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REAL-TIME PARAMETER ESTIMATION OF NONLINEAR VESSEL STEERING MODEL USING SUPPORT VECTOR MACHINE

机译:基于支持向量机的非线性船舶转向模型实时参数估计

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The Least-square support vector machine (LS-SVM) is used to estimate the dynamic parameters of a nonlinear marine vessel steering model in real-time. First, manoeuvring tests are carried out based on a scaled free-running ship model. The parameters are estimated using standard LS-SVM and compared with the theoretical solutions. Then, an online version, a sequential least square support vector machine, is derived and used to estimate the parameters of vessel steering in real-time. The results are compared with the values estimated by standard LS-SVM with batched training data. By comparison, sequential least square support vector machine can dynamically estimate the parameters successfully, and it can be used for designing a dynamic model-based controller of marine vessels.
机译:最小二乘支持向量机(LS-SVM)用于实时估计非线性船舶操纵模型的动态参数。首先,基于比例缩放的自由舰模型进行操纵测试。使用标准LS-SVM估算参数,并将其与理论解进行比较。然后,导出在线版本,即顺序最小二乘支持向量机,并将其用于实时估计船舶操纵参数。将结果与标准LS-SVM估计的值以及批处理的训练数据进行比较。通过比较,顺序最小二乘支持向量机可以成功地动态估计参数,可用于设计基于动态模型的船舶控制器。

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