Structural damage identification plays a crucial role in structural health monitoring. In this study, a novelty method for structural damage identification is developed, which employs an advanced surrogate modelling technique to drive a new hybrid optimization strategy, namely a combination of K-means clustering optimizer and genetic algorithm (HKOGA). The core of this method is using the reliable sparse polynomial chaos expansion model as a cost-effective substitute for the computationally expensive structural finite element models, thus greatly improving the efficiency of the optimization strategy in finding the optimal value of the objective function. To evaluate the performance of this hybrid optimization strategy, seven optimization al...
In this paper, an effective approach is presented for solving damage identification problems. The ke...
In this paper, we present a new application based on Genetic Algorithm (GA) to detect damage in 3D f...
Finite element (FE) based structural health monitoring (SHM) algorithms seek to update structural da...
This paper proposes a novel structural damage identification approach by using the clustering based ...
This study aims to develop a multistage scheme for damage detection for large structures based on ex...
Model-based damage detection methods have been widely investigated in recent decades. Conventional m...
In recent years, data mining technology has been employed to solve various Structural Health Monitor...
In this study, an effective and novel method, termed Metamodel Assisted Hybrid of Particle Swarm Opt...
Structural model updating is one of the most important steps in structural health monitoring, which ...
A realistic and reliable model is an important precondition for the simulation of revitalization tas...
Considerate amount of research has proposed optimization-based approaches employing various vibratio...
Structural damage is a challenging issue in civil and mechanical engineering. Researchers developed ...
Dynamic properties such as natural frequencies and mode shapes are directly affected by damage in st...
The detection of damage with model-based methods is a constrained nonlinear optimization problem. Co...
Structural damage detection is a well-known engineering inverse problem in which the extracting of d...
In this paper, an effective approach is presented for solving damage identification problems. The ke...
In this paper, we present a new application based on Genetic Algorithm (GA) to detect damage in 3D f...
Finite element (FE) based structural health monitoring (SHM) algorithms seek to update structural da...
This paper proposes a novel structural damage identification approach by using the clustering based ...
This study aims to develop a multistage scheme for damage detection for large structures based on ex...
Model-based damage detection methods have been widely investigated in recent decades. Conventional m...
In recent years, data mining technology has been employed to solve various Structural Health Monitor...
In this study, an effective and novel method, termed Metamodel Assisted Hybrid of Particle Swarm Opt...
Structural model updating is one of the most important steps in structural health monitoring, which ...
A realistic and reliable model is an important precondition for the simulation of revitalization tas...
Considerate amount of research has proposed optimization-based approaches employing various vibratio...
Structural damage is a challenging issue in civil and mechanical engineering. Researchers developed ...
Dynamic properties such as natural frequencies and mode shapes are directly affected by damage in st...
The detection of damage with model-based methods is a constrained nonlinear optimization problem. Co...
Structural damage detection is a well-known engineering inverse problem in which the extracting of d...
In this paper, an effective approach is presented for solving damage identification problems. The ke...
In this paper, we present a new application based on Genetic Algorithm (GA) to detect damage in 3D f...
Finite element (FE) based structural health monitoring (SHM) algorithms seek to update structural da...