Title :
Reliability prognostics for electronics via built-in diagnostic tools
Author :
Jin, Tongdan ; Wang, Peng ; Sun, Quan
Author_Institution :
Ingram Sch. of Eng., Texas State Univ. at San Marcos, San Marcos, TX, USA
Abstract :
This paper proposes a practical model to monitor the degradation of electronic equipment and further to predict the remaining useful life based on the self-diagnostic data. The de gradation precursor, characterized by voltage or current signals, is modeled as a Non-stationary Gaussian process with tim e-varying mean and variance. Statistical testing is then used to characterize the trend patterns for the mean and the variance, from which different types of degradation paths will be extrapolated. Regression tools and time series models can be adopted to forecast the system remaining useful life. A case study drawn from the semiconductor testing equipment is used to demonstrate the applicability and the performance of the proposed method.
Keywords :
built-in self test; preventive maintenance; reliability; statistical analysis; built-in diagnostic tools; de gradation precursor; electronic equipment degradation; electronics; non-stationary Gaussian process; regression tools; reliability prognostics; self-diagnostic data; semiconductor testing equipment; statistical testing; time series models; time-varying mean and variance; Degradation; Equations; Maintenance engineering; Mathematical model; Monitoring; Reliability; Testing; Electronic Prognostics; Hypothesis Testing; Non-Stationary Gaussian Process; Remaining Useful Life;
Conference_Titel :
Reliability and Maintainability Symposium (RAMS), 2011 Proceedings - Annual
Conference_Location :
Lake Buena Vista, FL
Print_ISBN :
978-1-4244-8857-5
DOI :
10.1109/RAMS.2011.5754427