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Parameters’ Identification of Vessel Based on Ant Colony Optimization Algorithm

机译:基于蚁群优化算法的血管识别

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In this paper, the ant colony optimization (ACO) method is used to identify the parameters of a 3-DOF nonlinear vessel model. Identifying the parameters is abstracted as a nonlinear optimization problem to solve through the ant colony optimization algorithm. The identification procedure is divided into two parts. The first part of the identification procedure is to identify the parameters related to surge motion. The second part of the identification procedure is to identify the rest parameters of the vessel’s kinetics model. In the surge model identification procedure, the transient motor speed is used to generate the training data, and in the sway and yaw motion identification procedure, the zigzag maneuvering with different motor speeds is used to generate the training data. All the parameters are identified by the ACO method and the least-square (LS) method based on the training data and then validated on the validation data. The prediction performance of parameters identified by different methods is compared in the simulation to demonstrate the effectiveness of the ACO algorithm.
机译:在本文中,蚁群优化(ACO)方法用于识别3-DOF非线性容器模型的参数。识别参数被抽象为通过蚁群优化算法解决的非线性优化问题。识别程序分为两部分。识别过程的第一部分是识别与浪涌运动有关的参数。识别程序的第二部分是识别船舶动力学模型的其余参数。在浪涌模型识别过程中,瞬态电动机速度用于产生训练数据,并且在摇摆和偏航运动识别过程中,使用不同电机速度的锯齿格操纵用于产生训练数据。所有参数都是通过基于训练数据的ACO方法和最小二乘(LS)方法来识别,然后在验证数据上验证。在模拟中比较了通过不同方法识别的参数的预测性能,以证明ACO算法的有效性。

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