Modeling Vertical Planing Boat Motions using a Neural-Corrector Method

K. Marlantes, K. Maki
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引用次数: 3

Abstract

The dynamics of high-speed planing craft are complex and nonlinear. Standard analysis methods, such as linear potential theory, while convenient and computationally efficient, are often not suitable for use in predicting the dynamics of such craft because physical realities or design requirements invalidate the inherent assumptions. High-fidelity methods, such as state-of-the-art CFD simulations, can offer accurate solutions, but these methods are limited by computational cost and numerical sensitivity. In addition, these methods are not efficient enough to provide rapid evaluation of operability, i.e. simulations over a wide range of operating conditions and environments. This leaves few practical analysis options for small, high-speed craft designers who need to perform such predictions. In this paper, the authors present a neural-corrector method that shows promise in providing efficient predictions of vertical planing craft motions. The method retains higher-order terms typically truncated in the classical coupled 2-DOF system of ordinary differential equations using Long Short-Term Memory (LSTM) recurrent neural networks. In this manner, the robust solution provided by the linear model is retained, and the LSTM networks act as higher-order correctors. The correctors primarily regress on the solution, affording familiar numerical integration techniques for systems of nonlinear differential equations. Training and validation results from the method are compared to nonlinear simulations of 2-DOF motion of a Generic Prismatic Planing Hull (GPPH) at forward speed in head seas, with time histories given for both regular and irregular waves.
基于神经校正方法的垂直刨船运动建模
高速刨床飞行器的动力学是复杂的、非线性的。标准的分析方法,如线性势理论,虽然方便且计算效率高,但往往不适合用于预测这种飞行器的动力学,因为物理现实或设计要求使固有的假设无效。高保真度的方法,如最先进的CFD模拟,可以提供准确的解决方案,但这些方法受到计算成本和数值敏感性的限制。此外,这些方法不够有效,无法提供快速的可操作性评估,即在广泛的操作条件和环境下进行模拟。这使得需要进行此类预测的小型高速飞行器设计者很少有实际的分析选择。在本文中,作者提出了一种神经校正方法,该方法有望提供垂直刨船运动的有效预测。该方法利用长短期记忆(LSTM)递归神经网络保留了经典耦合二自由度常微分方程系统中通常被截断的高阶项。通过这种方式,保留了线性模型提供的鲁棒解,并且LSTM网络充当高阶校正器。校正器主要对解进行回归,为非线性微分方程系统提供了熟悉的数值积分技术。将该方法的训练和验证结果与通用棱柱形船体(GPPH)两自由度运动的非线性模拟进行了比较,并给出了规则波和不规则波的时间历史。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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