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An artificial intelligence-based hybrid method for multi-layered armour systems

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posted on 2019-01-01, 00:00 authored by Filipe Teixeira-Dias, Samuel Thompson, Mariana PaulinoMariana Paulino
The design of protective structures is a complex task mostly due to threat-related unknowns, such as the exact kinetic energy of the impactor and the dominant energy dissipation mechanisms. The design process is often costly and inefficient due to the number of these unknowns and to the cost of necessary steps such as laboratory testing and numerical modelling. In this chapter the authors propose a hybrid method that significantly increases the efficiency of the design process, and consequently decreasing its cost. The method combines an energy-based analytical approach with a set of deep learning (DL) models. Finite Element Analysis (FEA) and experimental results are used to train the artificial intelligence (AI) models and verify and validate the design process. The energy-based analytical method generates solutions for the DL algorithms, which can then be used to find optimal configurations for the protective structure. The proposed deep learning model is a neural network which is trained using experimental results and analytical data, to understand the ballistic response of a specific material, and predict the residual velocity for a given impact velocity, layer thickness and material properties. Networks trained for individual layers of the armour system are then interconnected in order to predict the residual velocity of blunt projectiles perforating multi-layered composite structures. Validation tests are done on systems including single and multi-layered targets.

History

Title of book

State of the art and future trends in material modeling

Volume

100

Series

Advanced structured materials

Chapter number

16

Pagination

381 - 400

Publisher

Springer

Place of publication

Cham, Switzerland

ISSN

1869-8433

eISSN

1869-8441

ISBN-13

9783030303556

Language

eng

Publication classification

B1 Book chapter

Extent

20

Editor/Contributor(s)

Holm Altenbach, Andreas Öchsner

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