模糊聚类分析在声学检测中诊断槭木孔洞缺陷位置的应用

Xianjing Meng, T. Xing, Y. Xing, Hao Wang
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引用次数: 1

摘要

为了检测木材孔洞缺陷的位置,提出了一种基于模糊聚类分析和木材声学无损检测的方法。研究中采集了三种木材样本,一种在一端有孔,一种在中间有孔,另一种没有孔。采用锤击法采集声信号,提取时频特征向量作为样本数据。利用基于传递闭包的模糊相似矩阵对训练样本进行聚类分析,生成不同类别的模糊模式。然后采用“最大隶属度”原则对试样进行识别。结果表明,该方法能够有效、准确地检测出单木槭木材的孔洞缺陷位置。端孔样品的检测准确率为84%,中间孔样品的检测准确率为92%,无孔样品的检测准确率为94%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of fuzzy cluster analysis on diagnosing the locations of the hole defects in Acer mono wood using acoustic testing
In order to detect the locations of timber holes defect, a new method based on fuzzy clustering analysis and acoustic non-destructive testing of wood was proposed. There were three kinds of timber samples were taken in the research, and one with a hole at a certain end of it, one with a hole at the middle of it and the other one without a hole. Acoustic signals were collected with hammering method, and time-frequency feature vectors were extracted as the sample data. Cluster analysis was made on the training samples using fuzzy similar matrix based on the transitive closure, after which different classes of fuzzy patterns were created. The test samples were then identified by "maximum membership degree" principle. The results showed that the method was able to detect the position of hole defects in Acer mono wood effectively and accurately. The detection accuracy for samples with an end hole was 84%, for samples with a middle hole was 92% and for samples without a hole was 94%.
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