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Evaluation of Driving Behavior and the Efficacy of a Predictive Eco-Driving Assistance System for Heavy Commercial Vehicles in a Driving Simulator Experiment

机译:评估驾驶模拟器实验中重型商用车预测生态驾驶辅助系统的驾驶行为及效力

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Driving style is a key factor when it comes to real-world fuel economy. Advanced driver assistance systems (ADAS) hold the potential to support drivers in reducing fuel consumption. In this regard, predictive analysis of the road profile is a highly promising approach. This paper describes the methodology and results of a driving simulator experiment evaluating the efficacy of such a predictive eco-driving assistance system (EDAS). Furthermore, behavioral aspects are another object of the study. The analysis of a linear mixed model (LMM) suggests that an instruction to drive economically could by itself yield savings of about 6.0% without any kind of additional support. Using the EDAS reduces fuel consumption further by nearly 6.6% and thus by as much as 12.2% compared to normal driving. Additionally, the experiment provided support for the hypothesis that an EDAS can induce learning effects in drivers regarding economical driving.
机译:驾驶风格是现实世界燃料经济性的关键因素。先进的驾驶员辅助系统(ADAS)持有潜力,以支持降低燃料消耗的驱动因素。在这方面,对道路型材的预测分析是一种高度有希望的方法。本文介绍了驾驶模拟器实验的方法和结果,评估这种预测生态驾驶辅助系统(EDA)的功效。此外,行为方面是该研究的另一个目的。线性混合模型(LMM)的分析表明,在经济上推动的指令本身可以节省约6.0%,而无需任何额外的支持。使用EDA将进一步降低燃油消耗近6.6%,因此与正常驱动相比,多达12.2%。此外,该实验为假设提供了支持,即EDA在有关经济驾驶方面的司机中诱导学习效果。

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