Ali Abdulbaset, Hu Bing, Ramahi Omar
Department of Electrical and Computer Engineering, University of Waterloo, 200 University Avenue West, Waterloo, ON N2L 3G1, Canada.
School of Information and Electronics, Beijing Institute of Technology, Beijing 100081, China.
Sensors (Basel). 2015 May 15;15(5):11402-16. doi: 10.3390/s150511402.
This work presents a real life experiment of implementing an artificial intelligence model for detecting sub-millimeter cracks in metallic surfaces on a dataset obtained from a waveguide sensor loaded with metamaterial elements. Crack detection using microwave sensors is typically based on human observation of change in the sensor's signal (pattern) depicted on a high-resolution screen of the test equipment. However, as demonstrated in this work, implementing artificial intelligence to classify cracked from non-cracked surfaces has appreciable impact in terms of sensing sensitivity, cost, and automation. Furthermore, applying artificial intelligence for post-processing data collected from microwave sensors is a cornerstone for handheld test equipment that can outperform rack equipment with large screens and sophisticated plotting features. The proposed method was tested on a metallic plate with different cracks and the obtained experimental results showed good crack classification accuracy rates.
这项工作展示了一个实际的实验,即在一个由加载了超材料元件的波导传感器获得的数据集上,实现用于检测金属表面亚毫米级裂缝的人工智能模型。使用微波传感器进行裂缝检测通常基于人工观察测试设备高分辨率屏幕上显示的传感器信号(模式)变化。然而,正如这项工作所表明的,在传感灵敏度、成本和自动化方面,实施人工智能对有裂缝和无裂缝表面进行分类具有显著影响。此外,将人工智能应用于对从微波传感器收集的数据进行后处理,是手持式测试设备的基石,这种手持式测试设备可以超越具有大屏幕和复杂绘图功能的机架式设备。所提出的方法在带有不同裂缝的金属板上进行了测试,获得的实验结果显示出良好的裂缝分类准确率。