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Spatio-temporal modeling of destination choice behavior through the Bayesian hierarchical approach

机译:贝叶斯等级方法目的地选择行为的时空建模

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Trip purpose inference is critical in transportation demand management (TDM) as well as traffic congestion alleviation. However, destination choice can be affected by a variety of factors, many of which are difficult to determine (e.g. socio-demographics). Besides, the spatio-temporal variation and correlation inherent in travel patterns further intensify the difficulty of understanding destination choice behavior. To this end, this research proposes a Bayesian hierarchical approach for modeling the destination choice behavior through time and space. The proposed method can take into account both the unavailable factors and spatio-temporal correlations by introducing random fields. Moreover, the implementation of the Integrated Nested Laplace Approximations (INLA) combined with the Stochastic Partial Differential Equation (SPDE) makes it computationally feasible to model large-scale spatio-temporal correlation structures. The model is further applied to two-week data from more than 8000 taxis in Harbin. The empirical results indicate that the proposed approach is capable to capture spatio-temporal variability in destination distribution, and the inclusion of spatial and temporal random effects is of great help to improve the model performance. The case study also examines how the land-use types influence the destination choice. It is believed that the modeling method and the exploratory spatial-temporal analysis of destination distribution in this study can enriches the methodologies for travel demand modeling as well as decision support for transport policy development. (C) 2018 Elsevier B.V. All rights reserved.
机译:行程目的推断在运输需求管理(TDM)以及交通拥堵缓解方面至关重要。然而,目的地选择可能受到各种因素的影响,其中许多难以确定(例如社会人口统计学)。此外,旅行模式中固有的时空变化和相关性进一步加强了理解目的地选择行为的难度。为此,这项研究提出了一种通过时间和空间建模目的地选择行为的贝叶斯分层方法。该方法可以通过引入随机字段来考虑不可用因素和时空相关性。此外,与随机偏微分方程(SPDE)组合的集成嵌套的拉普拉斯近似(Inla)的实现使其计算到模拟大规模时空相关结构的可行性可行性。该模型进一步应用于哈尔滨超过8000个出租车的两周数据。经验结果表明,该方法能够捕获目的地分布中的时空变异性,并且包含空间和时间随机效应的含有很大的帮助来改善模型性能。案例研究还研究了土地使用方式如何影响目的地选择。据信,本研究中的目的地分布的建模方法和探索性空间时间分析可以丰富旅行需求建模的方法以及对运输政策发展的决策支持。 (c)2018年elestvier b.v.保留所有权利。

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