1. Introduction
In structural dynamic engineering, the development of reasonable finite element (FE) models can guarantee the reliability of structural analysis. Nevertheless, discrepancies always exist between measured and FE model predicted behaviors, which can be due to uncertain structure properties, model simplification, and/or inappropriate boundary conditions [
1]. Therefore, to reduce these discrepancies, it is often required to update the FE model based on measured data. The dynamic model-updating method is an important means of building a high-precision FE model, which can reflect the dynamic characteristics of the actual structure.
In general, dynamic model-updating methods can be classified into matrix updating methods, also called direct updating methods [
2,
3,
4], and parameter updating methods, also called iterative updating methods [
5,
6,
7]. In matrix updating methods, the mass, stiffness, and damping matrices of the FE model are directly updated to generate an accurate model by one-step procedure calculation, which is a very efficient approach. However, the matrices of the updated model lose the symmetry and sparsity of the original matrices, leading to lack of physical significance [
4]. Thus, in practice, it is difficult to use these methods to provide clear guidance. In contrast, parameter updating methods update the FE model by adjusting physical parameters, such as material parameters, geometric dimensions, and connection and support stiffness characteristics, which are much closer to physically realizable quantities [
5]. Compared to matrix updating methods, parameter updating methods are more acceptable and have been widely used in structural engineering. In a sense, the model-updating process using the parameter updating method can be regarded as an optimization problem, since model-updating is essentially an inverse problem, where a deterministic objective function is adopted to obtain the precise FE model by seeking the optimal structural parameters [
8]. Consequently, in parameter updating methods, a reasonable optimization model and an efficient optimization algorithm are the key elements to obtaining an accurate FE model.
It is common knowledge that the development of an optimization model generally includes three factors: design variables, objective functions, and constraints. In model-updating, the primary issue concerns the construction of the objective function, which aims to quantify the discrepancies between the actual structure and the corresponding FE model. Frequency response functions (FRFs) [
9,
10,
11,
12] and modal parameters, such as natural frequencies and mode shapes [
13,
14,
15], are commonly used to form the objective function. FRF data of the actual structure obtained from vibration tests can be directly applied in model-updating. The FRF-based model-updating method was first proposed by Lin and Ewins [
16,
17], who successfully applied it to update undamped structure models. Subsequently, this method was further extended by Lin [
9] to update linear damping models. Since then, FRF-based model-updating methods have been further developed. However, measurements of FRF data are susceptible to environmental noise, which may lead to inaccurate model-updating. Moreover, in practice, FRF data are usually inaccessible, since the excitation loads of engineering structures are often difficult to determine. Such deficiencies hinder the wide application of the FRF-based model-updating method in practical engineering. On the other hand, modal parameters can be easily extracted from the response data of a structure using modal-analysis techniques under operational conditions. In addition, compared to the FRF-based model-updating method, the natural frequency- or mode- shape-based model-updating method uses only few residual discrete frequencies of interest, thus avoiding the unnecessary time consumption induced by the use of uninteresting frequency data over the entire frequency domain.
Nevertheless, model parameter-based model-updating methods are associated with certain problems that need to be tackled. Modal pairs, including natural frequencies and mode shapes, are the most commonly used modal parameters in model-updating, and can be used separately or combined. The natural frequency is the overall attribute of a structure and can be accurately identified from the response data either in the time or frequency domain. In model-updating, the absolute or relative errors of experimental and analytical natural frequencies can be used directly as the objective function [
13]. The mode shape is the local attribute of a structure; that is, theoretically, the measurement of complete mode shapes requires countless measuring points, which cannot be realized experimentally. Therefore, an incompleteness problem in measurement data inevitably exists in this type of method since the obtained data contain fewer modes than the order of the identified numerical model [
1]. As a result, the modal order measured from the actual structure does not correspond to the numerical model. Furthermore, mode switching mostly occurs in the model-updating process, since not every mode can be changed within the same step [
18]. In other words, the sensitivity of each order mode to the structural parameters is different. After multiple iteration steps, the change of adjacent modes could be greater than the difference between them, resulting in mode switching. If mode switching is not taken into consideration, it is likely to disturb the model-updating process and result in an ill-conditioned updated model.
In order to overcome the aforementioned problems, it is necessary to assess the consistency between experimental and analytical modes. Compared to the natural frequency of a structure, its mode shape contains rich modal information. Therefore, in the literature, many studies have taken the mode-shape information of the structure as the main criterion to measure the consistency between modes. The modal assurance criterion (MAC) proposed by Allemang [
19], and its derivatives, can effectively solve this problem, and due to their simple statistical concept, they have become the most widely used quantitative indicators [
18]. Guo [
13] introduced the coordinate strain modal assurance criterion (COSMAC) to quantify the difference between experimental and numerical strain mode shapes, and combined the error of natural frequencies to construct an objective function for model-updating. In their study, the quantified results of the consistency between experimental and analytical mode shapes were taken as the target for correction, and the optimal value was obtained if and only if the experimental and numerical modes were of the same order mode. Li [
5] proposed an improved MAC to assess the similarity of mode shapes. In the model-updating process, the improved MAC was applied to identify the analytical modes that match the measured modes to ensure the accuracy of the updated numerical model. According to the above studies, the MAC is an effective index to identify or track modes; however, it is not sensitive to mode-shape changes, since all mode-shape differences are considered in the scalar of a single global index [
20]. In the sparse mode region in the frequency domain, the similarity of mode shapes in a relatively wide frequency range near each order mode is high. For example, if the frequency was taken as the objective, it would inevitably lead to a large model-updating error. In this paper, inspired by the image recognition technology, a mode-identification index based on image-similarity recognition (ISR) is proposed to provide a novel approach for mode identification.
Model-updating of complex structures may involve hundreds of design variables, which limits the extensive use of traditional gradient optimization methods, since the quantitative relationship between the design variables and the objective function is difficult to be described mathematically. To overcome such problems, the application of intelligent optimization algorithms has received extensive attention in recent years. Inspired by the observation of birds flocking and searching for food, Eberchart and Kennedy [
21] proposed particle swarm optimization (PSO), which is a representative intelligent optimization algorithm. PSO is a global optimization algorithm that can simultaneously search for the optimal value in the entire design domain and does not rely on gradient information; thus, it has the characteristics of easy operation and fast convergence. Consequently, this study proposes a structural dynamic model-updating method with automatic mode identification using PSO.
The paper is organized as follows: In
Section 2, the experimental and FE modal-analysis results are presented and discussed. In
Section 3, a new mode-identification index (ISR) is introduced and the structural dynamic model-updating method with automatic mode identification using PSO is described in detail. In
Section 4, the optimization model is established, and the optimal results are discussed in
Section 5. Finally, the conclusions are drawn in
Section 6.