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DEEP REINFORCEMENT LEARNING BASED MODELS FOR HARD-EXPLORATION PROBLEMS

机译:基于深度学习的硬挖掘问题模型

摘要

A self-driving vehicle implements a deep reinforcement learning based model. The self-driving vehicle comprise one or more sensors configured to capture sensor data of an environment of the self-driving vehicle, a control system configured to navigate the self-driving vehicle, and a controller to determine and provide instructions to the control system. The controller implements a deep reinforcement learning based model that inputs the sensor data captured by the sensors to determine actions to perform by the control system. The model includes an archive storing states reachable by an agent in a training environment, each state stored in the archive is associated with a trajectory for reaching the state. The archive is generated by visiting states stored in the archive and performing actions to explore and find new states. New states are stored in the archive with their trajectories.
机译:自动驾驶汽车实现了基于深度强化学习的模型。自动驾驶车辆包括:一个或多个传感器,其被配置为捕获自动驾驶车辆的环境的传感器数据;控制系统,其被配置为对自动驾驶车辆进行导航;以及控制器,其确定并向控制系统提供指令。控制器实施基于深度强化学习的模型,该模型输入传感器捕获的传感器数据,以确定控制系统要执行的动作。该模型包括档案库,该档案库存储代理在训练环境中可到达的状态,档案库中存储的每个状态都与用于到达该状态的轨迹相关联。通过访问存储在档案中的状态并执行动作来探索和查找新状态来生成档案。新状态及其轨迹存储在存档中。

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