There is a nearly ubiquitous assumption in PSA that parameter values are at least piecewise-constant in time. As a result, Bayesian inference tends to incorporate many years of plant operation, over which there have been significant changes in plant operational and maintenance practices, plant management, etc. These changes can cause significant changes in parameter values over time; however, failure to perform Bayesian inference in the proper time-dependent framework can mask these changes. Failure to question the assumption of constant parameter values, and failure to perform Bayesian inference in the proper time-dependent framework were noted as important issues in NUREG/CR-6813, performed for the U. S. Nuclear Regulatory Commission’s Ad...
Summary. We explore Bayesian analysis for continuous-time Markov chain (CTMC) models based on a cond...
A comprehensive life-cycle performance assessment of structures and infrastructures requires the def...
This work presents an application of the recently-developed Sequential Ensemble Monte Carlo sampler ...
There is a nearly ubiquitous assumption in PSA that parameter values are at least piecewise-constant...
Time series-data accompanied with a sequential ordering-occur and evolve all around us. Analysing ti...
Engineers use semi-empirical models of complex degradation phenomena to manage the integrity of stru...
Complex engineering systems (CESes), such as nuclear power plants or manufacturing plants, are criti...
Markov chain Monte Carlo (MCMC) techniques represent an extremely flexible and powerful approach to ...
The failure rate function r(x) provides a way to study the aging of a unit in a reliability study or...
Time series models are ubiquitous in science, arising in any situation where researchers seek to und...
Uncertainty, both aleatory and epistemic, can have a significant impact on estimated probabilities o...
Many processes evolve over time and statistical models need to be adaptive to change. This thesis pr...
This paper examines practical issues in the statistical analysis of component aging data. These issu...
Change point estimation is recognized as an essential tool of root cause analyses within quality con...
In macroeconomics, predicting future realisations of economic variables is the central issue for pol...
Summary. We explore Bayesian analysis for continuous-time Markov chain (CTMC) models based on a cond...
A comprehensive life-cycle performance assessment of structures and infrastructures requires the def...
This work presents an application of the recently-developed Sequential Ensemble Monte Carlo sampler ...
There is a nearly ubiquitous assumption in PSA that parameter values are at least piecewise-constant...
Time series-data accompanied with a sequential ordering-occur and evolve all around us. Analysing ti...
Engineers use semi-empirical models of complex degradation phenomena to manage the integrity of stru...
Complex engineering systems (CESes), such as nuclear power plants or manufacturing plants, are criti...
Markov chain Monte Carlo (MCMC) techniques represent an extremely flexible and powerful approach to ...
The failure rate function r(x) provides a way to study the aging of a unit in a reliability study or...
Time series models are ubiquitous in science, arising in any situation where researchers seek to und...
Uncertainty, both aleatory and epistemic, can have a significant impact on estimated probabilities o...
Many processes evolve over time and statistical models need to be adaptive to change. This thesis pr...
This paper examines practical issues in the statistical analysis of component aging data. These issu...
Change point estimation is recognized as an essential tool of root cause analyses within quality con...
In macroeconomics, predicting future realisations of economic variables is the central issue for pol...
Summary. We explore Bayesian analysis for continuous-time Markov chain (CTMC) models based on a cond...
A comprehensive life-cycle performance assessment of structures and infrastructures requires the def...
This work presents an application of the recently-developed Sequential Ensemble Monte Carlo sampler ...