In this paper the problem of reliability-based optimal design of linear structures subjected to stochastic excitations is considered. A global optimization method based on Transitional Markov chain Monte Carlo (TMCMC) is used to address the problem, where the optimization problem is converted into the task of generating sample points (designs) according to a probability density function (PDF) suitably constructed on the feasible space of designs satisfying all the constraints. TMCMC is used for generating sample points, in order to get higher convergence rate of the stationary distribution of the Markov chain states to the constructed PDF. The generation of sample points uniformly distributed in the feasible space, which is required at the ...
Design problems that involve the system reliability as the objective function are discussed. In orde...
The design of optimal and reliable systems is an objective which is pursued in several fields of eng...
Engineering design in the presence of uncertainties often involves optimization problems that inclu...
In this thesis reliability analysis and reliability-based optimal design of linear structures subjec...
Reliability-based design requires the optimization of the probability of failure, over the admissibl...
In this paper the problem of reliability-based optimization is considered. A global optimization met...
Reliability-based design of a system often requires the minimization of the probability of system fa...
This article presents a brief survey on some of the latest developments in the area of reliability-b...
Design problems that involve optimization of the reliability of engineering systems are the focus of...
This contribution presents a general approach for solving structural design problems formulated as a...
A stochastic optimization which makes use of a reliability constraint, expressing a performance requ...
Structural reliability technology provides analytical tools for management of uncertainty in all rel...
The knowledge about a planned system in engineering design applications is never complete. Often, a ...
We perform reliability-based topology optimization by combining reliability analysis and material di...
The Non-Parametric Stochastic Subset Optimization (NP-SSO) is a recently developed algorithm appropr...
Design problems that involve the system reliability as the objective function are discussed. In orde...
The design of optimal and reliable systems is an objective which is pursued in several fields of eng...
Engineering design in the presence of uncertainties often involves optimization problems that inclu...
In this thesis reliability analysis and reliability-based optimal design of linear structures subjec...
Reliability-based design requires the optimization of the probability of failure, over the admissibl...
In this paper the problem of reliability-based optimization is considered. A global optimization met...
Reliability-based design of a system often requires the minimization of the probability of system fa...
This article presents a brief survey on some of the latest developments in the area of reliability-b...
Design problems that involve optimization of the reliability of engineering systems are the focus of...
This contribution presents a general approach for solving structural design problems formulated as a...
A stochastic optimization which makes use of a reliability constraint, expressing a performance requ...
Structural reliability technology provides analytical tools for management of uncertainty in all rel...
The knowledge about a planned system in engineering design applications is never complete. Often, a ...
We perform reliability-based topology optimization by combining reliability analysis and material di...
The Non-Parametric Stochastic Subset Optimization (NP-SSO) is a recently developed algorithm appropr...
Design problems that involve the system reliability as the objective function are discussed. In orde...
The design of optimal and reliable systems is an objective which is pursued in several fields of eng...
Engineering design in the presence of uncertainties often involves optimization problems that inclu...