Physics-informed reservoir computing with autonomously switching readouts: a case study in pneumatic artificial muscles

W. Sun, Nozomi Akashi, Yasuo Kuniyoshi, K. Nakajima
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引用次数: 3

Abstract

We introduce an approach based on physics-informed neural networks to predict the length of a McKibben pneumatic artificial muscle (PAM) from a series of pressure measurements. We implemented an echo state network, which is a type of recurrent neural network with autonomously switching readouts corresponding to the different physical states of the PAM. The physical state we focus on in the current study is the direction of motion affected by hysteresis. The switching is realized by introducing gate architecture, whose states are also controlled by using the same recurrent network that outputs the length of the PAM. We demonstrated that handling the different physical states of the PAM by switching readouts will robustly yield performance in predicting the length of the PAM. We also demonstrated that Gaussian mixture models as a classifier for clustering the reservoir state autonomously and the results in classification are consistent with the physical state of the PAM.
具有自动切换读数的物理信息油藏计算:气动人造肌肉的案例研究
我们引入了一种基于物理信息神经网络的方法,通过一系列压力测量来预测McKibben气动人工肌肉(PAM)的长度。我们实现了一个回声状态网络,它是一种递归神经网络,具有与PAM的不同物理状态相对应的自动切换读出。目前我们研究的物理状态是受迟滞影响的运动方向。通过引入门结构实现切换,门结构的状态也由输出PAM长度的相同循环网络控制。我们证明了通过切换读数来处理PAM的不同物理状态将在预测PAM的长度方面产生可靠的性能。我们还证明了高斯混合模型作为分类器对储层状态进行自主聚类,分类结果与PAM的物理状态一致。
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