Yu Qiuqin, Li Youxin, Luo Tingyi, Zhang Jun, Tao Liang, Zhu Xin, Zhang Yun, Luo Liufen, Xu Xinxin
Guangxi Beitou Highway Construction Investment Group Co., Ltd., Guangxi, 5300281, China.
National Engineering Laboratory for Highway Maintenance Equipment, Chang'an University, Xi'an, 710064, China.
Sci Rep. 2023 Nov 12;13(1):19710. doi: 10.1038/s41598-023-46752-2.
The dimension of the void area in pavement is crucial to its structural safety. However, there is no effective method to measure its geometric parameters. To address this issue, a void size extraction algorithm based on the continuous wavelet transform (CWT) method was proposed using ground-penetrating radar (GPR) signal. Firstly, the finite-difference time-domain (FDTD) method was used to investigate the GPR response of void areas with different shapes, sizes, and depths. Next, the GPR signal was processed using the CWT method, and a 3D image based on the CWT result was used to visualize the void area. Based on the differences between the void and normal pavement in the time and frequency domains, the signal with maximum energy from the CWT time-frequency result was extracted and combined to reconstruct the new B-scan image, where void areas have energy concentration phenomenon. Based on this, width and depth of void detection algorithm was proposed to recognize the void area. Finally, the detection algorithm was verified both in numerical model and physical lab model. The results indicated that the CWT time-frequency energy spectrum can be used to enhance the void feature, and the 3D CWT image can clearly visualize the void area with a highlighted energy area. After fully testing and validating in numerical and lab models, our proposed method achieved high accuracy in void width and depth detection, providing a precise method for estimating void dimension in pavement. This method can guide DOT departments to carry out pre-maintenance, thereby ensuring pavement safety.
路面中空洞区域的尺寸对其结构安全至关重要。然而,目前尚无有效的方法来测量其几何参数。为解决这一问题,提出了一种基于连续小波变换(CWT)方法的空洞尺寸提取算法,该算法利用探地雷达(GPR)信号。首先,采用时域有限差分(FDTD)方法研究了不同形状、尺寸和深度的空洞区域的探地雷达响应。其次,使用连续小波变换方法处理探地雷达信号,并基于连续小波变换结果生成三维图像以可视化空洞区域。基于空洞与正常路面在时域和频域的差异,从连续小波变换时频结果中提取能量最大的信号并进行组合,以重建新的B扫描图像,其中空洞区域存在能量集中现象。在此基础上,提出了空洞宽度和深度检测算法以识别空洞区域。最后,在数值模型和物理实验室模型中对检测算法进行了验证。结果表明,连续小波变换时频能谱可用于增强空洞特征,三维连续小波变换图像能清晰地可视化空洞区域,且能量区域突出。在数值模型和实验室模型中经过充分测试和验证后,我们提出的方法在空洞宽度和深度检测方面具有较高的精度,为估算路面空洞尺寸提供了一种精确的方法。该方法可指导交通运输部相关部门进行预防性养护,从而确保路面安全。