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Structural Damage Identification Based on l_1 Regularization and Bare Bones Particle Swarm Optimization with Double Jump Strategy

机译:基于L_1正则化和裸骨粒子群优化的结构损伤识别,双跳策略

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Structural damage identification (SDI) plays a major role in structural health monitoring (SHM), which has been demanded by researchers to better face the challenges in the aging civil engineering, such as bridge structure and building structure. Many methods have been developed for the application to the real structures, but there are still some difficulties which result in inaccurate, even false damage identification. As a variant of particle swarm optimization (PSO), bare bones particle swarm optimization (BBPSO) is a simple but very powerful optimization tool. However, it is easy to be trapped in the local optimal state like other PSO algorithms, especially in SDI problems. In order to improve its performance in SDI problems, this paper aims to propose a novel optimization algorithm which is named as bare bones particle swarm optimization with double jump (BBPSODJ) for finding a new solution to the SDI problem in SHM field. To begin with, after the introduction of sparse recovery theory, the mathematical model for SDI is established where an objective function based on l(1) regularization is constructed. Secondly, according to the basic theory of the BBPSODJ, a double jump strategy based on the BBPSO is designed to enhance the dynamic of particles, and it is able to make a large change in particle searching scopes, which can improve the search behaviour of BBPSO and prevent the algorithm from being trapped into local minimum state. Thirdly, three optimization test functions and a numerical example are utilized to validate the optimization performance of BBPSO, traditional PSO, and genetic algorithm (GA) comparatively; it is obvious that the proposed BBPSODJ shows great self-adapting property and good performance in the optimization process by introducing the novel double jump strategy. Finally, in the laboratory, an experimental example of steel frame with 4 damage cases is implemented to further assess the damage identification capability of the BBPSODJ with l(1) regularization. From the damage identification results, it can be seen that the proposed BBPSODJ algorithm, which is efficient and robust, has great potential in the field of SHM.
机译:结构损害识别(SDI)在结构健康监测(SHM)中起主要作用,研究人员要求更好地面对老化土木工程,如桥梁结构和建筑结构的挑战。已经开发了许多方法,用于应用于真实结构,但仍有一些困难导致不准确,甚至是错误的损害识别。作为粒子群优化(PSO)的变体,裸骨粒子群优化(BBPSO)是一种简单但非常强大的优化工具。但是,很容易像其他PSO算法一样被困在局部最佳状态,尤其是在SDI问题中。为了提高其在SDI问题中的性能,本文旨在提出一种新颖的优化算法,该算法被命名为裸骨粒子群优化,双跳(Bbpsodj)用于查找SHM字段中SDI问题的新解决方案。首先,在引入稀疏恢复理论之后,建立了基于L(1)正规化的目标函数的SDI的数学模型。其次,根据BBPSODJ的基本理论,基于BBPSO的双跳策略旨在增强粒子的动态,并且能够在粒子搜索范围内进行大的变化,这可以提高BBPSO的搜索行为并防止算法被困为局部最小状态。第三,利用了三种优化测试功能和数值例子来验证BBPSO,传统PSO和遗传算法(GA)的优化性能;很明显,建议的BBPSODJ通过介绍新的双跳策略,在优化过程中显示出良好的自适应性能和良好的性能。最后,在实验室中,实施了具有4个损坏案例的钢框架的实验例,以进一步评估BBPSODJ的损坏识别能力,L(1)正规。从损伤识别结果中,可以看出,所提出的BBPSODJ算法是高效且坚固的算法在SHM领域具有很大的潜力。

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  • 来源
    《Mathematical Problems in Engineering》 |2019年第25期|5954104.1-5954104.16|共16页
  • 作者单位

    Wuhan Inst Technol Sch Civil Engn & Architecture Wuhan 430073 Peoples R China;

    Wuhan Inst Technol Sch Civil Engn & Architecture Wuhan 430073 Peoples R China;

    Wuhan Inst Technol Sch Civil Engn & Architecture Wuhan 430073 Peoples R China;

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