AN EXPLORATORY-STUDY OF A NEURAL-NETWORK APPROACH FOR RELIABILITY DATA-ANALYSIS

被引:45
作者
LIU, MC [1 ]
KUO, W [1 ]
SASTRI, T [1 ]
机构
[1] TEXAS A&M UNIV,DEPT IND ENGN,COLLEGE STN,TX 77843
关键词
NEURAL NETWORKS; DISTRIBUTION PARAMETER ESTIMATION;
D O I
10.1002/qre.4680110206
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
The results of this paper show that neural networks could be a very promising tool for reliability data analysis. Identifying the underlying distribution of a set of failure data and estimating its distribution parameters are necessary in reliability engineering studies. In general, either a chi-square or a nonparametric goodness-of-fit test is used in the distribution identification process which includes the pattern interpretation of the failure data histograms. However, those procedures can guarantee neither an accurate distribution identification nor a robust parameter estimation when small data samples are available. Basically, the graphical approach of distribution fitting is a pattern recognition problem and parameter estimation is a classification problem where neural networks have been proved to be a suitable tool. This paper presents an exploratory study of a neural network approach, validated by simulated experiments, for analysing small-sample reliability data. A counter-propagation network is used in classifying normal, uniform, exponential and Weibull distributions. A back-propagation network is used in the parameter estimation of a two-parameter Weibull distribution.
引用
收藏
页码:107 / 112
页数:6
相关论文
共 12 条
[1]  
Banks J, 1984, DISCRETE EVENT SYSTE
[2]  
Conover William Jay, 1998, PRACTICAL NONPARAMET, V350
[3]  
Dayhoff JE., 1990, NEURAL NETWORK ARCHI
[4]  
Hecht-Nielsen R., 1991, NEUROCOMPUTING
[5]  
HECHTNIELSEN R, 1987, P INT C NEURAL NETWO, V2, P19
[6]  
Law AM., 2007, SIMULATION MODELING, V4
[7]  
Lewis E. E., 1987, INTRO RELIABILITY EN
[8]  
Schalkoff R.J., 1991, PATTERN RECOGNITION
[9]  
WALPOLE RE, 1993, PROBABILITY STATISTI
[10]  
WASSERMAN PD, 1989, NEURAL COMPUTING