Univ. Lyon, Univ. Gustave Eiffel, IFSTTAR, ENTPE, LICIT, Lyon, France.
PLoS One. 2019 Nov 12;14(11):e0225069. doi: 10.1371/journal.pone.0225069. eCollection 2019.
In a city-scale network, trips are made in thousands of origin-destination (OD) pairs connected by multiple routes, resulting in a large number of alternatives with diverse characteristics that influence the route choice behaviour of the travellers. As a consequence, to accurately predict user choices at full network scale, a route choice model should be scalable to suit all possible configurations that may be encountered. In this article, a new methodology to obtain such a model is proposed. The main idea is to use clustering analysis to obtain a small set of representative OD pairs and routes that can be investigated in detail through computer route choice experiments to collect observations on travellers behaviour. The results are then scaled-up to all other OD pairs in the network. It was found that 9 OD pair configurations are sufficient to represent the network of Lyon, France, composed of 96,096 OD pairs and 559,423 routes. The observations, collected over these nine representative OD pair configurations, were used to estimate three mixed logit models. The predictive accuracy of the three models was tested against the predictive accuracy of the same models (with the same specification), but estimated over randomly selected OD pair configurations. The obtained results show that the models estimated with the representative OD pairs are superior in predictive accuracy, thus suggesting the scaling-up to the entire network of the choices of the participants over the representative OD pair configurations, and validating the methodology in this study.
在城市规模的网络中,出行是在成千上万的起点-终点(OD)对之间进行的,这些 OD 对由多条路线连接,从而产生了大量具有不同特征的选择,这些特征影响着旅行者的路线选择行为。因此,为了准确预测整个网络规模的用户选择,路线选择模型应该具有可扩展性,以适应可能遇到的所有可能的配置。本文提出了一种获得这种模型的新方法。其主要思想是使用聚类分析来获得一小部分具有代表性的 OD 对和路线,可以通过计算机路线选择实验对其进行详细研究,以收集关于旅行者行为的观察结果。然后将结果扩展到网络中的所有其他 OD 对。结果发现,代表法国里昂网络的 9 个 OD 对配置就足以代表该网络,该网络由 96096 个 OD 对和 559423 条路线组成。在这九个代表性 OD 对配置中收集的观察结果被用于估计三个混合逻辑模型。三个模型的预测准确性与在随机选择的 OD 对配置中估计的相同模型(具有相同的规格)的预测准确性进行了测试。得到的结果表明,基于代表性 OD 对估计的模型在预测准确性方面具有优势,这表明可以将参与者在代表性 OD 对配置中的选择扩展到整个网络,从而验证了本研究中的方法。