Title :
A New Intelligent Design Method for Building Material Fatigue S-N Curve
Author :
Wan, Yi ; Wu, Chengwen
Author_Institution :
Coll. of Phys. & Electron. Inf. Eng., Wenzhou Univ., Wenzhou, China
Abstract :
It is the basis of material fatigue reliability analysis to obtain fatigue S-N curve, The curve is usually obtained from experiment or by fitting many data of loading test basis on three parameters empirical formula, but those methods are complex, high expense and imprecision. In accordance with these disadvantages above methods, a new intelligent method based on common machine learning algorithm (support vector machine) is presented to obtain S-N curve of material fatigue economically and effectively. Complicated and strong nonlinear S-N curve was simulated by design and conformation of support vector machine learning algorithm, compared the errors with output value of the intelligent model, test value and output value from fitting values of three parameters power function, support vector machine learning algorithm had excellent ability of nonlinear modeling and generalization. It gained high precision under limited learning samples and mean relative error is 0.008954%, it provided an economical, practical and reliable approach for material fatigue design.
Keywords :
building materials; fatigue testing; learning (artificial intelligence); reliability theory; support vector machines; building material fatigue design; empirical formula; fatigue S-N curve; machine learning algorithm; material fatigue reliability analysis; nonlinear generalization; nonlinear modeling; parameters power function; reliability analysis; stress-lifetime curve; support vector machine learning algorithm; Building materials; Curve fitting; Design methodology; Fatigue; Intelligent structures; Learning systems; Machine learning algorithms; Materials reliability; Power generation economics; Support vector machines; Optimized support vector machine learning algorithm; S-N curve; material fatigue design; nonlinear relation; parameter fitting;
Conference_Titel :
E-Learning, E-Business, Enterprise Information Systems, and E-Government, 2009. EEEE '09. International Conference on
Conference_Location :
Hong Kong
Print_ISBN :
978-0-7695-3907-2
DOI :
10.1109/EEEE.2009.32