Stochastic simulation methods for structural reliability under mixed uncertainties

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dc.identifier.uri http://dx.doi.org/10.15488/9990
dc.identifier.uri https://www.repo.uni-hannover.de/handle/123456789/10049
dc.contributor.author Song, Jingwen ger
dc.date.accessioned 2020-08-24T07:52:31Z
dc.date.available 2020-08-24T07:52:31Z
dc.date.issued 2020
dc.identifier.citation Song, Jingwen: Stochastic simulation methods for structural reliability under mixed uncertainties. Hannover : Gottfried Wilhelm Leibniz Universität, Diss., 2020. VIII, 158 S. DOI: https://doi.org/10.15488/9990 ger
dc.description.abstract Uncertainty quantification (UQ) has been widely recognized as one of the most important, yet challenging task in both structural engineering and system engineering, and the current researches are mainly on the proper treatment of different types of uncertainties, resulting from either natural randomness or lack of information, in all related sub-problems of UQ such as uncertainty characterization, uncertainty propagation, sensitivity analysis, model updating, model validation, risk and reliability analysis, etc. It has been widely accepted that those uncertainties can be grouped as either aleatory uncertainty or epistemic uncertainty, depending on whether they are reducible or not. For dealing with the above challenge, many non-traditional uncertainty characterization models have been developed, and those models can be grouped as either imprecise probability models (e.g., probability-box model, evidence theory, second-order probability model and fuzzy probability model) or non-probabilistic models (e.g., interval/convex model and fuzzy set theory). This thesis concerns the efficient numerical propagation of the three kinds of uncertainty characterization models, and for simplicity, the precise probability model, the distribution probability-box model, and the interval model are taken as examples. The target is to develop efficient numerical algorithms for learning the functional behavior of the probabilistic responses (e.g., response moments and failure probability) with respect to the epistemic parameters of model inputs, which is especially useful for making reliable decisions even when the available information on model inputs is imperfect. To achieve the above target, my thesis presents three main developments for improving the Non-intrusive Imprecise Stochastic Simulation (NISS), which is a general methodology framework for propagating the imprecise probability models with only one stochastic simulation. The first development is on generalizing the NISS methods to the problems with inputs including both imprecise probability models and non-probability models. The algorithm is established by combining Bayes rule and kernel density estimation. The sensitivity indices of the epistemic parameters are produced as by-products. The NASA Langley UQ challenge is then successfully solved by using the generalized NISS method. The second development is to inject the classical line sampling to the NISS framework so as to substantially improve the efficiency of the algorithm for rare failure event analysis, and two strategies, based on different interpretations of line sampling, are developed. The first strategy is based on the hyperplane approximations, while the second-strategy is derived based on the one-dimensional integrals. Both strategies can be regarded as post-processing of the classical line sampling, while the results show that their resultant NISS estimators have different performance. The third development aims at further substantially improving the efficiency and suitability to highly nonlinear problems of line sampling, for complex structures and systems where one deterministic simulation may take hours. For doing this, the active learning strategy based on Gaussian process regression is embedded into the line sampling procedure for accurately estimating the interaction point for each sample line, with only a small number of deterministic simulations. The above three developments have largely improved the suitability and efficiency of the NISS methods, especially for real-world engineering applications. The efficiency and effectiveness of those developments are clearly interpreted with toy examples and sufficiently demonstrated by real-world test examples in system engineering, civil engineering, and mechanical engineering. eng
dc.language.iso eng ger
dc.publisher Hannover : Institutionelles Repositorium der Leibniz Universität Hannover
dc.rights Es gilt deutsches Urheberrecht. Das Dokument darf zum eigenen Gebrauch kostenfrei genutzt, aber nicht im Internet bereitgestellt oder an Außenstehende weitergegeben werden. ger
dc.subject uncertainty quantification eng
dc.subject imprecise probabilities eng
dc.subject non-probabilistic eng
dc.subject line sampling eng
dc.subject active learning eng
dc.subject Gaussian process regression eng
dc.subject Bayes rule eng
dc.subject Unsicherheitsquantifizierung ger
dc.subject unpräzise Wahrscheinlichkeiten ger
dc.subject nicht-probabilistisch ger
dc.subject aktives Lernen ger
dc.subject Gaußsche Prozessregression ger
dc.subject Bayes-Regel ger
dc.subject.ddc 620 | Ingenieurwissenschaften und Maschinenbau ger
dc.title Stochastic simulation methods for structural reliability under mixed uncertainties eng
dc.type DoctoralThesis ger
dc.type Text ger
dcterms.extent VIII, 158 S.
dc.description.version publishedVersion ger
tib.accessRights frei zug�nglich ger


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