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Modelling decisions of control transitions and target speed regulations in full-range Adaptive Cruise Control based on Risk Allostasis Theory

机译:基于风险同渗理论的全范围自适应巡航控制中的控制转换和目标速度调节决策模型

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摘要

Adaptive Cruise Control (ACC) and automated vehicles can contribute to reduce traffic congestion and accidents. Recently, an on-road study has shown that drivers may prefer to deactivate full-range ACC when closing in on a slower leader and to overrule it by pressing the gas pedal a few seconds after the activation of the system. Notwithstanding the influence of these control transitions on driver behaviour, a theoretical framework explaining driver decisions to transfer control and to regulate the target speed in full-range ACC is currently missing.This research develops a modelling framework describing the underlying decision-making process of drivers with full-range ACC at an operational level, grounded on Risk Allostasis Theory (RAT). Based on this theory, a driver will choose to resume manual control or to regulate the ACC target speed if its perceived level of risk feeling and task difficulty falls outside the range considered acceptable to maintain the system active. The feeling of risk and task difficulty evaluation is formulated as a generalized ordered probit model with random thresholds, which vary between drivers and within drivers over time. The ACC system state choices are formulated as logit models and the ACC target speed regulations as regression models, in which correlations between system state choices and target speed regulations are captured explicitly. This continuous-discrete choice model framework is able to address interdependencies across drivers’ decisions in terms of causality, unobserved driver characteristics, and state dependency, and to capture inconsistencies in drivers’ decision making that might be caused by human factors.The model was estimated using a dataset collected in an on-road experiment with full-range ACC. The results reveal that driver decisions to resume manual control and to regulate the target speed in full-range ACC can be interpreted based on the RAT. The model can be used to forecast driver response to a driving assistance system that adapts its settings to prevent control transitions while guaranteeing safety and comfort. The model can also be implemented into a microscopic traffic flow simulation to evaluate the impact of ACC on traffic flow efficiency and safety accounting for control transitions and target speed regulations.
机译:自适应巡航控制(ACC)和自动驾驶车辆可有助于减少交通拥堵和事故。最近,一项公路研究表明,驾驶员在关闭较慢的前导杆时可能更喜欢停用全范围ACC,并在激活系统几秒钟后踩下油门踏板来推翻ACC。尽管这些控制转换对驾驶员行为产生了影响,但目前尚缺乏一个理论框架来解释驾驶员在全范围ACC中进行控制转移和调节目标速度的决策。该研究建立了一个模型框架来描述驾驶员的基本决策过程基于风险同化理论(RAT)在操作级别使用全范围ACC。基于此理论,如果驾驶员的感觉到的风险感觉和任务难度落在维持系统运行的可接受范围内,驾驶员将选择恢复手动控制或调节ACC目标速度。风险感和任务难度评估被公式化为具有随机阈值的广义有序概率模型,该模型随驾驶员之间和驾驶员内部随时间变化。 ACC系统状态选择被表述为logit模型,ACC目标速度规则被表述为回归模型,其中系统状态选择和目标速度规则之间的相关性被明确捕获。这种连续离散选择模型框架能够解决因果关系,未观察到的驾驶员特征和状态依赖性方面的驾驶员决策之间的相互依赖性,并捕获可能由人为因素导致的驾驶员决策不一致。使用在道路实验中使用全范围ACC收集的数据集。结果表明,可以基于RAT来解释驾驶员决定恢复手动控制并在全范围ACC中调节目标速度。该模型可用于预测驾驶员对驾驶辅助系统的反应,该系统会调整其设置以防止控制过渡,同时确保安全性和舒适性。该模型还可以实现为微观交通流仿真,以评估ACC对交通流效率的影响以及控制过渡和目标速度规定的安全性。

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