Tian Xu, Ao Jun, Ma Zizhu, Ma Chunbo, Shi Junjie
Research Institute of Optical Communication, School of Information and Communication, Guilin University of Electronic Technology, Guilin 541004, China.
Pengcheng Laboratory, Shenzhen 518000, China.
Entropy (Basel). 2023 Jul 9;25(7):1034. doi: 10.3390/e25071034.
Within the scope of concrete internal defect detection via laser Doppler vibrometry (LDV), the acquired signals frequently suffer from low signal-to-noise ratios (SNR) due to the heterogeneity of the concrete's material properties and its rough surface structure. Consequently, these factors make the defect signal characteristics challenging to discern precisely. In response to this challenge, we propose an internal defect detection algorithm that incorporates local mean decomposition-singular value decomposition (LMD-SVD) and weighted spatial-spectral entropy (WSSE). Initially, the LDV vibration signal undergoes denoising via LMD and the SVD algorithms to reduce noise interference. Subsequently, the distribution of each frequency in the scan plane is analyzed utilizing the WSSE algorithm. Since the vibrational energy of the frequencies caused by the defect resonance is concentrated in the defect region, its energy distribution in the scan plane is non-uniform, resulting in a significant difference between the defect resonance frequencies' SSE values and the other frequencies' SSE values. This feature is used to estimate the resonant frequencies of internal defects. Ultimately, the defects are characterized based on the modal vibration patterns of the defect resonant frequencies. Tests were performed on two concrete blocks with simulated cavity defects, using an ultrasonic transducer as the excitation device to generate ultrasonic vibrations directly from the back of the blocks and applying an LDV as the acquisition device to collect vibration signals from their front sides. The results demonstrate the algorithm's capacity to effectively pinpoint the information on the location and shape of shallow defects within the concrete, underscoring its practical significance for concrete internal defect detection in practical engineering scenarios.
在通过激光多普勒振动测量法(LDV)进行混凝土内部缺陷检测的范围内,由于混凝土材料特性的不均匀性及其粗糙的表面结构,采集到的信号经常具有低信噪比(SNR)。因此,这些因素使得缺陷信号特征难以精确辨别。针对这一挑战,我们提出了一种结合局部均值分解 - 奇异值分解(LMD - SVD)和加权空间 - 谱熵(WSSE)的内部缺陷检测算法。首先,通过LMD和SVD算法对LDV振动信号进行去噪,以减少噪声干扰。随后,利用WSSE算法分析扫描平面中每个频率的分布。由于缺陷共振引起的频率的振动能量集中在缺陷区域,其在扫描平面中的能量分布不均匀,导致缺陷共振频率的SSE值与其他频率的SSE值之间存在显著差异。利用这一特征来估计内部缺陷的共振频率。最终,根据缺陷共振频率的模态振动模式对缺陷进行表征。使用超声波换能器作为激励装置,直接从混凝土块背面产生超声波振动,并应用LDV作为采集装置从其正面收集振动信号,对两个带有模拟空洞缺陷的混凝土块进行了测试。结果表明,该算法能够有效地精确确定混凝土内部浅层缺陷的位置和形状信息,突出了其在实际工程场景中对混凝土内部缺陷检测的实际意义。