Yumin Cao , Hans van Lint , Panchamy Krishnakumari , Michiel Bliemer
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Although including path choice increases the dimensionality of the problem, it also dramatically improves the quality of the data one can <em>directly</em> use to solve it (e.g. measured path travel times versus coarse centroid-to-centroid travel times); and opens up possibilities to combine different assimilation techniques in a single framework: (1) fast shortest path set computation using static (e.g. road type) and dynamic (speed, travel time) link properties; (2) predicting a “prior OD matrix” using the resulting path-shares and (estimated or measured) production and attraction totals; and (3) scaling/constraining this prior using link flows (informative of demand). If the resulting system of equations has insufficient rank, we use principal component analysis to reduce the dimensionality, solve this reduced problem, and transform that solution back to a full OD matrix. Comprehensive tests and sensitivity analysis on 7 networks with different sizes and characteristics give an empirical underpinning of the extended equivalence principle; demonstrate good accuracy and reliability of the OD estimation method overall; and suggest that the method is robust with respect to major assumptions and contributing factors.</div></div>","PeriodicalId":54417,"journal":{"name":"Transportation Research Part C-Emerging Technologies","volume":"168 ","pages":"Article 104850"},"PeriodicalIF":7.6000,"publicationDate":"2024-11-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Data driven origin–destination matrix estimation on large networks—A joint origin–destination-path-choice formulation\",\"authors\":\"Yumin Cao , Hans van Lint , Panchamy Krishnakumari , Michiel Bliemer\",\"doi\":\"10.1016/j.trc.2024.104850\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<div><div>This paper presents a novel approach to data-driven time-dependent origin–destination (OD) estimation using a joint origin–destination-path choice formulation, inspired by the well-known equivalence of doubly constraint gravity models and multinomial logit models for joint O–D choice. 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引用次数: 0
摘要
本文受众所周知的双约束重力模型和多叉 Logit 模型在原产地-目的地(OD)联合选择方面的等效性启发,提出了一种利用原产地-目的地-路径选择联合表述进行数据驱动的时变原产地-目的地(OD)估计的新方法。这一新表述提供了理论基础,并推广了早先的一项贡献。虽然包含路径选择会增加问题的维度,但它也极大地提高了可直接用于解决该问题的数据质量(例如,测量的路径旅行时间与粗略的中心点到中心点旅行时间);并为在单一框架中结合不同的同化技术提供了可能性:(1) 使用静态(例如,道路类型)和动态(例如,路径选择)快速计算最短路径集。(1) 利用静态(如道路类型)和动态(速度、旅行时间)链路属性快速计算最短路径集;(2) 利用得出的路径份额和(估计或测量的)生产与吸引总量预测 "先验 OD 矩阵";(3) 利用链路流量(需求信息)扩展/限制该先验。如果所得到的方程组秩不够,我们会使用主成分分析法来降低维度,解决这个降低了的问题,并将该解决方案转换回完整的 OD 矩阵。对 7 个具有不同规模和特征的网络进行的综合测试和敏感性分析,为扩展等价原理提供了经验依据;证明了 OD 估算方法总体上具有良好的准确性和可靠性;并表明该方法在主要假设和促成因素方面是稳健的。
Data driven origin–destination matrix estimation on large networks—A joint origin–destination-path-choice formulation
This paper presents a novel approach to data-driven time-dependent origin–destination (OD) estimation using a joint origin–destination-path choice formulation, inspired by the well-known equivalence of doubly constraint gravity models and multinomial logit models for joint O–D choice. This new formulation provides a theoretical basis and generalizes an earlier contribution. Although including path choice increases the dimensionality of the problem, it also dramatically improves the quality of the data one can directly use to solve it (e.g. measured path travel times versus coarse centroid-to-centroid travel times); and opens up possibilities to combine different assimilation techniques in a single framework: (1) fast shortest path set computation using static (e.g. road type) and dynamic (speed, travel time) link properties; (2) predicting a “prior OD matrix” using the resulting path-shares and (estimated or measured) production and attraction totals; and (3) scaling/constraining this prior using link flows (informative of demand). If the resulting system of equations has insufficient rank, we use principal component analysis to reduce the dimensionality, solve this reduced problem, and transform that solution back to a full OD matrix. Comprehensive tests and sensitivity analysis on 7 networks with different sizes and characteristics give an empirical underpinning of the extended equivalence principle; demonstrate good accuracy and reliability of the OD estimation method overall; and suggest that the method is robust with respect to major assumptions and contributing factors.
期刊介绍:
Transportation Research: Part C (TR_C) is dedicated to showcasing high-quality, scholarly research that delves into the development, applications, and implications of transportation systems and emerging technologies. Our focus lies not solely on individual technologies, but rather on their broader implications for the planning, design, operation, control, maintenance, and rehabilitation of transportation systems, services, and components. In essence, the intellectual core of the journal revolves around the transportation aspect rather than the technology itself. We actively encourage the integration of quantitative methods from diverse fields such as operations research, control systems, complex networks, computer science, and artificial intelligence. Join us in exploring the intersection of transportation systems and emerging technologies to drive innovation and progress in the field.