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Modeling of compression properties of needle-punched nonwoven fabrics using artificial neural network

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Title Modeling of compression properties of needle-punched nonwoven fabrics using artificial neural network
 
Creator Debnath, Sanjoy
Madhusoothanan, M
 
Subject Artificial neural network
Compression properties
Jute-polypropylene blends
Needle-punched nonwoven
Polyester fibre
Woollenised jute
 
Description 392-399
The present study is concerned with the modeling of compression properties of needle-punched nonwoven fabrics produced from polyester and blend of jute-polypropylene fibres with varying fabric weight, needling density and blend ratio of jute and polypropylene fibres. Initial thickness, percentage compression, percentage thickness loss and compression resilience are the compression properties predicted with the help of artificial neural networks. A very good correlation (R2 values) with minimum error between the experimental and the predicted values of compression properties have been obtained by ANN with two and three hidden layers. An attempt has also been made for experimental verification of the predicted values for the input variables not used during the training phase. The prediction of compression properties by artificial neural network model in some particular sample is less accurate due to lack of learning during training phase.
 
Date 2008-12-16T08:43:52Z
2008-12-16T08:43:52Z
2008-12
 
Type Article
 
Identifier 0971-0426
http://hdl.handle.net/123456789/2614
 
Language en_US
 
Relation Int. Cl. ⁸ D04H, G06N3/00
 
Publisher CSIR
 
Source IJFTR Vol.33(4) [December 2008]