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首页> 外文期刊>Optik: Zeitschrift fur Licht- und Elektronenoptik: = Journal for Light-and Electronoptic >Laser ultrasonic quantitative recognition based on wavelet packet fusion algorithm and SVM
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Laser ultrasonic quantitative recognition based on wavelet packet fusion algorithm and SVM

机译:基于小波包融合算法和SVM的激光超声定量识别

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AbstractWith the development of industrialization and modern technology, laser ultrasonic technique is more and more used in aerospace, machinery and electronics, measurements, metallurgy chemical engineering, materials science, railway transportation, bridge engineering, etc. In order to maintain the excellent characteristics of new materials (such as thermal properties, mechanical properties, chemical properties and optical properties, material structure must be early diagnosed and monitored before properties change. Nondestructive Testing technology plays a great role in monitoring reliability of industry products. This paper proposes a new feature selection method based on wavelet packet algorithm, and applies SVM (support vector machine) for quantitative classification on the ultrasonic echo data generated by cracks in Laser ultrasonic experiment. By combining the nondestructive device and dimension reduction method in machine learning, this paper analyses the scatter plot of two cracks in 2d and the fitting surface in 3d and give the quantitative index for determining the performance of used methods.]]>
机译:<![cdata [ 抽象 随着工业化和现代技术的开发,激光超声技术越来越多地用于航空航天,机械和电子,测量,冶金化工工程,材料科学,铁路运输,桥梁工程等。为了保持新材料的优异特性(如热性质,机械性能,化学性质和光学性质,必须在性能变化之前早期诊断和监测材料结构。无损检测技术在监控工业产品的可靠性方面发挥着重要作用。本文提出了一种基于小波包算法的新特征选择方法,并应用SVM(支持向量机)以进行激光超声实验裂缝产生的超声回波数据的定量分类。通过将非破坏性装置和尺寸减少方法组合在机器学习中,本文分析了2D中的两个裂缝的散点图,3D裂缝和装配表面的散点图,并提供了确定使用方法性能的定量指标。 ]]>

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