会议专题

A Wavelet-analysis-based Change Point Model for Process Monitoring

The change-point problem originates from the applied research area of industry. Many approaches have been proposed in literature to solve the change point problems, such as likelihood method, Bayesian method, nonparametric method, information criterion method, and etc. However, these existing approaches mostly have to know the distribution or the number of the change point of observations in a process previously. And they also need a certain amount of historical data. However, data from most practical processes contain information both in time domain and frequency domain. The distributions of the data or the number of the change point the data have are always unknown. In this case, the wavelet theory is more capable of solving the change point problem then other existing approaches. In this paper, we present an approach for how to use the wavelet theory to find out change points in a time series, including the probability analysis, the identification of a change point, the method of choosing types of wavelet, and a general frame work of this approach. A case study is carried out to show that the wavelet method suggested in this paper has good properties.

Change point model Wavelet analysis Control chart Average run length

Jinlong Cao Yiyong Xiao

School of Reliability and System Engineering Beihang University Beijing, P. R. China

国际会议

2011 9th International Conference on Reliability,Maintainability and Safety(第九届国际可靠性、维修性、安全性会议 ICRMS2011)

贵阳

英文

1347-1353

2011-06-12(万方平台首次上网日期,不代表论文的发表时间)