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首页> 外文期刊>Latin American Journal of Solids and Structures >Extracting the Solution of Three-Dimensional Wave Diffraction Problem from Two-Dimensional Analysis by Introducing an Artificial Neural Network for Floating Objects
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Extracting the Solution of Three-Dimensional Wave Diffraction Problem from Two-Dimensional Analysis by Introducing an Artificial Neural Network for Floating Objects

机译:通过引入浮动物体人工神经网络来提取三维波衍射问题的三维波衍射问题的解

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The diffraction of the waves from the two ends of floating breakwaters (FBWs) that have limited length, are practically a three-dimensional (3D). In order to perform a two-dimensional vertical (2DV) analysis to solve the wave diffraction problem, some “correcting factors” are required to modify the 2DV results and make them comparable and verifiable against 3D solutions. The main objective of the current study is to propose a method to obtain these correcting factors and demonstrate its usefulness through some example cases. An Artificial Neural Network (ANN) is trained by three main non-dimensional independent variables to predict the mentioned factors. In order to set up the ANN, a database including both 2DV and 3D results is required. The 2DV results are obtained by employing a semi-analytical method, namely the Scaled Boundary Finite Element Method (SBFEM). A basic change in the location of the scaling center is implemented. The 3D results are obtained via ANSYS AQWA software. Eighty-one cases are simulated on a floating object with rectangular cross-sections. The correlation factor R = 0.9607 for a group of new samples shows that the predicted results are closely matched to the target values. The correcting factor applies the 3D effects of diffracted waves around the structures on 2DV results and produces a more accurate prediction.
机译:从具有有限长度的浮动防波泳(FBW)的两端的波的衍射实际上是三维(3D)。为了执行二维垂直(2DV)分析来解决波衍射问题,需要一些“校正因子”来修改2DV结果并使它们与3D解决方案相当和可验证。目前研究的主要目的是提出一种方法来获得这些纠正因素,并通过一些示例案例证明其有用性。人工神经网络(ANN)由三个主要的非维度独立变量培训,以预测所提到的因素。为了设置ANN,需要包括2DV和3D结果的数据库。通过采用半分析方法,即缩放边界有限元方法(SBFEM)获得2DV结果。实现了缩放中心位置的基本变化。通过ANSYS AQWA软件获得3D结果。在具有矩形横截面的浮动物体上模拟八十一例。对于一组新样本的相关因子R = 0.9607表明预测结果与目标值紧密相匹配。校正因子在2DV结果上施加衍射波的衍射波的3D效果,并产生更准确的预测。

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