ROV Motion Control Algorithm Based on RBF Neural Network Compensation
In view of the motion control problem of the operation-type remotely operated vehicles(ROVs) under the uncertainty of model parameters and the disturbance of the external environment, an adaptive double-loop sliding mode control strategy based on radial basis function(RBF) neural network was propose...
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Published in | 水下无人系统学报 Vol. 32; no. 2; pp. 311 - 319 |
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Main Authors | , , , , , |
Format | Journal Article |
Language | Chinese |
Published |
Science Press (China)
01.04.2024
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Subjects | |
Online Access | Get full text |
ISSN | 2096-3920 |
DOI | 10.11993/j.issn.2096-3920.2023-0033 |
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Abstract | In view of the motion control problem of the operation-type remotely operated vehicles(ROVs) under the uncertainty of model parameters and the disturbance of the external environment, an adaptive double-loop sliding mode control strategy based on radial basis function(RBF) neural network was proposed. Firstly, the integral sliding mode control method with an improved reaching law was adopted for controlling the position of the ROV’s outer loop, and the integral sliding mode control method with an exponential reaching law was adopted for controlling the speed of the ROV’s inner loop. Secondly, in order to further improve the chattering problem of sliding mode control, the hyperbolic tangent function was introduced as the sliding mode switching term. Subsequently, the RBF neural network control technology was used to estimate and compensate for the uncertain parameters and external disturbances of the ROV model. Finally, the stability of the whole closed-loop system was proved by using the Lyapunov stability th |
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AbstractList | In view of the motion control problem of the operation-type remotely operated vehicles(ROVs) under the uncertainty of model parameters and the disturbance of the external environment, an adaptive double-loop sliding mode control strategy based on radial basis function(RBF) neural network was proposed. Firstly, the integral sliding mode control method with an improved reaching law was adopted for controlling the position of the ROV’s outer loop, and the integral sliding mode control method with an exponential reaching law was adopted for controlling the speed of the ROV’s inner loop. Secondly, in order to further improve the chattering problem of sliding mode control, the hyperbolic tangent function was introduced as the sliding mode switching term. Subsequently, the RBF neural network control technology was used to estimate and compensate for the uncertain parameters and external disturbances of the ROV model. Finally, the stability of the whole closed-loop system was proved by using the Lyapunov stability th |
Author | Le LI Weidong LIU Liwei GUO Jingming XU Jingbin LIU Shuaijun ZHANG |
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SubjectTerms | adaptive double-loop sliding mode control motion control neural network radial basis function remotely operated vehicle |
Title | ROV Motion Control Algorithm Based on RBF Neural Network Compensation |
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