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Design of an Effective Trajectory Control Method for Quadruped Robot via Neural Network

机译:基于神经网络的四足机器人有效轨迹控制方法设计

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In this paper, a novel trajectory control method based on ensemble neural networks for quadruped robot is designed. A proportion and differentiation (PD) neural network, which includes foot-trajectory control unit (FTCU) and steering control unit (SCU), is constructed to control the motion trajectory of quadruped robot. After that an advanced particle swarm optimization (PSO) is introduced to optimize the weights of PD neural network. In addition, the FTCU based on RBF neural network (RBF-NN) and SCU based on general mathematical model are cooperated to realize a new trotting gait. The compared results of simulations show that the FTCU and SCU can be used to realize the gait and steering control of quadruped robot accurately. Furthermore, in comparison with existing methods, the proposed control system has excellent accuracy and obvious advantages on anti-interferences, either for inner disturbances of system (IDS) or for exterior stochastic disturbances (ESD) caused by irregular terrain.
机译:本文设计了一种基于神经网络的四足机器人轨迹控制方法。构造了比例与微分(PD)神经网络,包括脚部轨迹控制单元(FTCU)和转向控制单元(SCU),以控制四足机器人的运动轨迹。之后,引入了高级粒子群优化(PSO)以优化PD神经网络的权重。此外,基于RBF神经网络的FTCU(RBF-NN)和基于通用数学模型的SCU相互配合,实现了新的小跑步态。仿真结果对比表明,FTCU和SCU可以准确实现四足机器人的步态和转向控制。此外,与现有方法相比,所提出的控制系统无论是系统内部干扰(IDS)还是由不规则地形引起的外部随机干扰(ESD)都具有出色的精度和明显的抗干扰优势。

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