To explain day-to-day (DTD) route-choice behaviors and traffic dynamics observed in a series of lab experiments, Part I of this research proposed a discrete choice-based analytical dynamic model (Qi et al., 2023). Although the deterministic model could well reproduce the experimental observations, it converges to a stable equilibrium of route flow while the observed DTD evolution is apparently with random oscillations. To overcome the limitation, the paper proposes a route-dependent attraction-based stochastic process (RDAB-SP) model based on the same behavioral assumptions in Part I of this research. Through careful comparison between the model-based estimation and experimental observations, it is demonstrated that the proposed RDAB-SP model can accurately reproduce the random oscillations both in terms of flow switching and route flow evolution. To the best of our knowledge, this is the first attempt to explain and model experimental observations by using stochastic process DTD models, and it is interesting to find that the seemingly unanticipated phenomena (i.e., random route switching behavior) is actually dominated by simple rules, i.e., independent and probability-based route-choice behavior. Finally, an approximated model is developed to help simulate the stochastic process and evaluate the equilibrium distribution in a simple and efficient manner, making the proposed model a useful and practical tool in transportation policy design.
翻译:为了解释在一系列实验室实验中观察到的日常(DTD)路线选择行为和交通动态,本研究第一部分建议采用独立的选择型分析动态模型(Qi等人,2023年)。虽然确定型模型可以很好地复制实验观测结果,但它会趋于路线流动的稳定平衡,而观察到的DTD演变过程显然带有随机振荡。为了克服这一限制,本文件建议采用基于路线的吸引型随机分析过程(RDAB-SP)模型,该模型基于本研究第一部分的相同行为假设。通过对基于模型的估算和实验性观测进行仔细比较,可以证明拟议的RDAB-SP模型可以准确地复制流动转换和路线流动演变两方面的随机振荡。根据我们所知,这是首次试图通过采用随机过程DTD模型来解释和模拟实验性观测结果,并且很有意思的是发现,看起来的意外现象(即随机转换行为)实际上由简单模型规则所支配,即独立和基于概率分析的模型分析方法,最终是模拟、基于概率分析的模型的模型分析方法,是一种简单、独立和基于概率分析的模型的模型分析方法,最后是用来对一个简单、以模拟方式的模型的模型进行模拟分析。</s>