利用人工智能定义储罐传递函数

P. Schmitt, C. Gillan, C. Finnegan
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引用次数: 1

摘要

实验测试设备通常使用线性传递函数来描述位于波槽中的探头处的造波器强迫振幅与波高之间的关系。二阶和三阶校正方法正在变得可行,但其适用性仅限于某些波的范围。人工智能已经被证明是一个合适的工具来发现甚至是高度非线性的函数关系。本文报道了一个用OpenFOAM软件包实现的人工智能特征的数值波槽。该研究的目的是训练神经网络来表示非线性传递函数,将探测器所需的地表高程时间轨迹映射到创建该时间轨迹所需的波发生器输入。这些初步结果已经证明了该方法的可行性,以及单一装置在广泛的海况和波浪特性下寻找解决方案的适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On the Use of Artificial Intelligence to Define Tank Transfer Functions
Experimental test facilities are generally characterised using linear transfer functions to relate the wavemaker forcing amplitude to wave elevation at a probe located in the wavetank. Second and third order correction methods are becoming available but are limited to certain ranges of waves in their applicability. Artificial intelligence has been shown to be a suitable tool to find even highly nonlinear functional relationships. This paper reports on a numerical wavetank implemented using the OpenFOAM software package which is characterised using artificial intelligence. The aim of the research is to train neural networks to represent non-linear transfer functions mapping a desired surface-elevation time-trace at a probe to the wavemaker input required to create it. These first results already demonstrate the viability of the approach and the suitability of a single setup to find solutions over a wide range of sea states and wave characteristics.
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