使用大数据和基于Agent的建模量化MyCiTi的供应使用

IF 0.4 4区 工程技术 Q4 ENGINEERING, CIVIL Journal of the South African Institution of Civil Engineering Pub Date : 2022-09-14 DOI:10.17159/2309-8775/2022/v64n3a4
D. Willenberg, M. Zuidgeest, E. Beukes
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引用次数: 0

摘要

开普敦的快速公交系统MyCiTi使用自动售检票系统,该系统每天生成大量交易数据。这些数据可以被视为大数据。然而,原始格式的AFC数据无法支持供需分析(例如,研究公交车占用率)。基于代理的建模(ABM)可用于分析此类数据。本文讨论了基于MATSim的ABM的开发和校准,以分析开普敦快速公交系统的AFC数据。研究表明,数据格式化算法在为建模活动准备数据方面至关重要。此外,适当的ABM校准参数的开发需要在适当的数据收集、模拟测试和论证方面进行仔细考虑,这些都进行了讨论。论文进一步表明,校准后的ABM可以产生输出,如公交车车载量、系统需求概述,甚至个人通勤路径选择行为。最后,验证工作表明,为本研究开发的模型能够很好地估计车载公交流量(R2=0.85)。然而,建议通过模拟对代理路径选择进行进一步研究。
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Quantifying MyCiTi supply usage using Big Data and Agent-Based Modelling
Cape Town's Bus Rapid Transit (BRT) system, MyCiTi, uses an Automated Fare Collection (AFC) system that generates large volumes of transactional data on a daily basis. This data can be considered Big Data. The AFC data in its raw format, however, is incapable of supporting supply and demand analysis (e.g. studying bus occupancy rates). Agent-Based Modelling (ABM) can be used to analyse such data for that purpose. This paper discusses the development and calibration of a MATSim-based ABM to analyse AFC data for Cape Town's BRT system. It is shown that data-formatting algorithms are critical in the preparation of data for modelling activities. Furthermore, the development of appropriate ABM calibration parameters requires careful consideration in terms of appropriate data collection, simulation testing, and justification, which are discussed. The paper furthermore shows that the calibrated ABM can generate outputs such as bus on-board volumes, a system-demand overview, and even individual commuter path choice behaviour. Finally, a validation exercise shows that the model developed for this study is able to provide good estimates of on-board bus volumes (R2 = 0.85). It is, however, recommended that further research be conducted into studying agent path choices through simulation.
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来源期刊
CiteScore
0.70
自引率
25.00%
发文量
19
审稿时长
>12 weeks
期刊介绍: The Journal of the South African Institution of Civil Engineering publishes peer reviewed papers on all aspects of Civil Engineering relevant to Africa. It is an open access, ISI accredited journal, providing authoritative information not only on current developments, but also – through its back issues – giving access to data on established practices and the construction of existing infrastructure. It is published quarterly and is controlled by a Journal Editorial Panel. The forerunner of the South African Institution of Civil Engineering was established in 1903 as a learned society aiming to develop technology and to share knowledge for the development of the day. The minutes of the proceedings of the then Cape Society of Civil Engineers mainly contained technical papers presented at the Society''s meetings. Since then, and throughout its long history, during which time it has undergone several name changes, the organisation has continued to publish technical papers in its monthly publication (magazine), until 1993 when it created a separate journal for the publication of technical papers.
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