Bio-Inspired Real-Time Prediction of Human Locomotion for Exoskeletal Robot Control

Human motion detection is of fundamental importance for control of human–robot coupled systems such as exoskeletal robots. Inertial measurement units have been widely used for this purpose, although delay is a major challenge for inertial measurement unit-based motion capture systems. In this paper,...

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Main Authors: Pu Duan, Shilei Li, Zhuoping Duan, Yawen Chen
Format: Article
Language:English
Published: MDPI AG 2017-11-01
Series:Applied Sciences
Subjects:
Online Access:https://www.mdpi.com/2076-3417/7/11/1130
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spelling doaj-80d5aa14e1854578a4b0e0a36809a57c2020-11-24T23:56:43ZengMDPI AGApplied Sciences2076-34172017-11-01711113010.3390/app7111130app7111130Bio-Inspired Real-Time Prediction of Human Locomotion for Exoskeletal Robot ControlPu Duan0Shilei Li1Zhuoping Duan2Yawen Chen3The State Key Laboratory of Explosion Science and Technology, Beijing Institute of Technology, Beijing 100081, ChinaSchool of Mechatronics Engineering and Automation, Harbin Institute of Technology Shenzhen Graduate School, Shenzhen 518055, ChinaThe State Key Laboratory of Explosion Science and Technology, Beijing Institute of Technology, Beijing 100081, ChinaXeno Dynamics Co. Ltd., Shenzhen 518055, ChinaHuman motion detection is of fundamental importance for control of human–robot coupled systems such as exoskeletal robots. Inertial measurement units have been widely used for this purpose, although delay is a major challenge for inertial measurement unit-based motion capture systems. In this paper, we use previous and current inertial measurement unit readings to predict human locomotion based on their kinematic properties. Human locomotion is a synergetic process of the musculoskeletal system characterized by smoothness, high nonlinearity, and quasi-periodicity. Takens’ reconstruction method can well characterize quasi-periodicity and nonlinear systems. With Takens’ reconstruction framework, we developed improving methods, including Gaussian coefficient weighting and offset correction (which is based on the smoothness of human locomotion), Kalman fusion with complementary joint data prediction and united source of historical embedding generation (which is synergy-inspired), and Kalman fusion with the Newton-based method with a velocity and acceleration high-gain observer (also based on smoothness). After thorough analysis of the parameters and the effect of these improving techniques, we propose a novel prediction method that possesses the combined advantages of parameter robustness, high accuracy, trajectory smoothness, zero dead time, and adaptability to irregularities. The proposed methods were tested and validated by experiments, and the real-time applicability in a human locomotion capture system was also validated.https://www.mdpi.com/2076-3417/7/11/1130real-time predictionTakens’ reconstruction methodhuman locomotionsynergydata fusion
collection DOAJ
language English
format Article
sources DOAJ
author Pu Duan
Shilei Li
Zhuoping Duan
Yawen Chen
spellingShingle Pu Duan
Shilei Li
Zhuoping Duan
Yawen Chen
Bio-Inspired Real-Time Prediction of Human Locomotion for Exoskeletal Robot Control
Applied Sciences
real-time prediction
Takens’ reconstruction method
human locomotion
synergy
data fusion
author_facet Pu Duan
Shilei Li
Zhuoping Duan
Yawen Chen
author_sort Pu Duan
title Bio-Inspired Real-Time Prediction of Human Locomotion for Exoskeletal Robot Control
title_short Bio-Inspired Real-Time Prediction of Human Locomotion for Exoskeletal Robot Control
title_full Bio-Inspired Real-Time Prediction of Human Locomotion for Exoskeletal Robot Control
title_fullStr Bio-Inspired Real-Time Prediction of Human Locomotion for Exoskeletal Robot Control
title_full_unstemmed Bio-Inspired Real-Time Prediction of Human Locomotion for Exoskeletal Robot Control
title_sort bio-inspired real-time prediction of human locomotion for exoskeletal robot control
publisher MDPI AG
series Applied Sciences
issn 2076-3417
publishDate 2017-11-01
description Human motion detection is of fundamental importance for control of human–robot coupled systems such as exoskeletal robots. Inertial measurement units have been widely used for this purpose, although delay is a major challenge for inertial measurement unit-based motion capture systems. In this paper, we use previous and current inertial measurement unit readings to predict human locomotion based on their kinematic properties. Human locomotion is a synergetic process of the musculoskeletal system characterized by smoothness, high nonlinearity, and quasi-periodicity. Takens’ reconstruction method can well characterize quasi-periodicity and nonlinear systems. With Takens’ reconstruction framework, we developed improving methods, including Gaussian coefficient weighting and offset correction (which is based on the smoothness of human locomotion), Kalman fusion with complementary joint data prediction and united source of historical embedding generation (which is synergy-inspired), and Kalman fusion with the Newton-based method with a velocity and acceleration high-gain observer (also based on smoothness). After thorough analysis of the parameters and the effect of these improving techniques, we propose a novel prediction method that possesses the combined advantages of parameter robustness, high accuracy, trajectory smoothness, zero dead time, and adaptability to irregularities. The proposed methods were tested and validated by experiments, and the real-time applicability in a human locomotion capture system was also validated.
topic real-time prediction
Takens’ reconstruction method
human locomotion
synergy
data fusion
url https://www.mdpi.com/2076-3417/7/11/1130
work_keys_str_mv AT puduan bioinspiredrealtimepredictionofhumanlocomotionforexoskeletalrobotcontrol
AT shileili bioinspiredrealtimepredictionofhumanlocomotionforexoskeletalrobotcontrol
AT zhuopingduan bioinspiredrealtimepredictionofhumanlocomotionforexoskeletalrobotcontrol
AT yawenchen bioinspiredrealtimepredictionofhumanlocomotionforexoskeletalrobotcontrol
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