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Application of artificial neural network to nondestructive testing of internal wooddefects based on the intrinsic frequencies

机译:人工神经网络在基于内在频率的内部木质虚构的非破坏性测试

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The location and size of internal wood defects are nondestructively determined using experimental modal analysis and artificial neural network in this study. The different defect sizes and locations were simulated by removing mass from intact wood specimens. At room temperature in the laboratory, free vibration testing was conducted to generate the frequency response functions (FRF) of intact and defective Korean Pine (Pinus koraiensis) wood specimens using fast Fourier transform analysis system. The first three orders intrinsic frequencies were captured by picking up the location of each order peak of FRF curves. Then, two identification indexes developed by previous research were constructed based on these intrinsic frequencies, and they were used as input parameters to build the networks for localization and size determination of wood defects respectively. These two artificial neural networks were trained and tested for wood defects recognition. The research results showed that: (1) the intrinsic frequencies of defective wood were lower than those of intact wood; and (2) the constructed two identification indexes were capable to effectively detect the location and size of wood defects, which were more sensitive to large size defects than small size defects.
机译:使用本研究中的实验模态分析和人工神经网络,内部木缺陷的位置和尺寸无损地确定。通过从完整的木质标本中除去质量来模拟不同的缺陷尺寸和位置。在实验室中的室温下,使用快速傅里叶变换分析系统,进行了自由振动测试以产生完整和有缺陷的韩国松(Pinus Koraiensis)木质标本的频率响应功能(FRF)。通过拾取FRF曲线的每个订单峰的位置来捕获前三个订单内在频率。然后,基于这些内在频率构建先前研究的两个识别指标,它们被用作输入参数,以分别构建用于定位和尺寸确定木缺陷的网络。这两个人工神经网络训练并测试了木材缺陷识别。研究结果表明:(1)缺陷木材的内在频率低于完整木材的内在频率; (2)构建的两个识别指标能够有效地检测木缺陷的位置和大小,这对大尺寸缺陷更敏感,而不是小尺寸缺陷。

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