Estimation of shell characteristics using time-frequency patterns and neural network

M. Zakharia, P. Chevret, F. Magand
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引用次数: 4

Abstract

Surface acoustic waves circumnavigating around an elastic shell carry out very valuable information on its mechanical and geometrical properties and can be used for ultrasonic inspection and non destructive evaluation as well as sonar classification. This information can be decomposed into several elementary components associated to various physical phenomena. Time-frequency representations (and, in particular, the Smoothed Pseudo Wigner-Ville Distribution) have been shown to be very relevant tools for describing these phenomena. Several experiments and simulations have shown, in the time-frequency plane, the importance of a frequency range associated to the so-called "coincidence frequency" (interaction between a Lamb wave and a Stoneley type wave). This pattern has been extracted from the time-frequency image for a great variety of shells in order to describe the direct problem with a reduced set of characteristics parameters. The inverse problem consists in estimating the mechanical and geometrical properties of the shell from these parameters. An innovative neural network approach has been developed for estimating these properties and has been applied to both simulated and experimental data. The method shows a very good accuracy (error less than a few percents on the estimation of the shell characteristics: thickness, density and shear wave velocity).
基于时频模式和神经网络的壳体特性估计
围绕弹性壳体的表面声波提供了非常有价值的力学和几何特性信息,可用于超声检测和无损评价以及声纳分类。这些信息可以分解成与各种物理现象相关的几个基本组成部分。时频表示(特别是平滑伪维格纳-维尔分布)已被证明是描述这些现象的非常相关的工具。几个实验和模拟表明,在时间-频率平面上,与所谓的“重合频率”(兰姆波和斯通利波之间的相互作用)相关的频率范围的重要性。为了用一组简化的特征参数来描述直接问题,从多种壳体的时频图像中提取了该模式。反问题在于根据这些参数估计壳的力学和几何特性。一种创新的神经网络方法已被开发用于估计这些特性,并已应用于模拟和实验数据。该方法在壳层厚度、密度和横波速度的估计上具有很好的精度(误差小于百分之几)。
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