基于IMF特征的木材声发射信号分类

Meilin Zhang, Junqiu Li, Qinghui Zhang, Jiale Xu
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引用次数: 0

摘要

木材声发射信号无损检测技术对评估木材内部损伤具有重要意义。为了实现更准确、更自适应的评价,提出了一种结合瞬时频率和功率的声发射信号分析方法,提取不同内禀模态函数(IMF)分量的信号特征。然后输入SVM分类器进行分类识别,采用Receiver Operating Characteristic (ROC)曲线作为评价指标,对IMF不同成分的分类模型进行评价。结果表明,瞬时频率和功率能够清晰地显示声发射信号的特征。EMD分解的IMF分量通过提取特征进行分类,其中IMF 1分量的分类准确率最高,达到88%。表明IMF 1分量含有大量有效的声发射信号特征,可用于木材损伤和断裂状态的识别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Wood acoustic emission signal classification based on IMF's features
Nondestructive testing technology of wood acoustic emission(AE) signal is of great significance to evaluate wood internal damage. In order to achieve more accurate and adaptive evaluation, we propose an AE signal analysis method combining instantaneous frequency and power to extract the signal features of different the Intrinsic Mode Function(IMF) components. Then input the SVM classifier for classification and recognition, and adopt the Receiver Operating Characteristic (ROC) curve as the evaluation index to evaluate the classification model of different IMF components. The results show that the instantaneous frequency and power can clearly display AE signal features. The IMF components decomposed by EMD are classified by extracting features, and the classification accuracy of IMF 1 component up to 88% is the highest one. It indicates that IMF 1 component contains a large number of effective AE signal features, which can be utilized for the identification of wood damage and fracture state.
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