Improved parameter identification algorithm for ship model based on nonlinear innovation decorated by sigmoid function release_kgxleiuwzbedpkjrwiw7efcwt4

by Xianku Zhang, Baigang Zhao, Guoqing Zhang

Published in Transportation Safety and Environment by Oxford University Press (OUP).

2021  

Abstract

<jats:title>Abstract</jats:title> This paper investigates the problem of parameter identification for ship nonlinear Nomoto model with small test data, a nonlinear innovation-based identification algorithm is presented by embedding sigmoid function in the stochastic gradient algorithm. To demonstrate the validity of the algorithm, an identification test is carried out on the ship 'SWAN' with only 26 sets of test data. Furthermore, the identification effects of the least squares algorithm, original stochastic gradient algorithm and the improved stochastic gradient algorithm based on nonlinear innovation are compared. Generally, the stochastic gradient algorithm is not suitable for the condition of small test data. The simulation results indicate that the improved stochastic gradient algorithm with sigmoid function greatly increases its accuracy of parameter identification and has 14.2% up compared with the least squares algorithm. Then the effectiveness of the algorithm is verified by another identification test on the ship 'Galaxy', the accuracy of parameter identification can reach more than 95% which can be used in ship motion simulation and controller design. The proposed algorithm has advantages of the small test data, fast speed and high accuracy of identification, which can be extended to other parameter identification systems with less sample data.
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Date   2021-06-17
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