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An improved particle swarm optimization algorithm applied to long short-term memory neural network for ship motion attitude prediction

机译:一种改进的粒子群优化算法应用于船舶运动姿态预测的长短短期记忆神经网络

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摘要

This paper proposes a prediction method of ship motion attitude with high accuracy based on the long short-term memory neural network. The model parameters should be initialized randomly, resulting in critical decreases of the nonlinear learning ability of current parameter optimization methods. Therefore, a multilayer heterogeneous particle swarm optimization is proposed to optimize the parameters of long short-term memory neural network and applied to the prediction of ship motion. In multilayer heterogeneous particle swarm optimization, this paper proposes the concept of attractors, transforms the speed update equation, enhances the information interaction ability between particles, improves the optimization performance of the particle swarm optimization algorithm, and improves its optimization effect on the parameters of the long short-term memory networks. In the simulations, the measured data were used as input to predict the results of the ship motion. The results showed that the proposed method offers higher learning accuracy, faster convergence speed, and better prediction performance for accurate estimation of ship motion attitude than existing methods.
机译:本文提出了一种基于长短期记忆神经网络的高精度的船舶运动姿态预测方法。应随机初始化模型参数,导致当前参数优化方法的非线性学习能力的临界降低。因此,提出了一种多层异构粒子群优化,以优化长短期记忆神经网络的参数,并应用于船舶运动的预测。在多层异构粒子群优化中,本文提出了吸引子的概念,转换速度更新方程,增强粒子之间的信息交互能力,提高了粒子群优化算法的优化性能,并提高了其对参数的优化效果长短期内存网络。在模拟中,测量的数据被用作输入以预测船舶运动的结果。结果表明,该方法提供了更高的学习精度,更快的收敛速度,更好的预测性能,以便精确估计船舶运动姿态而不是现有方法。

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