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Ship motion prediction using dynamic seasonal RvSVR with phase space reconstruction and the chaos adaptive efficient FOA

机译:使用具有相空间重构和混沌自适应有效FOA的动态季节性RvSVR的船舶运动预测

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摘要

Affected by coupling effect of 6 DOF motions, especially by the chaos characteristic, variable periodicity and noise signal of ship motion time series, it is difficult to obtain precise forecasting results of ship motion. In order to improve the forecast precision, firstly, aiming at the chaos characteristics of ship motion time series, based on the theory of the space reconstruction, this paper, employed the G-P method to determine the embedding dimension in, selected the mutual information to calculate the delay time tau, and established a chaos system reconstruction method appropriate for ship motion prediction, for rebuilding the chaotic systems of ship motion time series; Then, directing at cycle variability of the ship motion time series under different working conditions, a dynamic seasonal adjustment mechanism(namely DSAM) was designed, in view of the ship motion time series contain noise signals, robust loss function was introduced to the SVR model, and a new dynamic seasonal robust v-support vector regression forecasting model, namely DSRvSVR, was proposed and used to simulate the built chaotic systems of ship motion time series; Thirdly, in order to obtain more appropriate parameters of the DSRvSVR model, considering with shortcomings of FOA, this paper designed adaptive efficient flight guidance law (AEFGL), establish global chaos perturbation mechanism (GCPM), and established a chaos adaptive efficient fruit fly optimization algorithm, namely CAEFOA; Finally, coupling the proposed PSR method, DSRvSVR model and CAEFOA, a hybrid forecasting approach for ship motion forecasting, namely PSR-DSRvSVR-CAEFOA, was established. Subsequently, the ship heave time series under four working conditions were used to conduct numerical example, to test forecast performance of the proposed PSR-DSRvSVR-CAEFOA approach and optimize performance of CAEFOA. Analysis results showed that the proposed hybrid forecasting approach receive better forecasting performance compared with classical prediction models selected in this paper, and the CAEFOA obtain higher optimization efficiency than FOA. (C) 2015 Elsevier B.V. All rights reserved.
机译:受6自由度运动耦合效应的影响,特别是受船舶运动时间序列的混沌特性,周期性变化和噪声信号的影响,很难获得精确的船舶运动预测结果。为了提高预测精度,首先针对船舶运动时间序列的混沌特性,基于空间重构理论,采用GP方法确定嵌入维数,选择互信息进行计算。建立了延迟时间tau,建立了适合船舶运动预测的混沌系统重建方法,用于重建船舶运动时间序列的混沌系统。然后,针对不同工况下船舶运动时间序列的周期变化,设计了动态季节性调整机制(DSAM),针对船舶运动时间序列包含噪声信号,将鲁棒损失函数引入SVR模型。提出了一种新的动态季节性鲁棒v支持向量回归动态预测模型DSRvSVR,用于模拟船舶运动时间序列的混沌系统。第三,为了获得更合适的DSRvSVR模型参数,考虑到FOA的缺点,设计了自适应有效飞行制导律(AEFGL),建立了全局混沌扰动机制(GCPM),建立了混沌自适应高效果蝇优化算法算法,即CAEFOA;最后,结合提出的PSR方法,DSRvSVR模型和CAEFOA,建立了船舶运动预测的混合预测方法,即PSR-DSRvSVR-CAEFOA。随后,利用船舶在四个工况下的升沉时间序列进行数值算例,以测试所提出的PSR-DSRvSVR-CAEFOA方法的预测性能并优化CAEFOA的性能。分析结果表明,与本文选择的经典预测模型相比,本文提出的混合预测方法具有更好的预测性能,并且CAEFOA的优化效率高于FOA。 (C)2015 Elsevier B.V.保留所有权利。

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