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  5. A novel ship short-term speed prediction method under the influence of currents

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Article
English
2024

A novel ship short-term speed prediction method under the influence of currents

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0 Files

English
2024
Ocean Engineering
Vol 304
DOI: 10.1016/j.oceaneng.2024.117847

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Mao Zheng
Mao Zheng

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Wenxiang Wu
Chenguang Liu
Xiumin Chu
+3 more

Abstract

The short-term speed prediction can effectively improve the accuracy and stability of ship motion control, especially for model-based controllers. To acquire accurate speed prediction with specific inputs in future moments during ship sailing, a novel short-term speed prediction method under the influence of currents is proposed. A ship speed model is first built to describe the relationship between the propeller rotation speed and ship navigation speed, which is identified by the least squares method with the moving average filter strategy, i.e., least squares moving average filter (LSMAF). To handle the uncertain currents, a current observer based on PI compensation is designed and embedded in the speed model. Furthermore, an online identification and compensation strategy is designed to reduce the impact of changes in ship load and mechanical conditions, and the step size extended mechanism is proposed to improve the response speed and prediction accuracy. The actual offshore test results show that, compared to the dynamic ship model prediction and inertia prediction method, the average error is reduced by 80.5% and 60.4%, and the mean square error (MSE) is reduced by 93.2% and 84.8%. Moreover, the average error and the MSE are reduced by 36.7% and 77.9% by using the step size extended mechanism.

How to cite this publication

Wenxiang Wu, Chenguang Liu, Xiumin Chu, Daiyong Zhang, Zhibo He, Mao Zheng (2024). A novel ship short-term speed prediction method under the influence of currents. Ocean Engineering, 304, pp. 117847-117847, DOI: 10.1016/j.oceaneng.2024.117847.

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Publication Details

Type

Article

Year

2024

Authors

6

Datasets

0

Total Files

0

Language

English

Journal

Ocean Engineering

DOI

10.1016/j.oceaneng.2024.117847

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