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Development of Human-Like Driving Decision Making Model based on Human Brain Mechanism

机译:基于人脑机制的类人驾驶决策模型开发

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Recent driving assistance technologies such as Electronic Stability Control (ESC) and auto brake system release drivers from complicated driving tasks. On the other hand, there is concern that it reduces pleasure feelings of a driver if these system's behaviors are different from the driver's intention. To avoid such problem, it is important to evaluate the driver's intention and decision-making process, and design the assistance system to fit it. In this research, we propose an unsupervised reinforcement learning driver model based on human cognitive mechanism and human brain architecture. Because this study's objective is to analyze the process of driving decision making, we hire a simple actor-critic model as a driver model. We set learning parameters from the driver's decision making characteristics which are derived from the task execution process of the human brain, and set state space from driver's sensory characteristics. This driver model can predict lane change decision making adequately and shows high accuracy (ACC=94%) on verification tests with real driving data. This result is similar to unpublished results of a deep neural network driver model which use the same data as teaching data. From these results, we consider that the proposed reward function and learned state space represent the driver's decision making characteristics.
机译:电子稳定控制(ESC)和自动制动系统等最新的驾驶辅助技术使驾驶员摆脱了复杂的驾驶任务。另一方面,如果这些系统的行为与驾驶员的意图不同,则担心会降低驾驶员的愉悦感。为了避免此类问题,重要的是评估驾驶员的意图和决策过程,并设计合适的辅助系统。在这项研究中,我们提出了一种基于人类认知机制和人类大脑结构的无监督强化学习驱动程序模型。由于本研究的目的是分析驾驶决策的过程,因此我们聘用了一个简单的行为者批评模型作为驾驶员模型。我们根据驾驶员的决策特征来设置学习参数,这些决策参数是从人脑的任务执行过程中得出的,而根据驾驶员的感官特征来设置状态空间。该驾驶员模型可以充分预测车道变更决策,并在具有真实驾驶数据的验证测试中显示出较高的准确性(ACC = 94%)。此结果类似于使用相同数据作为教学数据的深度神经网络驱动程序模型的未发布结果。从这些结果,我们认为建议的奖励函数和学习状态空间代表了驾驶员的决策特征。

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