Title of article :
Investigation and modeling on protective textiles using artificial neural networks for defense applications
Author/Authors :
Ramaiah، نويسنده , , Gurumurthy B. and Chennaiah، نويسنده , , Radhalakshmi Y. and Satyanarayanarao، نويسنده , , Gurumurthy K.، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2010
Abstract :
Kevlar 29 is a class of Kevlar fiber used for protective applications primarily by the military and law enforcement agencies for bullet resistant vests, hence for these reasons military has found that armors reinforced with Kevlar 29 multilayer fabrics which offer 25–40% better fragmentation resistance and provide better fit with greater comfort. The objective of this study is to investigate and develop an artificial neural network model for analyzing the performance of ballistic fabrics made from Kevlar 29 single layer fabrics using their material properties as inputs. Data from fragment simulation projectile (FSP) ballistic penetration measurements at 244 m/s has been used to demonstrate the modeling aspects of artificial neural networks. The neural network models demonstrated in this paper is based on back propagation (BP) algorithm which is inbuilt in MATLAB 7.1 software and is used for studies in science, technology and engineering. In the present research, comparisons are also made between the measured values of samples selected for building the neural network model and network predicted results. The analysis of the results for network predicted and experimental samples used in this study showed similarity.
Keywords :
Bayesian Information Criterion , Specific tenacity , Kevlar 29 , Specific modulus , Fragment simulation projectile , Back-propagation neural networks , Dissipated Energy
Journal title :
MATERIALS SCIENCE & ENGINEERING: B
Journal title :
MATERIALS SCIENCE & ENGINEERING: B