首页> 外文会议>Society for Machinery Failure Prevention Technology Meeting; 20050418-21; Virginia Beach,VA(US) >EXTRACTING INFORMATION FROM CONVENTIONAL AE FEATURES FOR ONSET DAMAGE DETECTION IN CARBON FIBER COMPOSITES
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EXTRACTING INFORMATION FROM CONVENTIONAL AE FEATURES FOR ONSET DAMAGE DETECTION IN CARBON FIBER COMPOSITES

机译:从常规AE功能中提取信息以进行碳纤维复合材料的初次损伤检测

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We have analyzed simple data fusion and preprocessing methods on Acoustic Emission measurements of prosthetic feets made of carbon fiber reinforced composites. This paper presents the initial research steps; aiming at reducing the time spent on the fatigue test. With a simple single feature probabilistic scheme we have showed that these methods can lead to increased classification performance. We conclude that: the derived features of the TTL count leads to increased classification under supervised conditions. The probabilistic classification scheme was founded on the histogram, however different approaches can readily be investigated using the improved features, possibly improving the performance using multiple feature classifiers, e.g., Voting systems; Support Vector Machines and Gaussian Mixtures.
机译:我们已经对碳纤维增强复合材料制成的假脚的声发射测量进行了简单的数据融合和预处理方法的分析。本文介绍了初步的研究步骤;旨在减少在疲劳测试上花费的时间。通过简单的单特征概率方案,我们证明了这些方法可以提高分类性能。我们得出以下结论:TTL计数的派生特征导致在监督条件下分类的增加。概率分类方案是基于直方图的,但是使用改进的特征可以很容易地研究不同的方法,可能使用多个特征分类器(例如投票系统)来提高性能。支持向量机和高斯混合。

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