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首页> 外文期刊>Complexity >A New Approach to Modeling and Controlling a Pneumatic Muscle Actuator-Driven Setup Using Back Propagation Neural Networks
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A New Approach to Modeling and Controlling a Pneumatic Muscle Actuator-Driven Setup Using Back Propagation Neural Networks

机译:使用反向传播神经网络对气动肌肉执行器驱动的装置进行建模和控制的新方法

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Pneumatic muscle actuators (PMAs) own excellent compliance and a high power-to-weight ratio and have been widely used in bionic robots and rehabilitated robots. However, the high nonlinear characteristics of PMAs due to inherent construction and pneumatic driving principle bring great challenges in applications acquired accurately modeling and controlling. To tackle the tricky problem, a single PMA mass setup is constructed, and a back propagation neural network (BPNN) is employed to identify the dynamics of the setup. An offline model is built up using sampled data, and online modifications are performed to further improve the quality of the model. An adaptive controller based on BPNN is designed using gradient descent information of the built-up model. Experiments of identifying the PMA setup using BPNN and position tracking by adaptive BPNN controller are performed, and results demonstrate the good capacity in accurate controlling of the PMA setup.
机译:气动肌肉致动器(PMA)具有出色的柔顺性和高功率重量比,已被广泛应用于仿生机器人和修复后的机器人中。然而,由于固有的结构和气动驱动原理,PMA的高非线性特性给精确建模和控制的应用带来了巨大挑战。为了解决棘手的问题,构建了单个PMA大规模设置,并采用了反向传播神经网络(BPNN)来识别设置的动力学。使用采样数据构建离线模型,并进行在线修改以进一步提高模型的质量。利用组合模型的梯度下降信息设计了一种基于BPNN的自适应控制器。进行了使用BPNN识别PMA设置并通过自适应BPNN控制器进行位置跟踪的实验,结果证明了精确控制PMA设置的良好能力。

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