Artificial neural network–based constitutive relation modelling for the laminated fabric used in stratospheric airship

Minjun Gao, Junhui Meng, Nuo Ma, Moning Li, Li Liu
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引用次数: 1

Abstract

There have been gradually increasing interests in the stratospheric airship (SSA) as a cost-effective alternative to earth orbit satellites for telecommunication and high-resolution earth observation. Lightweight and high strength envelopes are the keys to the design of SSAs as it directly determines the endurance flight performance and loading deformation characteristics of the airship. Typical SSA envelope material is a laminated fabric, which is composed of fabric layer and other functional layers. Compared with conventional composite structures, the laminated fabric has complex nonlinear mechanical characteristics. Artificial neural network (ANN) has good processing ability to nonlinear information so that it is suitable to model the constitutive relation of laminated fabrics. In this work, an ANN based on the Scaled Conjugate Gradient (SCG) algorithm is proposed firstly to model the constitutive relation of fabric Uretek3216LV. Considering significant errors of the SCG ANN results, the network model is optimized through methods of selecting the number of hidden-layer nodes and training algorithms. Results show that the improved network model based on Bayesian Regularization (BR) algorithm and eight nodes of single hidden layer can better describe the constitutive relation of the laminated fabric than other conventional training algorithms. The proposed constitutive modelling method with ANN is expected to gain a deeper understanding of the mechanical mechanism and guide structural design of envelope material in further work.
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基于人工神经网络的平流层飞艇层合织物本构关系建模
人们对平流层飞艇(SSA)作为一种具有成本效益的替代地球轨道卫星进行电信和高分辨率地球观测的方法的兴趣逐渐增加。轻量化、高强度的包壳结构直接决定着飞艇的持久飞行性能和载荷变形特性,是SSAs设计的关键。典型的SSA包封材料是由织物层和其他功能层组成的层压织物。与传统复合材料结构相比,层压织物具有复杂的非线性力学特性。人工神经网络对非线性信息具有良好的处理能力,适合于层叠织物的本构关系建模。本文首先提出了一种基于缩放共轭梯度(SCG)算法的人工神经网络,对织物Uretek3216LV的本构关系进行建模。考虑到SCG神经网络结果误差较大,通过选择隐藏层节点数和训练算法对网络模型进行优化。结果表明,基于贝叶斯正则化(BR)算法和单隐层8个节点的改进网络模型比其他常规训练算法能更好地描述层状织物的本构关系。本文提出的基于人工神经网络的本构建模方法有望在进一步的工作中对围护结构材料的力学机理和结构设计有更深入的了解。
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