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Buckling load prediction of laminated composite stiffened panels subjected to in-plane shear using artificial neural networks

机译:人工神经网络在面内剪切作用下复合材料加劲板的屈曲载荷预测

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摘要

Stiffened panels are basic building blocks of weight sensitive structures. Design of laminated composite stiffened panels is more involved and requires the use of an optimization approach, which needs a computationally efficient analysis tool. This paper deals with the development of an analytical and computationally efficient analysis tool using artificial neural networks (ANN) for predicting the buckling load of laminated composite stiffened panels subjected to in-plane shear loading. The database for training and testing is prepared using finite element analysis. Studies are carried out by changing the panel orthotropy ratio, stiffener depth, pitch length (number of stiffeners). Using the database, key parameters are identified and a neural network is trained. The results shows that the trained neural network can predict the shear buckling load of laminated composite stiffened panels accurately and will be very useful in optimization applications where computational efficiency is paramount. (C) 2016 Elsevier Ltd. All rights reserved.
机译:加筋板是重量敏感结构的基本组成部分。层压复合材料加劲板的设计更加复杂,需要使用优化方法,这需要计算效率高的分析工具。本文研究了一种使用人工神经网络(ANN)的分析和计算效率高的分析工具的开发方法,该工具可预测承受面内剪切载荷的层状复合材料加劲板的屈曲载荷。使用有限元分析准备用于培训和测试的数据库。通过改变面板的正交各向异性比,加劲肋深度,节距长度(加劲肋数量)进行研究。使用该数据库,可以识别关键参数并训练神经网络。结果表明,经过训练的神经网络可以准确地预测层压复合材料加劲板的剪切屈曲载荷,在计算效率至关重要的优化应用中将非常有用。 (C)2016 Elsevier Ltd.保留所有权利。

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