DocumentCode :
3489203
Title :
Neural networks approach to biocomposites processing
Author :
Mondol, Joel-Ahmed M. ; Panigrahi, Satyanarayan ; Gupta, Madan M.
Author_Institution :
Dept. of Electr. & Comput. Eng., Univ. of Saskatchewan, Saskatoon, SK, Canada
fYear :
2011
fDate :
23-26 Aug. 2011
Firstpage :
742
Lastpage :
746
Abstract :
Biological neural networks mathematical counterpart artificial neural networks (or neural networks: NN) have contributed to the evolution of a distinct parallel information processing methodology for computational sciences. Problems such as biocomposites modeling or prediction are complicated to model with traditional statistical and mathematical tools due to the inherent noise in data. NN´s efficient parallel processing capability for pattern recognition, forecasting, system analysis, controls and modeling can aid fast prediction, characterization and modeling of novel biocomposites, provided a good knowledge base is available. For the large knowledge base creation, samples with varying flax fiber (0%-35% with 5% interval) load are created with 2 different operating pressures 1 psi and 1.6 psi (variable operating parameters) to produce compression molded biocomposite boards. These boards go through destructive sampling process to contribute to tensile, impact, hardness, flexural and density data. Using this data a number of neural networks using Matlab® were evaluated to find the optimal neural network architecture. The multilayer feed forward with backpropagation learning (FFBPNN, L1: 10, L2:10, L3: 2) provided best results. It was then further trained with 5 separate training algorithms. Finally the FFBPNN trained with TRAINLM was selected to generate prediction results that were optimal. The trained NN is capable of providing required composition and pressure based on desired mechanical property.
Keywords :
backpropagation; composite materials; feedforward neural nets; parallel processing; pattern recognition; Matlab; artificial neural networks; backpropagation learning; biocomposites processing; biological neural networks; compression molded; computational sciences; density data; flax fiber; flexural data; forecasting; hardness data; impact data; inherent noise; multilayer feed forward; parallel information processing; pattern recognition; system analysis; tensile data; Artificial neural networks; Biological neural networks; Feeds; Neurons; Optical fiber networks; Testing; Training; Biocomposites; Neural networks;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Communications, Computers and Signal Processing (PacRim), 2011 IEEE Pacific Rim Conference on
Conference_Location :
Victoria, BC
ISSN :
1555-5798
Print_ISBN :
978-1-4577-0252-5
Electronic_ISBN :
1555-5798
Type :
conf
DOI :
10.1109/PACRIM.2011.6032986
Filename :
6032986
Link To Document :
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