论文标题
评估驾驶性能和用户接受电动汽车的预测生态驾驶援助系统
Evaluation of the Driving Performance and User Acceptance of a Predictive Eco-Driving Assistance System for Electric Vehicles
论文作者
论文摘要
在这项工作中,预测性生态驾驶援助系统(PEDA)的目标是帮助驾驶员改善其驾驶风格,从而减少电池电动汽车的能源消耗,同时提高驾驶安全性和舒适性。这项工作中的PEDA配备了两个模型预测控制器(MPC),即参考跟踪MPC和跟随CAR的MPC,它们使用了来自交通灯基础设施的板载传感器,信号阶段和时机(SPAT)消息的信息,以及驱动路线的地理信息,以计算驱动器的驱动器驱动速度。使用视觉反馈向驾驶员指示最佳的速度建议和信息信息。 PEDA提供持续的反馈,并鼓励驾驶员在跟踪上前车辆,在转弯和弯曲的道路上以安全的速度和弯曲的道路行驶,以高速公路上的能量速度行驶,在高速公路场景中以动态编程确定,并以绿色波最佳的速度在可能的情况下以绿色相交的方式在绿色阶段交叉,以绿色波最佳的速度行驶。此外,为了评估所提出的踏板的功效,对41名参与者进行了用户研究,以动态驾驶模拟器进行。客观分析表明,驾驶员可实现高达10%的平均能源节省,减少了速度限制的行为,并避免了使用踏板在信号交叉口进行不必要的停止。最后,使用技术接受模型(TAM)和计划行为理论(TPB)评估了对拟议的踏板的用户接受。结果表明,用户的总体积极态度,发现所感知的有用性和感知的行为控制是影响使用PEDA的行为意图的重要因素。
In this work, a predictive eco-driving assistance system (pEDAS) with the goal to assist drivers in improving their driving style and thereby reducing the energy consumption in battery electric vehicles while enhancing the driving safety and comfort is introduced and evaluated. pEDAS in this work is equipped with two model predictive controllers (MPCs), namely reference-tracking MPC and car-following MPC, that use the information from onboard sensors, signal phase and timing (SPaT) messages from traffic light infrastructure, and geographical information of the driving route to compute an energy-optimal driving speed. An optimal speed suggestion and informative advice are indicated to the driver using a visual feedback. pEDAS provides continuous feedback and encourages the drivers to perform energy-efficient car-following while tracking a preceding vehicle, travel at safe speeds at turns and curved roads, drive at energy-optimal speed determined using dynamic programming in freeway scenarios, and travel with a green-wave optimal speed to cross the signalized intersections at a green phase whenever possible. Furthermore, to evaluate the efficacy of the proposed pEDAS, user studies were conducted with 41 participants on a dynamic driving simulator. The objective analysis revealed that the drivers achieved mean energy savings up to 10%, reduced the speed limit violations, and avoided unnecessary stops at signalized intersections by using pEDAS. Finally, the user acceptance of the proposed pEDAS was evaluated using the Technology Acceptance Model (TAM) and Theory of Planned Behavior (TPB). The results showed an overall positive attitude of users and that the perceived usefulness and perceived behavioral control were found to be the significant factors in influencing the behavioral intention to use pEDAS.