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A proposed hybrid neural network for position control of a walking robot

机译:提出的用于步行机器人位置控制的混合神经网络

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摘要

The use of a proposed recurrent neural network control system to control a four-legged walking robot is presented in this paper. The control system consists of a neural controller, a standard PD controller, and the walking robot. The robot is a planar four-legged walking robot. The proposed Neural Network (NN) is employed as an inverse controller of the robot. The NN has three layers, which are input, hybrid hidden and output layers. In addition to feedforward connections from the input layer to the hidden layer and from the hidden layer to the output layer, there is also a feedback connection from the output layer to the hidden layer and from the hidden layer to itself. The reason to use a hybrid layer is that the robot's dynamics consists of linear and nonlinear parts. The results show that the neural-network controller can efficiently control the prescribed positions of the stance and swing legs during the double stance phase of the gait cycle after sufficient training periods. The goal of the use of this proposed neural network is to increase the robustness of the control of the dynamic walking gait of this robot in the case of external disturbances. Also, the PD controller alone and Computed Torque Method (CTM) control system are used to control the walking robot's position for comparison.
机译:本文提出了一种建议的递归神经网络控制系统来控制四足步行机器人。控制系统由神经控制器,标准PD控制器和步行机器人组成。该机器人是平面四足步行机器人。提出的神经网络(NN)被用作机器人的逆控制器。 NN具有三层,分别是输入层,混合隐藏层和输出层。除了从输入层到隐藏层以及从隐藏层到输出层的前馈连接之外,还存在从输出层到隐藏层以及从隐藏层到自身的反馈连接。使用混合层的原因是机器人的动力学由线性和非线性部分组成。结果表明,经过足够的训练时间后,在步态周期的双姿态阶段中,神经网络控制器可以有效地控制姿态和摆腿的规定位置。使用这种提出的神经网络的目的是在外部干扰的情况下提高控制该机器人的动态步态的鲁棒性。另外,单独使用PD控制器和计算转矩方法(CTM)控制系统来控制步行机器人的位置进行比较。

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