Surrogate modeling of structural seismic response using probabilistic learning on manifolds

被引:20
|
作者
Zhong, Kuanshi [1 ,4 ]
Navarro, Javier G. [2 ]
Govindjee, Sanjay [3 ]
Deierlein, Gregory G. [1 ]
机构
[1] Stanford Univ, Dept Civil & Environm Engn, Stanford, CA USA
[2] Univ Colorado, Dept Civil Environm & Architectural Engn, Boulder, CO USA
[3] Univ Calif Berkeley, Dept Civil & Environm Engn, Berkeley, CA 94720 USA
[4] Univ Cincinnati, Dept Civil & Architecture Engn & Construct Managem, Cincinnati, OH USA
来源
基金
美国国家科学基金会;
关键词
incremental dynamic analysis; machine learning; multiple stripe analysis; probabilistic learning on manifolds; seismic response prediction; site-specific; REINFORCED-CONCRETE FRAME; FRAGILITY ANALYSIS; SPECTRAL SHAPE; COLLAPSE RISK; PERFORMANCE; UNCERTAINTIES; ALGORITHM; BRIDGES;
D O I
10.1002/eqe.3839
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
Nonlinear response history analysis (NLRHA) is generally considered to be a reliable and robust method to assess the seismic performance of buildings under strong ground motions. While NLRHA is fairly straightforward to evaluate individual structures for a select set of ground motions at a specific building site, it becomes less practical for performing large numbers of analyses to evaluate either (1) multiple models of alternative design realizations with a site-specific set of ground motions, or (2) individual archetype building models at multiple sites with multiple sets of ground motions. In this regard, surrogate models offer an alternative to running repeated NLRHAs for variable design realizations or ground motions. In this paper, a recently developed surrogate modeling technique, called probabilistic learning on manifolds (PLoM), is presented to estimate structural seismic response. Essentially, the PLoM method provides an efficient stochastic model to develop mappings between random variables, which can then be used to efficiently estimate the structural responses for systems with variations in design/modeling parameters or ground motion characteristics. The PLoM algorithm is introduced and then used in two case studies of 12-story buildings for estimating probability distributions of structural responses. The first example focuses on the mapping between variable design parameters of a multidegree-of-freedom analysis model and its peak story drift and acceleration responses. The second example applies the PLoM technique to estimate structural responses for variations in site-specific ground motion characteristics. In both examples, training data sets are generated for orthogonal input parameter grids, and test data sets are developed for input parameters with prescribed statistical distributions. Validation studies are performed to examine the accuracy and efficiency of the PLoM models. Overall, both examples show good agreement between the PLoM model estimates and verification data sets. Moreover, in contrast to other common surrogate modeling techniques, the PLoM model is able to preserve correlation structure between peak responses. Parametric studies are conducted to understand the influence of different PLoM tuning parameters on its prediction accuracy.
引用
收藏
页码:2407 / 2428
页数:22
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