Abstract

Structural optimization using computational tools has become a major research field in recent years. Methods commonly used in structural analysis and optimization may demand considerable computational cost, depending on the problem complexity. Therefore, many techniques have been evaluated in order to diminish such impact. Among these various techniques, Artificial Neural Networks (ANN) may be considered as one of the main alternatives, when combined with classic analysis and optimization methods, to reduce the computational effort without affecting the final solution quality. Use of laminated composite structures has been continuously growing in the last decades due to the excellent mechanical properties and low weight characterizing these materials. Taken into account the increasing scientific effort in the different topics of this area, the aim of the present work is the formulation and implementation of a computational code to optimize manufactured complex laminated structures with a relatively low computational cost by combining the Finite Element Method (FEM) for structural analysis, Genetic Algorithms (GA) for structural optimization and ANN to approximate the finite element solutions. The modules for linear and geometrically non-linear static finite element analysis and for optimize laminated composite plates and shells, using GA, were previously implemented. Here, the finite element module is extended to analyze dynamic responses to solve optimization problems based in frequencies and modal criteria, and a perceptron ANN module is added to approximate finite element analyses. Several examples are presented to show the effectiveness of ANN to approximate solutions obtained using the FEM and to reduce significatively the computational cost.

Highlights

  • The structural optimization is not a new field

  • The Artificial Neural Network (ANN) have been shown to be a good alternative to avoid the large number of Finite Element Analysis (FEA) involved in a Genetic Algorithms (GA)

  • A general Multilayer Perceptron Network (MPN) architecture consists on a layered network fully connected, i.e., all neurons belonging to a layer are, each one, connected to the previous and the layer

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Summary

INTRODUCTION

The structural optimization is not a new field Galileo in his text “Discorsi e Dimostrazioni Matematiche intorno a due Nuove Scienze” (1638) studied the problem which consists of finding the shape of a beam where every transversal section has the same stress distribution. A problem that arises when GAs are used is the high computational cost demanded by this method. The Artificial Neural Network (ANN) have been shown to be a good alternative to avoid the large number of FEA involved in a GA. In this work these two techniques are combined to make the process faster and cheaper in terms of computational cost. This work is based on [2], from which some GA parameters, objective functions and results are taken in order to compare the effectiveness of substituting a complete FEA by ANN

STRUCTURAL OPTIMIZATION
Structural analysis
Genetic algorithms for composite materials
ARTIFICIAL NEURAL NETWORKS
Multilayer perceptrons
Artificial neural networks and genetic algorithms
NUMERICAL EXAMPLES AND DISCUSSION
Graphite-epoxy
Results
E2 G12 ν12 ρ
Natural frequency maximization of a laminated plate
Result
FINAL REMARKS
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