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Online gain setting method for path tracking using CMA-ES: Application to off-road mobile robot control

机译:路径跟踪的在线增益设置方法使用CMA-es:应用于越野移动机器人控制

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This paper proposes a new approach for online control law gains adaptation, through the use of neural networks and the Covariance Matrix Adaptation Evolution Strategy (CMA-ES) algorithm, in order to optimize the behavior of the robot with respect to an objective function. The neural network considered takes as input the current observed state as well as its uncertainty, and provides as output the control law gains. It is trained, using the CMA-ES algorithm, on a simulator reproducing the vehicle dynamics. Then, it is tested in real conditions on an agricultural mobile robot at different speeds. The transferability of this method from simulation to a real system is demonstrated, as well as its robustness to environmental changes, such as GPS signal degradation or ground variation. As a result, path following errors are reduced, while ensuring tracking stability.
机译:本文通过使用神经网络和协方差矩阵自适应演化策略(CMA-ES)算法来提出一种新的在线控制法增益适应方法,以优化机器人关于客观函数的行为。被认为的神经网络作为输入当前观察状态以及其不确定性,并提供输出控制律收益。使用CMA-ES算法在模拟器上再现车辆动态训练。然后,它以不同的速度在农业移动机器人的真实条件下进行测试。将该方法从模拟到真实系统的可转换性,以及其对环境变化的鲁棒性,例如GPS信号劣化或地面变化。结果,减少了后续误差的路径,同时确保跟踪稳定性。

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