Application of Neural Network in the Stability of Biped Robot and Embedded Control of Walking Mode
The biped robot adopts the human movement mode. Compared with other movement modes, the gait has good flexibility and adaptability. It is very important in the research of robotics, so it has become a hot spot of robotics research. This article aims to study the application of neural networks in the...
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Format: | Article |
Language: | English |
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Wiley
2022-01-01
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Series: | Journal of Electrical and Computer Engineering |
Online Access: | http://dx.doi.org/10.1155/2022/7474820 |
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author | Jianrui Zhang Zhaohui Yuan Huan Geng Sheng Dong Fuli Zhang Jingchao Li |
author_facet | Jianrui Zhang Zhaohui Yuan Huan Geng Sheng Dong Fuli Zhang Jingchao Li |
author_sort | Jianrui Zhang |
collection | DOAJ |
description | The biped robot adopts the human movement mode. Compared with other movement modes, the gait has good flexibility and adaptability. It is very important in the research of robotics, so it has become a hot spot of robotics research. This article aims to study the application of neural networks in the stability of biped robots and the embedded control of walking mode. A method of establishing precise mathematical modeling and stability analysis is proposed. Based on this model, the motion characteristics of the biped robot’s walking mode and the local stability of joints are studied, and the motion mode of passive walking under the control of the neural network is deeply analyzed, using a neural network to control the stability of biped robot motion and adopting the research method of the embedded control system in walking mode. Essentially, the output value of the physical network is used to judge whether the robot is in a stable position so as to perform appropriate actions and control the robot’s stability of walking. The experimental results show that the biped robot can detect movement and overcome obstacles through related networks and embedded control systems. Through the control of the embedded system, the errors of each joint of the biped robot on flat ground, stairs, and obstacles are greatly reduced. The most obvious reduction of the deviation is that the ankle joint decreases from 2.5 to 0.07 when rotating, and the knee joint angle deviation is reduced from 3.8 to 2, which greatly improves the stability of the biped robot’s walking mode. |
format | Article |
id | doaj-art-90aba5f8dbcc4c86b6f261f01dabfd85 |
institution | Kabale University |
issn | 2090-0155 |
language | English |
publishDate | 2022-01-01 |
publisher | Wiley |
record_format | Article |
series | Journal of Electrical and Computer Engineering |
spelling | doaj-art-90aba5f8dbcc4c86b6f261f01dabfd852025-02-03T01:08:46ZengWileyJournal of Electrical and Computer Engineering2090-01552022-01-01202210.1155/2022/7474820Application of Neural Network in the Stability of Biped Robot and Embedded Control of Walking ModeJianrui Zhang0Zhaohui Yuan1Huan Geng2Sheng Dong3Fuli Zhang4Jingchao Li5School of AutomationSchool of AutomationCollege of Mechanical and Transportation EngineeringSchool of AutomationSchool of AutomationSchool of AutomationThe biped robot adopts the human movement mode. Compared with other movement modes, the gait has good flexibility and adaptability. It is very important in the research of robotics, so it has become a hot spot of robotics research. This article aims to study the application of neural networks in the stability of biped robots and the embedded control of walking mode. A method of establishing precise mathematical modeling and stability analysis is proposed. Based on this model, the motion characteristics of the biped robot’s walking mode and the local stability of joints are studied, and the motion mode of passive walking under the control of the neural network is deeply analyzed, using a neural network to control the stability of biped robot motion and adopting the research method of the embedded control system in walking mode. Essentially, the output value of the physical network is used to judge whether the robot is in a stable position so as to perform appropriate actions and control the robot’s stability of walking. The experimental results show that the biped robot can detect movement and overcome obstacles through related networks and embedded control systems. Through the control of the embedded system, the errors of each joint of the biped robot on flat ground, stairs, and obstacles are greatly reduced. The most obvious reduction of the deviation is that the ankle joint decreases from 2.5 to 0.07 when rotating, and the knee joint angle deviation is reduced from 3.8 to 2, which greatly improves the stability of the biped robot’s walking mode.http://dx.doi.org/10.1155/2022/7474820 |
spellingShingle | Jianrui Zhang Zhaohui Yuan Huan Geng Sheng Dong Fuli Zhang Jingchao Li Application of Neural Network in the Stability of Biped Robot and Embedded Control of Walking Mode Journal of Electrical and Computer Engineering |
title | Application of Neural Network in the Stability of Biped Robot and Embedded Control of Walking Mode |
title_full | Application of Neural Network in the Stability of Biped Robot and Embedded Control of Walking Mode |
title_fullStr | Application of Neural Network in the Stability of Biped Robot and Embedded Control of Walking Mode |
title_full_unstemmed | Application of Neural Network in the Stability of Biped Robot and Embedded Control of Walking Mode |
title_short | Application of Neural Network in the Stability of Biped Robot and Embedded Control of Walking Mode |
title_sort | application of neural network in the stability of biped robot and embedded control of walking mode |
url | http://dx.doi.org/10.1155/2022/7474820 |
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