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Modeling of pneumatic artificial muscle using a hybrid artificial neural network approach

机译:使用混合人工神经网络方法对气动人工肌肉进行建模

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Pneumatic Artificial Muscle (PAM) actuator has been widely used in medical and rehabilitation robots, owing to its high power-to-weight ratio and inherent safety characteristics. However, the PAM exhibits highly non-linear and time variant behavior, due to compressibility of air, use of elastic-viscous material as core tube and pantographic motion of the PAM outer sheath. It is difficult to obtain a precise model using analytical modeling methods. This paper proposes a new Artificial Neural Network (ANN) based modeling approach for modeling PAM actuator. To obtain higher precision ANN model, three different approaches, namely, Back Propagation (BP) algorithm, Genetic Algorithm (GA) approach and hybrid approach combing BP algorithm with Modified Genetic Algorithm (MGA) are developed to optimize ANN parameters. Results show that the ANN model using the GA approach outperforms the BP algorithm, and the hybrid approach shows the best performance among the three approaches. (C) 2015 Elsevier Ltd. All rights reserved.
机译:气动人工肌肉(PAM)执行器因其高的功率重量比和固有的安全特性而被广泛用于医疗和康复机器人中。但是,由于空气的可压缩性,使用弹性粘性材料作为芯管以及PAM外护套的受托运动,PAM表现出高度的非线性和时变行为。使用分析建模方法很难获得精确的模型。本文提出了一种新的基于人工神经网络(ANN)的建模方法来对PAM执行器进行建模。为了获得更高精度的人工神经网络模型,开发了三种不同的方法,即反向传播(BP)算法,遗传算法(GA)方法和将BP算法与改进遗传算法(MGA)相结合的混合方法来优化人工神经网络参数。结果表明,使用GA方法的ANN模型优于BP算法,而混合方法在这三种方法中表现出最好的性能。 (C)2015 Elsevier Ltd.保留所有权利。

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