With the rapid technology development and improvement, the product failure time prediction becomes an even harder task because only few failures in the product life tests are recorded. The classical statistical model relies on the asymptotic theory and cannot guarantee that the estimator has the finite sample property. To solve this problem, we apply the hierarchical Bayesian neural network (HBNN) approach to predict the failure time and utilize the Gibbs sampler of Markov chain Monte Carlo (MCMC) to estimate model parameters. In this proposed method, the hierarchical structure is specified to study the heterogeneity among products. Engineers can use the heterogeneity estimates to identify the causes of the quality differences and further e...
International audienceThis paper presents a general methodology to improve risk assessment in the sp...
International audienceThis work takes place within the IMPROVE European project aimed at increasing ...
The work done in this paper has focused on the prediction of failures of a complex and highly stress...
International audienceFor identifying the product failure rate grade with diverse configuration and ...
For system failure prediction, automatically modeling from historical failure dataset is one of the ...
Accurate reliability and residual life analysis is paramount during the designing of reliability req...
[[abstract]]Because of increased manufacturing competitiveness, new methods for reliability estimati...
yesThis paper presents a methodology for fault detection, fault prediction and fault isolation based...
Over the last few decades, reliability analysis has attracted significant interest due to its import...
One of the greatest challenges in evaluating reliability of digital I&C systems is how to obtain...
IoT networks are so voluminous that they cannot be treated as individual devices, but as populations...
The failure prediction of components plays an increasingly important role in manufacturing. In this ...
This research develops methods for Bayesian analysis of a general piecewise exponential model for th...
Industries are constantly seeking ways to avoid corrective maintenance in order to reduce costs. Per...
The failure prediction of components plays an increasingly important role in manufacturing. In this ...
International audienceThis paper presents a general methodology to improve risk assessment in the sp...
International audienceThis work takes place within the IMPROVE European project aimed at increasing ...
The work done in this paper has focused on the prediction of failures of a complex and highly stress...
International audienceFor identifying the product failure rate grade with diverse configuration and ...
For system failure prediction, automatically modeling from historical failure dataset is one of the ...
Accurate reliability and residual life analysis is paramount during the designing of reliability req...
[[abstract]]Because of increased manufacturing competitiveness, new methods for reliability estimati...
yesThis paper presents a methodology for fault detection, fault prediction and fault isolation based...
Over the last few decades, reliability analysis has attracted significant interest due to its import...
One of the greatest challenges in evaluating reliability of digital I&C systems is how to obtain...
IoT networks are so voluminous that they cannot be treated as individual devices, but as populations...
The failure prediction of components plays an increasingly important role in manufacturing. In this ...
This research develops methods for Bayesian analysis of a general piecewise exponential model for th...
Industries are constantly seeking ways to avoid corrective maintenance in order to reduce costs. Per...
The failure prediction of components plays an increasingly important role in manufacturing. In this ...
International audienceThis paper presents a general methodology to improve risk assessment in the sp...
International audienceThis work takes place within the IMPROVE European project aimed at increasing ...
The work done in this paper has focused on the prediction of failures of a complex and highly stress...