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Decision support system for ultrasound inspection of fiber metal laminates using statistical signal processing and neural networks

机译:决策支持系统,用于使用统计信号处理和神经网络对纤维金属层压板进行超声检查

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摘要

The growth of the aerospace industry has motivated the development of alternative materials. The fiber-metal laminate composites (FML) may replace the monolithic aluminum alloys in aircrafts structure as they present some advantages, such as higher stiffness, lower density and longer lifetime. However, a great variety of deformation modes can lead to failures in these composites and the degradation mechanisms are hard to detect in early stages through regular ultrasonic inspection. This paper aims at the automatic detection of defects (such as fiber fracture and delamination) in fiber-metal laminates composites through ultrasonic testing in the immersion pulse-echo configuration. For this, a neural network based decision support system was designed. The preprocessing stage (feature extraction) comprises Fourier transform and statistical signal processing techniques (Principal Component Analysis and Independent Component Analysis) aiming at extracting discriminant information and reduce redundancy in the set of features. Through the proposed system, classification efficiencies of ~99% were achieved and the misclassification of signatures corresponding to defects was almost eliminated.
机译:航空航天工业的发展推动了替代材料的发展。纤维-金属层压复合材料(FML)可以代替飞机结构中的整体式铝合金,因为它们具有一些优势,例如更高的刚度,更低的密度和更长的使用寿命。但是,各种各样的变形模式会导致这些复合材料的失效,并且很难通过常规的超声波检查在早期阶段检测出降解机理。本文旨在通过浸没式脉冲回波配置中的超声测试,自动检测纤维-金属层压板复合材料中的缺陷(例如纤维断裂和分层)。为此,设计了基于神经网络的决策支持系统。预处理阶段(特征提取)包括傅里叶变换和统计信号处理技术(主成分分析和独立成分分析),旨在提取判别信息并减少特征集中的冗余度。通过提出的系统,分类效率达到了〜99%,并且几乎消除了缺陷对应的签名错误分类。

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