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Ship motion stabilizing control using a combination of model predictive control and an adaptive input disturbance predictor

Ship motion stabilizing control using a combination of model predictive control and an adaptive input disturbance predictor
Ship motion stabilizing control using a combination of model predictive control and an adaptive input disturbance predictor
When ships travel on the high seas, changes in the sea states and the sailing conditions induce significant uncertainties in the hydrodynamics, leading to deterioration in the performance of traditional stabilization systems. To overcome this problem, a combination of model predictive control (MPC) and an adaptive input disturbance predictor is proposed. This combination predicts the wave disturbance force by using an auto-regressive model of the input disturbance and then compensating for the predicted disturbance in the MPC framework. MPC is more appropriate than classical control when dealing with constraints. The adaptive disturbance model enhances not only the ship adaptability when travelling in varying sea conditions but also the robustness of the control system with model uncertainties. This combines the advantages of MPC and the adaptive model, and avoids performance degradations caused by estimation errors of the state observer which is commonly used within the MPC framework to estimate output disturbances. A numerical simulation shows that this combination works very well.
model predictive control, ship motion stabilizing, input disturbance, autoregression
0959-6518
591-602
Liu, J.
516e902e-000e-4f9c-b9bc-bac18b1f5ade
Allen, R.
956a918f-278c-48ef-8e19-65aa463f199a
Yi, H.
33251f0f-742a-4c39-9c80-9c9120dbc8b1
Liu, J.
516e902e-000e-4f9c-b9bc-bac18b1f5ade
Allen, R.
956a918f-278c-48ef-8e19-65aa463f199a
Yi, H.
33251f0f-742a-4c39-9c80-9c9120dbc8b1

Liu, J., Allen, R. and Yi, H. (2011) Ship motion stabilizing control using a combination of model predictive control and an adaptive input disturbance predictor. Proceedings of the Institution of Mechanical Engineers, Part I: Journal of Systems and Control Engineering, 225 (5), 591-602. (doi:10.1177/2041304110394569).

Record type: Article

Abstract

When ships travel on the high seas, changes in the sea states and the sailing conditions induce significant uncertainties in the hydrodynamics, leading to deterioration in the performance of traditional stabilization systems. To overcome this problem, a combination of model predictive control (MPC) and an adaptive input disturbance predictor is proposed. This combination predicts the wave disturbance force by using an auto-regressive model of the input disturbance and then compensating for the predicted disturbance in the MPC framework. MPC is more appropriate than classical control when dealing with constraints. The adaptive disturbance model enhances not only the ship adaptability when travelling in varying sea conditions but also the robustness of the control system with model uncertainties. This combines the advantages of MPC and the adaptive model, and avoids performance degradations caused by estimation errors of the state observer which is commonly used within the MPC framework to estimate output disturbances. A numerical simulation shows that this combination works very well.

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More information

Published date: June 2011
Keywords: model predictive control, ship motion stabilizing, input disturbance, autoregression
Organisations: Signal Processing & Control Grp

Identifiers

Local EPrints ID: 196027
URI: http://eprints.soton.ac.uk/id/eprint/196027
ISSN: 0959-6518
PURE UUID: 95174857-b0a2-42b8-b50b-a98232e4ab19

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Date deposited: 01 Sep 2011 10:52
Last modified: 14 Mar 2024 04:06

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Contributors

Author: J. Liu
Author: R. Allen
Author: H. Yi

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