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Reinforcement learning and model predictive control for robust embedded quadrotor guidance and control

机译:强化嵌入式四体电机指导和控制的加固学习与模型预测控制

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摘要

A new method for enabling a quadrotor micro air vehicle (MAV) to navigate unknown environments using reinforcement learning (RL) and model predictive control (MPC) is developed. An efficient implementation of MPC provides vehicle control and obstacle avoidance. RL is used to guide the MAV through complex environments where dead-end corridors may be encountered and backtracking is necessary. All of the presented algorithms were deployed on embedded hardware using automatic code generation from Simulink. Results are given for flight tests, demonstrating that the algorithms perform well with modest computing requirements and robust navigation.
机译:开发了一种新方法,用于使四轮电机微型空气车辆(MAV)进行使用加强学习(RL)和模型预测控制(MPC)导航未知环境和模型预测控制(MPC)。 高效实施MPC提供车辆控制和避免避免。 RL用于通过复杂的环境引导MAV,其中可能会遇到死端走廊并需要回溯。 使用来自Simulink的自动代码生成,部署所有所呈现的算法。 结果是用于飞行测试的结果,展示了算法对适度的计算要求和强大的导航执行良好。

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