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MUSCLE EMULATION WITH DC MOTOR AND NEURAL NETWORKS FOR BIPED ROBOTS

机译:双臂机器人直流电动机与神经网络的肌肉仿真

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This paper shows how to use a DC motor and its PID controller, to behave analogously to a muscle. A model of the muscle that has been learned by a NNARX (Neural Network Auto Regressive eXogenous) structure is used. The PID parameters are tuned by an MLP Network with a special indirect online learning algorithm. The calculation of the learning algorithm is performed based on a mathematical equation of the DC motor or with a Neural Network identification of the motor. For each of the two algorithms, the output of the muscle model is used as a reference for the DC motor control loop. The results show that we succeeded in forcing the physical system to behave in the same way as the muscle model with acceptable margin of error. An implementation in the knees of a simulated biped robot is realized. Simulation compares articular trajectories with and without the muscle emulator and shows that with muscle emulator, articular trajectories become closer to the human being ones and that total power consumption is reduced.
机译:本文展示了如何使用直流电动机及其PID控制器来模拟肌肉。使用已经通过NNARX(神经网络自回归异质)结构学习的肌肉模型。 PID参数由MLP网络使用特殊的间接在线学习算法进行调整。学习算法的计算是基于直流电动机的数学方程式或电动机的神经网络识别来进行的。对于这两种算法中的每一种,肌肉模型的输出都将用作直流电动机控制回路的参考。结果表明,我们成功地迫使物理系统的行为与具有可接受误差范围的肌肉模型相同。实现了模拟两足动物机器人膝盖的一种实现方式。仿真比较了使用肌肉模拟器和不使用肌肉模拟器的关节轨迹,并显示了使用肌肉模拟器,关节轨迹变得更接近人类,并且总功耗降低了。

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