Adaptive Neural Fuzzy Inference System Disturbance Observer-Based Control for Reaching Movement of Musculoskeletal Arm Model

Traditional disturbance observer techniques have limitations for multi-input multi-output-coupled systems, time-varying systems with large parameters, and complex systems which are difficult to obtain accurate model, such as the human musculoskeletal arm system. The neural network has advantages of...

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Main Authors: Ting Wang, Aiguo Song
Format: Article
Language:English
Published: IEEE 2018-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8531599/
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spelling doaj-90230b0bcdbc42d48aff169aae54dc742021-03-29T21:22:41ZengIEEEIEEE Access2169-35362018-01-016730307304010.1109/ACCESS.2018.28804648531599Adaptive Neural Fuzzy Inference System Disturbance Observer-Based Control for Reaching Movement of Musculoskeletal Arm ModelTing Wang0https://orcid.org/0000-0001-7414-5390Aiguo Song1https://orcid.org/0000-0002-1982-6780School of Instrument Science and Engineering, Southeast University, Nanjing, ChinaSchool of Instrument Science and Engineering, Southeast University, Nanjing, ChinaTraditional disturbance observer techniques have limitations for multi-input multi-output-coupled systems, time-varying systems with large parameters, and complex systems which are difficult to obtain accurate model, such as the human musculoskeletal arm system. The neural network has advantages of generalized approximation ability, learning ability, and self-adaptive ability. Therefore, this paper develops an adaptive neural fuzzy inference system disturbance observer-based control to achieve the point-to-point control and the path tracking control of the end point of the musculoskeletal arm model. The adaptivity is improved by adjusting the learning algorithm of neural network parameters and the network structure in real time. The uncertainty of the inverse model of the system is solved by constructing a pseudo-system. The adaptive neural fuzzy inference system is used to identify the inverse model of the pseudo-system and to design a compound controller based on feedback control method. The stability is analyzed by Lyapunov function in detail. Furthermore, internal disturbances are suppressed by the learning algorithm of the adaptive neural fuzzy inference system network while external disturbances may be estimated by the multi-input multi-output disturbance observer at the same time. Simulations are performed to verify the point-to-point control and the path tracking control. Results demonstrate that both of the adaptivity and the accuracy are enhanced so that the system can achieve accurate tracking control of any arbitrary trajectory.https://ieeexplore.ieee.org/document/8531599/Reaching movementmusculoskeletal arm modeldisturbance observer-based controlpath tracking
collection DOAJ
language English
format Article
sources DOAJ
author Ting Wang
Aiguo Song
spellingShingle Ting Wang
Aiguo Song
Adaptive Neural Fuzzy Inference System Disturbance Observer-Based Control for Reaching Movement of Musculoskeletal Arm Model
IEEE Access
Reaching movement
musculoskeletal arm model
disturbance observer-based control
path tracking
author_facet Ting Wang
Aiguo Song
author_sort Ting Wang
title Adaptive Neural Fuzzy Inference System Disturbance Observer-Based Control for Reaching Movement of Musculoskeletal Arm Model
title_short Adaptive Neural Fuzzy Inference System Disturbance Observer-Based Control for Reaching Movement of Musculoskeletal Arm Model
title_full Adaptive Neural Fuzzy Inference System Disturbance Observer-Based Control for Reaching Movement of Musculoskeletal Arm Model
title_fullStr Adaptive Neural Fuzzy Inference System Disturbance Observer-Based Control for Reaching Movement of Musculoskeletal Arm Model
title_full_unstemmed Adaptive Neural Fuzzy Inference System Disturbance Observer-Based Control for Reaching Movement of Musculoskeletal Arm Model
title_sort adaptive neural fuzzy inference system disturbance observer-based control for reaching movement of musculoskeletal arm model
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2018-01-01
description Traditional disturbance observer techniques have limitations for multi-input multi-output-coupled systems, time-varying systems with large parameters, and complex systems which are difficult to obtain accurate model, such as the human musculoskeletal arm system. The neural network has advantages of generalized approximation ability, learning ability, and self-adaptive ability. Therefore, this paper develops an adaptive neural fuzzy inference system disturbance observer-based control to achieve the point-to-point control and the path tracking control of the end point of the musculoskeletal arm model. The adaptivity is improved by adjusting the learning algorithm of neural network parameters and the network structure in real time. The uncertainty of the inverse model of the system is solved by constructing a pseudo-system. The adaptive neural fuzzy inference system is used to identify the inverse model of the pseudo-system and to design a compound controller based on feedback control method. The stability is analyzed by Lyapunov function in detail. Furthermore, internal disturbances are suppressed by the learning algorithm of the adaptive neural fuzzy inference system network while external disturbances may be estimated by the multi-input multi-output disturbance observer at the same time. Simulations are performed to verify the point-to-point control and the path tracking control. Results demonstrate that both of the adaptivity and the accuracy are enhanced so that the system can achieve accurate tracking control of any arbitrary trajectory.
topic Reaching movement
musculoskeletal arm model
disturbance observer-based control
path tracking
url https://ieeexplore.ieee.org/document/8531599/
work_keys_str_mv AT tingwang adaptiveneuralfuzzyinferencesystemdisturbanceobserverbasedcontrolforreachingmovementofmusculoskeletalarmmodel
AT aiguosong adaptiveneuralfuzzyinferencesystemdisturbanceobserverbasedcontrolforreachingmovementofmusculoskeletalarmmodel
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