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Structural Damage Identification Based on the Wavelet Transform and Improved Particle Swarm Optimization Algorithm

机译:基于小波变换和改进粒子群优化算法的结构损伤识别

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A method based on the wavelet transform and improved particle swarm optimization (WIPSO) algorithm is proposed to identify the microdamage of structures. First, the singularity of wavelet coefficients is used to identify the structural damage location, and then, the improved particle swarm optimization (IPSO) algorithm is used to calculate the optimal solution of the objective function of the structural damage location to determine the structural damage severity. To study the performance of WIPSO, the structural microdamage severity is set within 10%, and a numerical simulation and experimental structure under different damage scenarios are considered. In addition, the ability of wavelet coefficients to identify the location of the structural damage under different noise levels is studied. To evaluate the performance of IPSO, the standard particle swarm optimization algorithm with an inertia weight factor of 0.8 (0.8PSO), the genetic algorithm (GA), and the bat algorithm (BA) are also considered. The results show that WIPSO can effectively and accurately identify the structural damage location and severity. Wavelet transform is very robust to the structural damage location. Compared with the standard 0.8PSO and other mainstream algorithms, IPSO has good convergence and performs more stable and more accurate in the identification of structural damage severity.
机译:提出了一种基于小波变换和改进的粒子群优化(WIPSO)算法的方法,以识别结构的微筒。首先,使用小波系数的奇异性来识别结构损伤位置,然后,改进的粒子群优化(IPSO)算法用于计算结构损伤位置的目标函数的最佳解决方案,以确定结构损伤严重程度。为研究Wipso的性能,结构微管严重程度设定在10%以内,考虑了不同损害情景下的数值模拟和实验结构。另外,研究了小波系数识别不同噪声水平下结构损伤位置的能力。为了评估IPSO的性能,还考虑了具有0.8(0.8pso)的惯性重量因子的标准粒子群优化算法,遗传算法(GA)和BAT算法(BA)。结果表明,Wipso可以有效准确地识别结构损伤位置和严重程度。小波变换对结构损坏位置非常强大。与标准的0.8pso等主流算法相比,IPSO具有良好的收敛性,在结构损伤严重程度的识别中具有更稳定和更准确的。

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