Adaptive Neural PD Control With Semiglobal Asymptotic Stabilization Guarantee
This paper proves that adaptive neural plus proportional-derivative (PD) control can lead to semiglobal asymptotic stabilization rather than uniform ultimate boundedness for a class of uncertain affine nonlinear systems. An integral Lyapunov function-based ideal control law is introduced to avoid th...
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sg-ntu-dr.10356-819782020-03-07T13:57:26Z Adaptive Neural PD Control With Semiglobal Asymptotic Stabilization Guarantee Pan, Yongping Yu, Haoyong Er, Meng Joo School of Electrical and Electronic Engineering Adaptive approximation Asymptotic stabilization Proportional-derivative (PD) control Radial-basis-function neural network Semiglobal stability Uncertain nonlinear system This paper proves that adaptive neural plus proportional-derivative (PD) control can lead to semiglobal asymptotic stabilization rather than uniform ultimate boundedness for a class of uncertain affine nonlinear systems. An integral Lyapunov function-based ideal control law is introduced to avoid the control singularity problem. A variable-gain PD control term without the knowledge of plant bounds is presented to semiglobally stabilize the closed-loop system. Based on a linearly parameterized raised-cosine radial basis function neural network, a key property of optimal approximation is exploited to facilitate stability analysis. It is proved that the closed-loop system achieves semiglobal asymptotic stability by the appropriate choice of control parameters. Compared with previous adaptive approximation-based semiglobal or asymptotic stabilization approaches, our approach not only significantly simplifies control design, but also relaxes constraint conditions on the plant. Two illustrative examples have been provided to verify the theoretical results. ASTAR (Agency for Sci., Tech. and Research, S’pore) 2016-08-03T08:52:06Z 2019-12-06T14:44:06Z 2016-08-03T08:52:06Z 2019-12-06T14:44:06Z 2014 Journal Article Pan, Y., Yu, H., & Er, M. J. (2014). Adaptive Neural PD Control With Semiglobal Asymptotic Stabilization Guarantee. IEEE Transactions on Neural Networks and Learning Systems, 25(12), 2264-2274. 2162-237X https://hdl.handle.net/10356/81978 http://hdl.handle.net/10220/41049 10.1109/TNNLS.2014.2308571 en IEEE Transactions on Neural Networks and Learning Systems © 2014 IEEE. 11 p. |
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Adaptive approximation Asymptotic stabilization Proportional-derivative (PD) control Radial-basis-function neural network Semiglobal stability Uncertain nonlinear system |
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Adaptive approximation Asymptotic stabilization Proportional-derivative (PD) control Radial-basis-function neural network Semiglobal stability Uncertain nonlinear system Pan, Yongping Yu, Haoyong Er, Meng Joo Adaptive Neural PD Control With Semiglobal Asymptotic Stabilization Guarantee |
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This paper proves that adaptive neural plus proportional-derivative (PD) control can lead to semiglobal asymptotic stabilization rather than uniform ultimate boundedness for a class of uncertain affine nonlinear systems. An integral Lyapunov function-based ideal control law is introduced to avoid the control singularity problem. A variable-gain PD control term without the knowledge of plant bounds is presented to semiglobally stabilize the closed-loop system. Based on a linearly parameterized raised-cosine radial basis function neural network, a key property of optimal approximation is exploited to facilitate stability analysis. It is proved that the closed-loop system achieves semiglobal asymptotic stability by the appropriate choice of control parameters. Compared with previous adaptive approximation-based semiglobal or asymptotic stabilization approaches, our approach not only significantly simplifies control design, but also relaxes constraint conditions on the plant. Two illustrative examples have been provided to verify the theoretical results. |
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School of Electrical and Electronic Engineering |
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School of Electrical and Electronic Engineering Pan, Yongping Yu, Haoyong Er, Meng Joo |
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Article |
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Pan, Yongping Yu, Haoyong Er, Meng Joo |
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Pan, Yongping |
title |
Adaptive Neural PD Control With Semiglobal Asymptotic Stabilization Guarantee |
title_short |
Adaptive Neural PD Control With Semiglobal Asymptotic Stabilization Guarantee |
title_full |
Adaptive Neural PD Control With Semiglobal Asymptotic Stabilization Guarantee |
title_fullStr |
Adaptive Neural PD Control With Semiglobal Asymptotic Stabilization Guarantee |
title_full_unstemmed |
Adaptive Neural PD Control With Semiglobal Asymptotic Stabilization Guarantee |
title_sort |
adaptive neural pd control with semiglobal asymptotic stabilization guarantee |
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2016 |
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https://hdl.handle.net/10356/81978 http://hdl.handle.net/10220/41049 |
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1681041811411304448 |