Summarization: This article presents recent developments in the field of stochastic finite element analysis of structures and earthquake engineering aided by neural computations. The incorporation of neural networks (NN) in this type of problems is crucial since it leads to substantial reduction of the excessive computational cost. In particular, a hybrid method is presented for the simulation of homogeneous non-Gaussian stochastic fields with prescribed target marginal distribution and spectral density function. The presented method constitutes an efficient blending of the Deodatis-Micaletti method with a NN based function approximation. Earthquake-resistant design of structures using probabilistic safety analysis is an emerging field in s...
This chapter quantifies the effect of uncertainty in natural frequencies of laminated composite plat...
This paper presents a stochastic dynamic analysis of functionally graded plates by following an effi...
This paper discusses the adoption of Artificial Intelligence-based techniques to estimate seismic da...
Earthquake-resistant design of structures using probabilistic analysis is an emerging field in struc...
Summarization: The objective of this paper is to investigate the efficiency of soft computing method...
Fragility function that defines the probability of exceedance of a damage state given a ground motio...
Although civil engineering problems are often characterized by significant levels of complexity, the...
Summarization: Seismic fragility analysis is considered nowadays as a very efficient computational t...
This paper reports the experimental results on the application of different pattern recognition algo...
Summarization: Geotechnical earthquake engineering can generally be considered as an “imprecise” are...
This text presents a study of the use of neural networks for solving the classic structural reliabil...
The fragility curve is defined as the conditional probability of failure of a structure, or its crit...
In this paper a robust and efficient methodology is presented for treating large-scale reliability-b...
International audienceIn earthquake engineering, the fragility curve is defined as the conditional p...
183 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2000.A new neural network based me...
This chapter quantifies the effect of uncertainty in natural frequencies of laminated composite plat...
This paper presents a stochastic dynamic analysis of functionally graded plates by following an effi...
This paper discusses the adoption of Artificial Intelligence-based techniques to estimate seismic da...
Earthquake-resistant design of structures using probabilistic analysis is an emerging field in struc...
Summarization: The objective of this paper is to investigate the efficiency of soft computing method...
Fragility function that defines the probability of exceedance of a damage state given a ground motio...
Although civil engineering problems are often characterized by significant levels of complexity, the...
Summarization: Seismic fragility analysis is considered nowadays as a very efficient computational t...
This paper reports the experimental results on the application of different pattern recognition algo...
Summarization: Geotechnical earthquake engineering can generally be considered as an “imprecise” are...
This text presents a study of the use of neural networks for solving the classic structural reliabil...
The fragility curve is defined as the conditional probability of failure of a structure, or its crit...
In this paper a robust and efficient methodology is presented for treating large-scale reliability-b...
International audienceIn earthquake engineering, the fragility curve is defined as the conditional p...
183 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2000.A new neural network based me...
This chapter quantifies the effect of uncertainty in natural frequencies of laminated composite plat...
This paper presents a stochastic dynamic analysis of functionally graded plates by following an effi...
This paper discusses the adoption of Artificial Intelligence-based techniques to estimate seismic da...