DocumentCode
2145886
Title
Application of Neural Networks Optimized by Genetic Algorithm in Forecasting Electric Field Aging Technics
Author
Zhan, Jun ; Liu, Xiao-Fang ; Chen, Gui-ming ; Zhang, Qian
Author_Institution
Second Artillery Eng. Inst., Xi´´an
fYear
2008
fDate
30-31 Dec. 2008
Firstpage
19
Lastpage
21
Abstract
In the study, back-propagation neural networks (BP-NN) theory and genetic algorithm (GA) were used to build a nonlinear prediction model reflecting the relationship between technics parameters of electric field aging and mechanical properties of LY12 aluminum alloy. In this model, electric field intensity, aging temperature and time were as input parameters. Tensile strength, yield strength and micro-yield strength were as output parameters. The result shows that BP-NN model has good training ability whose error was less than 0.1%. The maximal error of BP-NN model for forecasting the mechanical properties under selected technics was close to 10%. Using genetic algorithm to optimize BP-NN (GA-BP) can not increase the training ability which had a higher training error in the condition of less experiment datas, but GA-BP model can improve the prediction ability of BP-NN model and the maximal prediction error was less than 4% which lied at rational range. GA-BP model can be used to optimize technics parameters and decrease experimental work and cost which is a new method for studying electric field aging technics.
Keywords
ageing; aluminium alloys; backpropagation; electric field effects; genetic algorithms; mechanical engineering computing; yield strength; BP-NN model; GA-BP model; LY12 alloy; aging temperature; aging time; backpropagation neural networks; electric field aging technic forecasting; electric field intensity; genetic algorithm; maximal prediction error; mechanical properties; microyield strength; nonlinear prediction model; prediction ability; tensile strength; training ability; yield strength; Aging; Aluminum alloys; Artificial neural networks; Genetic algorithms; Information technology; Mechanical factors; Neural networks; Neurons; Predictive models; Temperature; artificial neural networks; back-propagation; electric field aging; genetic algorithm; prediction;
fLanguage
English
Publisher
ieee
Conference_Titel
MultiMedia and Information Technology, 2008. MMIT '08. International Conference on
Conference_Location
Three Gorges
Print_ISBN
978-0-7695-3556-2
Type
conf
DOI
10.1109/MMIT.2008.41
Filename
5089048
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