首页> 外文期刊>Journal of Nondestructive Evaluation >Elastic Properties Inversion of an Isotropic Plate by Hybrid Particle Swarm-Based-Simulated Annealing Optimization Technique from Leaky Lamb Wave Measurements Using Acoustic Microscopy
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Elastic Properties Inversion of an Isotropic Plate by Hybrid Particle Swarm-Based-Simulated Annealing Optimization Technique from Leaky Lamb Wave Measurements Using Acoustic Microscopy

机译:基于声波显微镜的泄漏兰姆波测量基于混合粒子群模拟退火优化技术的各向同性板弹性特性反演

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摘要

This paper presents a new method for the inversion of elastic properties of an isotropic thin plate by line-focus acoustic microscopy. Over 10 modes of the leaky Lamb waves of a 380 m thick aluminum plate were extracted by the , measurement. The inversion method of hybrid particle swarm-based-simulated annealing (PS-B-SA) optimization induces an objective function dependent on the determinant of the coefficient matrix of the dispersive characteristic equation. PS-B-SA allows considerable flexibility in parametric inversion problem and seeks the global rather than the local minimum. An alternative image display method combined with the objective function will be used to show the dispersion curves and to demonstrate the principles of the PS-B-SA optimization algorithm. The elastic properties (Young's modulus , shear modulus , Poisson's ratio ) and thickness (2 of the specimen are determined by the inversion of the dispersion curves. Inversed parameters by particle swarm optimization algorithm are compared with the PS-B-SA results to show the validity and stability of the hybrid method. Agreement between the inversed material parameters and the reported data is shown to be excellent.
机译:本文提出了一种通过线聚焦声显微镜反演各向同性薄板弹性特性的新方法。通过测量,提取了380 m厚铝板的10种以上的泄漏兰姆波模式。基于混合粒子群的模拟退火(PS-B-SA)优化的反演方法根据分散特性方程的系数矩阵的行列式得出目标函数。 PS-B-SA在参数反演问题上具有相当大的灵活性,并且寻求全局最小值而不是局部最小值。结合目标函数的替代图像显示方法将用于显示色散曲线并演示PS-B-SA优化算法的原理。通过色散曲线的反演确定试样的弹性(杨氏模量,剪切模量,泊松比)和厚度(2),并用粒子群优化算法的反演参数与PS-B-SA结果进行比较。混合方法的有效性和稳定性反向材料参数与报道的数据之间的一致性非常好。

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