Estimating seismic demand models of a building inventory from nonlinear static analysis using deep learning methods

被引:31
作者
Soleimani-Babakamali, Mohammad Hesam [1 ,2 ]
Esteghamati, Mohsen Zaker [3 ]
机构
[1] Virginia Tech, Dept Civil & Environm Engn, Blacksburg, VA USA
[2] Virginia Tech, Dept Comp Sci, Blacksburg, VA USA
[3] Utah State Univ, Dept Civil & Environm Engn, Logan, UT 84322 USA
关键词
Probabilistic seismic demand models; Nonlinear static analysis; Deep learning; Long short-term memory networks; Structural uncertainties; GROUND-MOTION UNCERTAINTY; INTENSITY MEASURE; RISK; VULNERABILITY; SIMULATION; FRAMEWORK; SELECTION; CURVES;
D O I
10.1016/j.engstruct.2022.114576
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
Probabilistic seismic demand analysis (PSDA) is the most time- and effort-intensive step in risk-based assessment of the built environment. A typical PSDA requires subjecting the structure to a large number of ground motions and performing nonlinear dynamic analysis, where the analysis dimension and effort substantially increase at large-scale assessments such as community-level evaluations. This study presents a deep learning framework to estimate seismic demand models from nonlinear static (i.e., pushover) analysis, which is computationally inexpensive. The proposed architecture leverages an encoder-decoder model with customized training schedules and a loss function capable of determining demand model parameters and error. Furthermore, the framework facilitates the seamless incorporation of structural modeling uncertainties in PSDA. The proposed framework is then applied to a building inventory consisting of 720 concrete frames to examine its generalizability and accuracy. The results show that the deep learning architecture can estimate demand models by an R-2 of 84% using a test-to-train ratio of unity. In addition, the average prediction error is less than 3% and 6% for demand model slope and intercept parameters, respectively, translating into an accurate estimation of fragility functions with a median error of 5.7%, 6.9%, and 6.8% for immediate occupancy, life safety, and collapse prevention damage states. Lastly, the framework can efficiently propagate structural uncertainties into seismic demand models, capturing the implicit relationship of the frames' nonlinear characteristics and resultant fragility functions.
引用
收藏
页数:16
相关论文
共 89 条
[21]   Surrogate probabilistic seismic demand modelling of inelastic single-degree-of-freedom systems for efficient earthquake risk applications [J].
Gentile, Roberto ;
Galasso, Carmine .
EARTHQUAKE ENGINEERING & STRUCTURAL DYNAMICS, 2022, 51 (02) :492-511
[22]   Simplified seismic loss assessment for optimal structural retrofit of RC buildings [J].
Gentile, Roberto ;
Galasso, Carmine .
EARTHQUAKE SPECTRA, 2021, 37 (01) :346-365
[23]   Effects of demand parameters in the performance-based multi-objective optimum design of steel moment frame buildings [J].
Ghasemof, Ali ;
Mirtaheri, Masoud ;
Mohammadi, Reza Karami .
SOIL DYNAMICS AND EARTHQUAKE ENGINEERING, 2022, 153
[24]   Quantifying the impacts of modeling uncertainties on the seismic drift demands and collapse risk of buildings with implications on seismic design checks [J].
Gokkaya, Beliz U. ;
Baker, Jack W. ;
Deierlein, Greg G. .
EARTHQUAKE ENGINEERING & STRUCTURAL DYNAMICS, 2016, 45 (10) :1661-1683
[25]   Seismic Drift Demand Estimation for Steel Moment Frame Buildings: From Mechanics-Based to Data-Driven Models [J].
Guan, Xingquan ;
Burton, Henry ;
Shokrabadi, Mehrdad ;
Yi, Zhengxiang .
JOURNAL OF STRUCTURAL ENGINEERING, 2021, 147 (06)
[26]   Python']Python-based computational platform to automate seismic design, nonlinear structural model construction and analysis of steel moment resisting frames [J].
Guan, Xingquan ;
Burton, Henry ;
Sabol, Thomas .
ENGINEERING STRUCTURES, 2020, 224
[27]   Earthquake Hazard Safety Assessment of Existing Buildings Using Optimized Multi-Layer Perceptron Neural Network [J].
Harirchian, Ehsan ;
Lahmer, Tom ;
Rasulzade, Shahla .
ENERGIES, 2020, 13 (08)
[28]   Probabilistic seismic demand model and optimal intensity measure for concrete dams [J].
Hariri-Ardebili, M. A. ;
Saouma, V. E. .
STRUCTURAL SAFETY, 2016, 59 :67-85
[29]   Indicators of improvements in seismic performance possible through retrofit of reinforced concrete frame buildings [J].
Harrington, Cody C. ;
Liel, Abbie B. .
EARTHQUAKE SPECTRA, 2021, 37 (01) :262-283
[30]  
Haselton C.B., 2008, Beam-Column Element Model Calibrated for Predicting Flexural Response Leading to Global Collapse of RC Frame Buildings