Content area
Response analysis of structures involving non-probabilistic uncertain parameters can be closely related to optimization. This paper provides a review on optimization-based methods for uncertainty analysis, with focusing attention on specific properties of adopted numerical optimization approaches. We collect and discuss the methods based on nonlinear programming, semidefinite programming, mixed-integer programming, mathematical programming with complementarity constraints, difference-of-convex programming, optimization methods using surrogate models and machine learning techniques, and metaheuristics. As a closely related topic, we also overview the methods for assessing structural robustness using non-probabilistic uncertainty modeling. We conclude the paper by drawing several remarks through this review.
Details
Probabilistic models;
Semidefinite programming;
Mixed integer;
Uncertainty analysis;
Integer programming;
Machine learning;
Parameter uncertainty;
Convexity;
Mathematical programming;
Nonlinear programming;
Heuristic methods;
Optimization;
Design optimization;
Fuzzy sets;
Random variables;
Design specifications;
Algorithms