaaS)模拟建模框架
本研究开发了一种基于代理的智能移动即服务(MaaS)仿真模型,该模型由三类代理(即 MaaS 车队、旅行者和中央智能移动分配模块)组成,用于评估移动服务分配过程,以平衡 MaaS 生态系统中相互冲突的实体(如需求和供给)。本研究采用两级优化方法(即下级和上级)。它采用人工智能和多标准决策来解决二维移动分配问题(需求与供给)。该分配流程的新颖之处在于,它实施了一个智能模块,考虑到过去的系统性能,做出有利于运营双方的未来分配决策。本研究实时处理从新斯科舍省出行活动(NovaTRAC)调查数据中提取的 24 小时出行请求。使用总等待时间、空车时间和空闲时间等成本标准对两种方案(1-D 和 2-D 分配)进行了比较。1-D 方案指的是只强调需求方的移动分配,而 2-D 方案则通过平衡 MaaS 生态系统的需求方和供应方来制定移动分配。实验结果表明,由 350 个单位组成的 MaaS 车队是两种方案中最平衡的车队。然而,二维优化方法将总体供应成本降低了 25%。此外,2-D 运行在相当长的时间内都能提高车队的利用率,而 1-D 设计只能保证在高峰期提高车队的利用率。这项研究的结果为我们提供了评估更复杂的 MaaS 运营场景的基准,这将进一步帮助推进可运营的 MaaS 生态系统。我们的研究结果可以帮助决策者实施具有成本效益的 MaaS 解决方案,支持可持续城市交通和可持续发展目标 13:气候行动。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
5.00
自引率
12.00%
发文量
222
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