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Application of Game-theoretic Learning to Gray-box Modeling of McKibben Pneumatic Artificial Muscle Systems

机译:游戏理论学习在Mckibben气动人工肌肉系统灰盒建模中的应用

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We consider a gray-box modeling of a McKibben pneumatic artificial muscle (PAM) actuated by a proportional directional control valve. This paper presents a hybrid nonlinear model of the PAM system and then proposes a systematic parameter identification procedure that uses a game-theoretic learning algorithm to obtain the appropriate parameter values for the modeling. With a practical example, finally, we verify the proposed method by illustrating a process of searching for the parameter values together with figures of after-and-before learning. As a result, we see that the resulting parameters are better than ones obtained by our previously-proposed heuristic and trial-and-error-based algorithm.
机译:我们考虑由比例方向控制阀驱动的Mckiben气动人造肌肉(PAM)的灰度盒建模。本文介绍了PAM系统的混合非线性模型,然后提出了一种系统参数识别过程,它使用游戏理论学习算法来获得建模的适当参数值。通过一个实际的例子,最后,我们通过说明与在学习之后的后和之前的图中一起搜索参数值的过程来验证所提出的方法。结果,我们看到所产生的参数优于我们先前提出的启发式和基于试误算法所获得的参数。

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