Affiliation:
1. Department of Mechanical Engineering Taibah University Medina Saudi Arabia
2. Department of Mechanical Engineering Pennsylvania State University University Park Pennsylvania USA
3. Department of Mathematics Pennsylvania State University University Park Pennsylvania USA
Abstract
AbstractIn the current state of the art of process industries/manufacturing technologies, computer‐instrumented and computer‐controlled autonomous techniques are necessary for damage diagnosis and prognosis in operating machinery. From this perspective, the paper addresses the issue of fatigue damage that is one of the most encountered sources of degradation in polycrystalline‐alloy structures of machinery components. In this paper, the convolutional neural networks (CNNs) are applied to synergistic combinations of ultrasonic measurements and images from a confocal microscope (Alicona) to detect and evaluate the risk of fatigue damage. The database of the Alicona has been used to calibrate the ultrasonic database and to provide the ground truth for fatigue damage assessment. The results show that both the ultrasonic data and Alicona images are capable of classifying the fatigue damage into their respective classes with considerably high accuracy. However, the ultrasonic CNN model yields better accuracy than the Alicona CNN model by almost 9%.
Subject
Mechanical Engineering,Mechanics of Materials,General Materials Science