In the BUS (Bayesian Updating with Structural reliability methods) approach, the uncertain parameter space is augmented by a uniform random variable and the Bayesian inference problem is interpreted as a structural reliability problem. A posterior sample is given by an augmented vector sample within the failure domain of the structural reliability problem where the realization of the uniform random variable is smaller than the likelihood function scaled by a constant c. The constant cc must be selected such that 1∕c is larger or equal than the maximum of the likelihood function, which, however, is typically unknown a-priori. For BUS combined with sampling based reliability methods, choosing c too small has a negative impact on the computati...
In reliability theory, the most important problem is to determine the reliability of a complex syste...
In reliability engineering, data about failure events is often scarce. To arrive at meaningful estim...
The development of the theory and application of Monte Carlo Markov Chain methods, vast improvements...
In the BUS (Bayesian Updating with Structural reliability methods) approach, the uncertain parameter...
Bayesian updating is a powerful method to learn and calibrate models with data and observations. Bec...
Bayesian updating is a powerful tool for model calibration and uncertainty quantification when new o...
Bayesian Updating with Structural reliability methods (BUS) reinterprets the Bayesian updating probl...
In the structural reliability analysis, the probabilistic distributions of basic random variables ma...
The implementation of reliability methods in the framework of Bayesian model updating of structural ...
Numerical methods play a dominant role in structural reliability analysis, and the goal has long bee...
This work proposes a Bayesian updating approach, called parallel Bayesian optimization and quadratur...
Over the last few decades, reliability analysis has attracted significant interest due to its import...
The Bayesian approach is a stochastic method, allowing to establish trend studies on the b...
Especially when facing reliability data with limited information (e.g., a small number of failures),...
The recent proliferation of Markov chain Monte Carlo (MCMC) approaches has led to the use of the Bay...
In reliability theory, the most important problem is to determine the reliability of a complex syste...
In reliability engineering, data about failure events is often scarce. To arrive at meaningful estim...
The development of the theory and application of Monte Carlo Markov Chain methods, vast improvements...
In the BUS (Bayesian Updating with Structural reliability methods) approach, the uncertain parameter...
Bayesian updating is a powerful method to learn and calibrate models with data and observations. Bec...
Bayesian updating is a powerful tool for model calibration and uncertainty quantification when new o...
Bayesian Updating with Structural reliability methods (BUS) reinterprets the Bayesian updating probl...
In the structural reliability analysis, the probabilistic distributions of basic random variables ma...
The implementation of reliability methods in the framework of Bayesian model updating of structural ...
Numerical methods play a dominant role in structural reliability analysis, and the goal has long bee...
This work proposes a Bayesian updating approach, called parallel Bayesian optimization and quadratur...
Over the last few decades, reliability analysis has attracted significant interest due to its import...
The Bayesian approach is a stochastic method, allowing to establish trend studies on the b...
Especially when facing reliability data with limited information (e.g., a small number of failures),...
The recent proliferation of Markov chain Monte Carlo (MCMC) approaches has led to the use of the Bay...
In reliability theory, the most important problem is to determine the reliability of a complex syste...
In reliability engineering, data about failure events is often scarce. To arrive at meaningful estim...
The development of the theory and application of Monte Carlo Markov Chain methods, vast improvements...