Eine Plattform für die Wissenschaft: Bauingenieurwesen, Architektur und Urbanistik
Hybrid Framework for the Estimation of Rare Failure Event Probability
This paper presents a novel approach for computing the rare failure event probability. Within the framework of the proposed approach, adaptive hybrid polynomial correlated function expansion (H-PCFE) is first formulated by coupling sequential experimental design (SED) with H-PCFE. Next, a novel algorithm for reducing the surrogate error near the failure surface is presented. The proposed algorithms (i.e., adaptive H-PCFE and the algorithm for reducing prediction error near the failure surface) are coupled into the framework of subset simulation. Application of the proposed approach in estimating rare failure event probability is illustrated with five examples. The study illustrates that the proposed hybrid framework is more efficient than the subset simulation and is more accurate and robust than the conventional surrogate modeling approach. It is further demonstrated that the proposed approach is capable of accurately predicting rare failure probability, in the order of , from significantly fewer sample points.
Hybrid Framework for the Estimation of Rare Failure Event Probability
This paper presents a novel approach for computing the rare failure event probability. Within the framework of the proposed approach, adaptive hybrid polynomial correlated function expansion (H-PCFE) is first formulated by coupling sequential experimental design (SED) with H-PCFE. Next, a novel algorithm for reducing the surrogate error near the failure surface is presented. The proposed algorithms (i.e., adaptive H-PCFE and the algorithm for reducing prediction error near the failure surface) are coupled into the framework of subset simulation. Application of the proposed approach in estimating rare failure event probability is illustrated with five examples. The study illustrates that the proposed hybrid framework is more efficient than the subset simulation and is more accurate and robust than the conventional surrogate modeling approach. It is further demonstrated that the proposed approach is capable of accurately predicting rare failure probability, in the order of , from significantly fewer sample points.
Hybrid Framework for the Estimation of Rare Failure Event Probability
Chakraborty, Souvik (Autor:in) / Chowdhury, Rajib (Autor:in)
31.01.2017
Aufsatz (Zeitschrift)
Elektronische Ressource
Unbekannt
Hybrid Framework for the Estimation of Rare Failure Event Probability
Online Contents | 2017
|Rare Event Estimation Using Polynomial-Chaos Kriging
ASCE | 2016
|Accelerated failure identification sampling for probability analysis of rare events
British Library Online Contents | 2016
|Estimation of failure probability based on significant damages
British Library Online Contents | 1993
|