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Hybridized neural network inspired behavioural modelling of pneumatic artificial muscles for assistive robotic applications

Aman Arora (Robotics and Automation Group, CSIR – Central Mechanical Engineering Research Institute, Durgapur, India and Department of Mechanical Engineering, NIT-Durgapur, Durgapur, India)
Debadrata Sarkar (Robotics and Automation Group, CSIR – Central Mechanical Engineering Research Institute, Durgapur, India)
Arunabha Majumder (Robotics and Automation Group, CSIR – Central Mechanical Engineering Research Institute, Durgapur, India)
Soumen Sen (Robotics and Automation Group, CSIR – Central Mechanical Engineering Research Institute, Durgapur, India)
Shibendu Shekhar Roy (Department of Mechanical Engineering, NIT-Durgapur, Durgapur, India)

Industrial Robot

ISSN: 0143-991x

Article publication date: 10 June 2022

Issue publication date: 2 January 2023

144

Abstract

Purpose

This paper aims to devise a first-of-its-kind methodology to determine the design, operating conditions and actuation strategy of pneumatic artificial muscles (PAMs) for assistive robotic applications. This requires extensive characterization, data set generation and meaningful modelling between PAM characteristics and design variables. Such a characterization should cover a wide range of design and operation parameters. This is a stepping stone towards generating a design guide for this highly popular compliant actuator, just like any conventional element of a mechanism.

Design/methodology/approach

Characterization of a large pool of custom fabricated PAMs of varying designs is performed to determine their static and dynamic behaviours. Metaheuristic optimizer-based artificial neural network (ANN) structures are used to determine eight different models representing PAM behaviour. The assistance of knee flexion during level walking is targeted for evaluating the applicability of the developed actuator by attaching a PAM across the joint. Accordingly, the PAM design and the actuation strategy are optimized through a tabletop emulator.

Findings

The dependence of passive length, static contraction, dynamic step response for inflation and deflation of the PAMs on their design dimensions and operating parameters is successfully modelled by the ANNs. The efficacy of these models is investigated to successfully optimize the PAM design, operation parameters and actuation strategy for using a PAM in assisting knee flexion in human gait.

Originality/value

Characterization of static and the dynamic behaviour of a large pool of PAMs with varying designs over a wide range of operating conditions is the novel feature in this article. A lucid customizable fabrication technique is discussed to obtain a wide variety of PAM designs. Metaheuristic-based ANNs are used for tackling high non-linearity in data while modelling the PAM behaviour. An innovative tabletop emulator is used for investigating the utility of the models in the possible application of PAMs in assistive robotics.

Keywords

Citation

Arora, A., Sarkar, D., Majumder, A., Sen, S. and Roy, S.S. (2023), "Hybridized neural network inspired behavioural modelling of pneumatic artificial muscles for assistive robotic applications", Industrial Robot, Vol. 50 No. 1, pp. 56-69. https://doi.org/10.1108/IR-03-2022-0060

Publisher

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Emerald Publishing Limited

Copyright © 2022, Emerald Publishing Limited

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