Vehicle control algorithms exploiting connectivity and automation, such as Connected and Automated Vehicles (CAVs) or Advanced Driver Assistance Systems (ADAS), have the opportunity to improve energy savings. However, lower levels of automation involve a human-machine interaction stage, where the presence of a human driver affects the performance of the control algorithm in closed loop. This occurs for instance in the case of Eco-Driving control algorithms implemented as a velocity advisory system, where the driver is displayed an optimal speed trajectory to follow to reduce energy consumption. Achieving the control objectives relies on the human driver perfectly following the recommended speed. If the driver is unable to follow the recommended speed, a decline in energy savings and poor vehicle performance may occur. This warrants the creation of methods to model and forecast the response of a human driver when operating in the loop with a speed advisory system. This work focuses on developing a sequence to sequence long-short term memory (LSTM)-based driver behavior model that models the interaction of the human driver to a suggested desired vehicle speed trajectory in real-world conditions. A driving simulator is used for data collection and training the driver model, which is then compared against the driving data and a deterministic model. Results show close proximity of the LSTM-based model with the driving data, demonstrating that the model can be adopted as a tool to design human-centered speed advisory systems.
翻译:利用连接和自动化的车辆控制算法,如连接和自动化车辆(CAVs)或高级司机协助系统(ADAS)等,利用连通和自动化的车辆控制算法,有机会提高节能;然而,自动化程度较低,涉及人机互动阶段,其中人机驱动器的存在影响闭路控制算法的性能;例如,作为速度咨询系统实施的生态驱动器控制算法,其中驱动器展示了最佳速度轨迹,以减少能源消耗;实现控制目标完全取决于按照建议的速度的驾驶员;如果驾驶员无法遵循所建议的速度,则可能出现节能下降和车辆性能差的情况;这就需要制定方法,在使用速度咨询系统在环绕运行时,模拟和预测人机驱动器的反应;这项工作侧重于开发一个序列,将长期短期内存(LSTM)基驱动器(LSTM)驱动器进行排序,以模拟人驾驶员与现实世界条件下的拟议车辆速度轨迹;如果司机无法遵循所建议的速度轨迹;如果司机无法按建议的速度速度速度速度速度速度速度速度,则可能出现节能减少节能和车辆性车辆性工作业绩;这需要制定模型,在使用驾驶员模型上制作模型上比较驱动力设计工具的接近性能设计工具,以显示速度系统。