This paper draws attention to a fundamental problem that occurs in applying importance sampling to ‘high-dimensional’ reliability problems, i.e., those with a large number of uncertain parameters. This question of applicability carries an important bearing on the potential use of importance sampling for solving dynamic first-excursion problems and static reliability problems for structures with a large number of uncertain structural model parameters. The conditions under which importance sampling is applicable in high dimensions are investigated, where the focus is put on the common case of standard Gaussian uncertain parameters. It is found that importance sampling densities using design points are applicable if the covariance matrix assoc...
Engineering design is a process in which a system’s parameters are selected such that the system mee...
This study describes a method to reliably search and determine design points required for constructi...
Importance sampling has had its origin in Monte Carlo simulation and in the last 15 years or so, it ...
This work is dedicated to the exploration of commonly used and development of new advanced stochasti...
In this paper we adopt a geometric perspective to highlight the challenges associated with solving h...
Asymptotic approximations and importance sampling methods are presented for evaluating a class of pr...
A critical appraisal of reliability procedures for high dimensions is presented. Available approxima...
Asymptotic approximations and importance sampling methods are developed for evaluating a class of p...
Asymptotic approximations and importance sampling methods are presented for evaluating a class of p...
AbstractCombining the advantages of the stratified sampling and the importance sampling, a stratifie...
A new approach to evaluate the reliability of structural systems using a Monte Carlo variance reduct...
publisher[Abstract] This paper is concerned with the estimation of the failure probability for struc...
ABSTRACT: Engineering design is a process in which a system’s parameters are selected such that the ...
The population Monte Carlo algorithm is an iterative importance sampling scheme for solving static p...
This paper is concerned with the estimation of structural failure probability based on a quasi ideal...
Engineering design is a process in which a system’s parameters are selected such that the system mee...
This study describes a method to reliably search and determine design points required for constructi...
Importance sampling has had its origin in Monte Carlo simulation and in the last 15 years or so, it ...
This work is dedicated to the exploration of commonly used and development of new advanced stochasti...
In this paper we adopt a geometric perspective to highlight the challenges associated with solving h...
Asymptotic approximations and importance sampling methods are presented for evaluating a class of pr...
A critical appraisal of reliability procedures for high dimensions is presented. Available approxima...
Asymptotic approximations and importance sampling methods are developed for evaluating a class of p...
Asymptotic approximations and importance sampling methods are presented for evaluating a class of p...
AbstractCombining the advantages of the stratified sampling and the importance sampling, a stratifie...
A new approach to evaluate the reliability of structural systems using a Monte Carlo variance reduct...
publisher[Abstract] This paper is concerned with the estimation of the failure probability for struc...
ABSTRACT: Engineering design is a process in which a system’s parameters are selected such that the ...
The population Monte Carlo algorithm is an iterative importance sampling scheme for solving static p...
This paper is concerned with the estimation of structural failure probability based on a quasi ideal...
Engineering design is a process in which a system’s parameters are selected such that the system mee...
This study describes a method to reliably search and determine design points required for constructi...
Importance sampling has had its origin in Monte Carlo simulation and in the last 15 years or so, it ...