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Generalized predictive control based on self-recurrent wavelet neural network for stable path tracking of mobile robots: adaptive learning rates approach

机译:基于自回归小波神经网络的移动机器人稳定路径跟踪的广义预测控制:自适应学习率方法

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In this paper, a generalized predictive control (GPC) method based on self-recurrent wavelet neural network (SRWNN) is proposed for stable path tracking of mobile robots. Since the SRWNN has a self-recurrent mother wavelet layer, it can well attract the complex nonlinear system although the SRWNN has less mother wavelet nodes than the wavelet neural network. Thus, the SRWNN is used as a model identifier for approximating on-line the states of the mobile robot. In our control system, since the control inputs, as well as the parameters of the SRWNN identifier are trained by the gradient descent method with the adaptive learning rates (ALRs), the optimal learning rates which are suitable for the time-varying trajectory of the mobile robot can be found rapidly. The ALRs for training the parameters of the SRWNN identifier and those for learning the control inputs are derived from the discrete Lyapunov stability theorem, which are used to guarantee the convergence of the GPC system. Finally, simulation results are provided to demonstrate the effectiveness of the proposed control strategy
机译:提出了一种基于自回归小波神经网络(SRWNN)的广义预测控制(GPC)方法,用于移动机器人的稳定路径跟踪。由于SRWNN具有自循环母小波层,因此尽管SRWNN的母小波节点少于小波神经网络,但它可以很好地吸引复杂的非线性系统。因此,SRWNN用作模型标识符,用于在线近似移动机器人的状态。在我们的控制系统中,由于控制输入以及SRWNN标识符的参数是通过具有自适应学习率(ALR)的梯度下降方法进行训练的,因此适合于时变轨迹的最优学习率可以迅速找到移动机器人。用于训练SRWNN标识符参数的ALR和用于学习控制输入的ALR均来自离散Lyapunov稳定性定理,用于保证GPC系统的收敛性。最后,提供了仿真结果以证明所提出的控制策略的有效性

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