Fuzzy Sensitivity Analysis of Structural Performance
Abstract
:1. Introduction
2. Fuzzy Randomness and Sensitivity Analysis
2.1. Fundamentals
2.2. Framework for Sensitivity Analysis of Fuzzy Probabilistic Models
2.3. Formulation of Sensitivity Analyses
2.4. Application of α-Level Optimization
3. Uncertainty Propagation Methods
3.1. Monte Carlo Simulation
3.2. Tornado Diagram Analysis
3.3. First-Order Second-Moment Method
4. Examples
4.1. Numerical Example
4.2. Ten-Bar Truss Example
4.3. Nonlinear Seismic Response of a Building Structure
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Notation
a fuzzy parameter which is a set defined on the fundamental set as | |
fuzzy area of the ith element in the truss example | |
crisp subset of the fuzzy parameter defined using the α-level as | |
fuzzy elastic modulus in the truss example | |
fuzzy cumulative distribution function of the th fuzzy probabilistic variable | |
fuzzy input vector defined on the input space consisting all fuzzy variables and fuzzy distribution parameters | |
fuzzy mass of stories in the building structure example | |
th fuzzy variable | |
fuzzy load on node 3 in the truss example | |
fuzzy load on node 5 in the truss example | |
fuzzy failure probability | |
fuzzy distribution parameter of the th fuzzy probabilistic variable | |
vector of sensitivity indices due to the uncertainty of the th fuzzy probabilistic variable | |
vector of sensitivity indices due to the uncertainty of the th fuzzy variable | |
sensitivity index of the th fuzzy output result due to the uncertainty of the th fuzzy probabilistic variable | |
sensitivity index of the th fuzzy output result due to the uncertainty of th fuzzy variable | |
fundamental set, consisting of the elements | |
a trajectory of the th fuzzy probabilistic variable | |
th fuzzy probabilistic variable whose distribution parameters are fuzzy | |
fuzzy result vector which is composed of fuzzy output results | |
th fuzzy output results | |
an arbitrary number belonging to set | |
maximum value at the base of the triangular membership function corresponding to | |
mean value of the fuzzy number corresponding to | |
minimum value at the base of the triangular membership function corresponding to | |
fuzzy compressive strength of beams in the building structure example | |
fuzzy compressive strength of columns in the building structure example | |
fuzzy yield strength of beam reinforcements in the building structure example | |
fuzzy yield strength of column reinforcements in the building structure example | |
fuzzy probability density function of the th fuzzy probabilistic variable | |
a function giving the nth output result | |
an element of the th fuzzy variable | |
lower bound of the α-level set on the th fuzzy variable | |
upper bound of the α-level set on the th fuzzy variable | |
an element of fuzzy failure probability | |
lower bound of the α-level set on the fuzzy failure probability | |
upper bound of the α-level set on the fuzzy failure probability | |
an element of the fuzzy distribution parameter of the th fuzzy probabilistic variable | |
lower bound of the α-level set on the fuzzy distribution parameter of the th fuzzy probabilistic variable | |
upper bound of the α-level set on the fuzzy distribution parameter of the th fuzzy probabilistic variable | |
lower bound of the realizations for the th output result due to the uncertainty of a trajectory of the th fuzzy probabilistic variable | |
upper bound of the realizations for the th output result due to the uncertainty of a trajectory of the th fuzzy probabilistic variable | |
lower bound of the α-level set on the fuzzy sensitivity index | |
upper bound of the α-level set on the fuzzy sensitivity index | |
lower bound of the α-level set on the fuzzy sensitivity index | |
upper bound of the α-level set on the fuzzy sensitivity index | |
a value for the trajectory of the th fuzzy probabilistic variable | |
left of perturbation to estimate the output uncertainty for a trajectory of the th fuzzy probabilistic variable , considered equal to | |
an element of the th fuzzy result | |
inverse of the standard normal cumulative distribution function | |
α-level, used for defining the crisp α-level set | |
reliability index equal to | |
membership function of a fuzzy number, which is convex and continuous with the range of showing the uncertainty level of elements of | |
output result when all input parameters are defuzzified and fixed at their mean values | |
fuzzy mean area of the th element in the truss example | |
fuzzy elastic modulus of elements in the truss example | |
mean value for a trajectory of the th fuzzy probabilistic variable | |
fuzzy mean of the th fuzzy probabilistic variable | |
fuzzy load on the th node in the truss example | |
mean value of the th result for a combination of fuzzy probabilistic variables in the input space | |
standard deviation for a trajectory of the th fuzzy probabilistic variable | |
fuzzy standard deviation of the th fuzzy probabilistic variable | |
standard deviation of the th result for a combination of fuzzy probabilistic variables in the input space |
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No. | Year | Method | Application | Reference |
---|---|---|---|---|
1 | 2005 | FOSM | Seismic performance evaluation | Lee and Mosalam [21] |
2 | 2009 | Variance-based analysis | Imperfection of slender members | Kala [27] |
3 | 2010 | Variance-based analysis | Collapse analysis | Arwade et al. [28] |
4 | 2011 | MCS, FOSM, and TDA | Collapse analysis | Kim et al. [20] |
5 | 2011 | Variance-based analysis | Imperfection of steel frames | Kala [29] |
6 | 2013 | FOSM and TDA | Seismic performance evaluation | Kim and Han [30] |
8 | 2014 | FOSM and TDA | Seismic analysis of offshore structures | Kim and Nour Eldin [31] |
9 | 2016 | Variance-based analysis | Stability of steel frames | Kala [32] |
10 | 2016 | Fuzzy gradient-based analysis | Structural failure probability | Jafari and Jahani [25] |
11 | 2017 | TDA | Collapse analysis of RC frames | Yu et al. [33] |
12 | 2017 | TDA | Impact analysis of steel columns | Kang and Kim [34] |
13 | 2018 | Variance-based analysis and TDA | Impact analysis of structures | Javidan et al. [35] |
14 | 2019 | TDA | Progressive Analysis | Parisi et al. [36] |
15 | 2019 | Fuzzy variance-based analysis | Collapse analysis | Javidan and Kim [26] |
16 | 2020 | Derivative-based analysis | Viscoelasticity properties of dampers | Javidan and Kim [19] |
17 | 2021 | TDA | Seismic response of reinforced masonry shear walls | Elmeligy et al. [37] |
17 | 2022 | Derivative-based analysis | Seismic vulnerability | Chisari et al. [38] |
Parameter | Fuzzy Mean Values | Distribution |
---|---|---|
Elastic modulus (MPa) | Normal | |
Area | ||
Loads and |
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Javidan, M.M.; Kim, J. Fuzzy Sensitivity Analysis of Structural Performance. Sustainability 2022, 14, 11974. https://doi.org/10.3390/su141911974
Javidan MM, Kim J. Fuzzy Sensitivity Analysis of Structural Performance. Sustainability. 2022; 14(19):11974. https://doi.org/10.3390/su141911974
Chicago/Turabian StyleJavidan, Mohammad Mahdi, and Jinkoo Kim. 2022. "Fuzzy Sensitivity Analysis of Structural Performance" Sustainability 14, no. 19: 11974. https://doi.org/10.3390/su141911974
APA StyleJavidan, M. M., & Kim, J. (2022). Fuzzy Sensitivity Analysis of Structural Performance. Sustainability, 14(19), 11974. https://doi.org/10.3390/su141911974