Moomen Abdelniser, Ali Abdulbaset, Ramahi Omar M
Department of Computer Science, Rochester Institute of Technology, 1 Lomb Memorial Drive, Rochester, NY 14623, USA.
Department of Electrical and Computer Engineering, University of Waterloo, 200 University Ave W, Waterloo, ON N2L 3G1, Canada.
Sensors (Basel). 2016 Apr 19;16(4):559. doi: 10.3390/s16040559.
Nondestructive Testing (NDT) assessment of materials' health condition is useful for classifying healthy from unhealthy structures or detecting flaws in metallic or dielectric structures. Performing structural health testing for coated/uncoated metallic or dielectric materials with the same testing equipment requires a testing method that can work on metallics and dielectrics such as microwave testing. Reducing complexity and expenses associated with current diagnostic practices of microwave NDT of structural health requires an effective and intelligent approach based on feature selection and classification techniques of machine learning. Current microwave NDT methods in general based on measuring variation in the S-matrix over the entire operating frequency ranges of the sensors. For instance, assessing the health of metallic structures using a microwave sensor depends on the reflection or/and transmission coefficient measurements as a function of the sweeping frequencies of the operating band. The aim of this work is reducing sweeping frequencies using machine learning feature selection techniques. By treating sweeping frequencies as features, the number of top important features can be identified, then only the most influential features (frequencies) are considered when building the microwave NDT equipment. The proposed method of reducing sweeping frequencies was validated experimentally using a waveguide sensor and a metallic plate with different cracks. Among the investigated feature selection techniques are information gain, gain ratio, relief, chi-squared. The effectiveness of the selected features were validated through performance evaluations of various classification models; namely, Nearest Neighbor, Neural Networks, Random Forest, and Support Vector Machine. Results showed good crack classification accuracy rates after employing feature selection algorithms.
材料健康状况的无损检测(NDT)评估对于区分健康结构和不健康结构或检测金属或介电结构中的缺陷很有用。使用相同的测试设备对涂覆/未涂覆的金属或介电材料进行结构健康测试需要一种能够在金属和电介质上工作的测试方法,例如微波测试。降低与当前结构健康微波无损检测诊断实践相关的复杂性和费用需要一种基于机器学习的特征选择和分类技术的有效且智能的方法。当前的微波无损检测方法通常基于测量传感器在整个工作频率范围内S矩阵的变化。例如,使用微波传感器评估金属结构的健康状况取决于作为工作频段扫描频率函数的反射或/和传输系数测量。这项工作的目的是使用机器学习特征选择技术降低扫描频率。通过将扫描频率视为特征,可以识别最重要特征的数量,然后在构建微波无损检测设备时仅考虑最具影响力的特征(频率)。使用波导传感器和具有不同裂纹的金属板对所提出的降低扫描频率的方法进行了实验验证。在所研究的特征选择技术中有信息增益、增益比、 Relief、卡方检验。通过各种分类模型的性能评估验证了所选特征的有效性;即最近邻、神经网络、随机森林和支持向量机。结果表明,采用特征选择算法后裂纹分类准确率良好。