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A generic multi-level framework for microscopic traffic simulation-Theory and an example case in modelling driver distraction

机译:微观交通仿真的通用多级框架-理论和驾驶员分心建模示例

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Incorporation of more sophisticated human factors (HF) in mathematical models for driving behavior has become an increasingly popular and important research direction in the last few years. Such models enable us to simulate under which conditions perception errors and risk-taking lead to interactions that result in unsafe traffic conditions and ultimately accidents. In this paper, we present a generic multi-level microscopic traffic modelling and simulation framework that supports this important line of research. In this framework, the driving task is modeled in a multi-layered fashion. At the highest level, we have idealized (collision-free) models for car following and other driving tasks. These models typically contain HF parameters that exogenously “govern the human factor”, such as reaction time, sensitivities to stimuli, desired speed, etc. At the lowest level, we define HF variables (task demand and capacity, awareness) with which we maintain what the information processing costs are of performing driving tasks as well as non-driving related tasks such as distractions. We model these costs using so-called fundamental diagrams of task demand. In between, we define functions that govern the dynamics of the high-level HF parameters with these HF variables as inputs. When total task demand increases beyond task capacity, first awareness may deteriorate, where we use Endsley's three-level awareness construct to differentiate between effects on perception, comprehension, anticipation and reaction time. Secondly, drivers may adapt their response in line with Fullers risk allostasis theory to reduce risk to acceptable levels. This framework can be viewed as a meta model, that provides the analyst possibilities to combine and mix a wide variety of microscopic models for driving behavior at different levels of sophistication, depending on which HF are studied, and which phenomena need to be reproduced. We illustrate the framework with a distraction (rubbernecking) case. Our results show that the framework results in endogenous mechanisms for inter- and intra-driver differences in driving behavior and can generate multiple plausible HF mechanisms to explain the same observable traffic phenomena and congestion patterns that arise due to the distraction. We believe our framework can serve as a valuable tool in testing hypotheses related to the effects of HF on traffic efficiency and traffic safety in a systematic way for both the traffic flow and HF community.
机译:在过去的几年中,将更复杂的人为因素(HF)纳入驾驶行为的数学模型已成为越来越流行和重要的研究方向。这种模型使我们能够模拟在哪些情况下感知错误和冒险行为会导致相互作用,从而导致不安全的交通状况并最终导致事故。在本文中,我们提出了支持这一重要研究领域的通用多级微观交通模型和仿真框架。在此框架中,驾驶任务以多层方式建模。在最高级别上,我们为汽车跟随和其他驾驶任务提供了理想的(无碰撞)模型。这些模型通常包含外源“控制人为因素”的HF参数,例如反应时间,对刺激的敏感性,所需的速度等。在最低级别,我们定义了保持的HF变量(任务需求和能力,意识)。执行驾驶任务以及与驾驶无关的任务(例如分心)的信息处理成本是多少?我们使用所谓的任务需求基本图对这些成本进行建模。在这两者之间,我们定义了函数,这些函数以这些HF变量作为输入来管理高级HF参数的动态。当总任务需求增加到超出任务能力时,第一意识可能会恶化,我们使用恩德斯利(Endsley)的三级意识结构来区分对感知,理解,预期和反应时间的影响。其次,驾驶员可以根据富勒氏风险同体反应理论调整其反应,以将风险降低到可接受的水平。该框架可以看作是元模型,它为分析人员提供了组合和混合各种微观模型的可能性,这些微观模型可用于研究在不同的复杂程度下的行驶行为,具体取决于研究了哪些HF,以及需要再现哪些现象。我们以分散注意力的案例来说明该框架。我们的结果表明,该框架导致驾驶员行为之间和驾驶员内部差异的内生机制,并且可以生成多种合理的HF机制,以解释由于分散注意力而引起的相同可观察到的交通现象和拥堵模式。我们认为,我们的框架可以作为一种有价值的工具,以系统的方式针对交通流量和HF社区测试与HF对交通效率和交通安全的影响有关的假设。

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