2021 Volume 2 Issue J2 Pages 721-732
This study aimed for the improvement in sensitivity and efficiency of the hammering method by estimating the influence range of detection results. A concrete wall specimen with void defects was used. The features with higher influence were selected from the time-frequency analysis and multiple feature selection algorithms. As a result of defect detection and its influence range using neural networks, it is possible to detect void defects up to a depth of 8 cm. The inspection results can be efficiently visualized by estimating the influence range.