ACCURATE AND FAST ANOMALY DETECTION IN ADDITIVE COMPOSITE-BASED MANUFACTURING USING THERMAL CAMERAS
Published: 2025
O'Brien, Chris
Bailey, Benjamin
Bisson, Wesley
Stevens, Jason
Tomlinson, Scott
Studer, Gregory
Villez, Kris
Publication Name: SAMPE 2025 Conference and Exhibition
Publication URL: https://impact.ornl.gov/en/publications/accurate-and-fast-anomaly-detection-in-additive-composite-based-m
Abstract:
Today, large-scale additive manufacturing with plastics and composite materials requires continuous monitoring by experienced staff to prevent, detect and correct anomalous events affecting the performance of the printed part. We address the complexity of this demanding task by designing a camera-based anomaly detection system utilizing probabilistic principal component analysis (PPCA). This is a machine learning technique is trained with thermal images collected during normal operation of the large-scale printer (Cincinnati BAAM). This technique is advantageous for practical applications as there is no need to artificially introduce anomalous conditions into model training. During deployment, we challenge this model by introducing deliberate variations of the extruder speed. We reduce extrusion speed to a lower level, between 70 and 95% of the nominal value to collected test images. Our results show that images are easily identified as anomalous for extruder speeds at or below 85% of the nominal speed, meaning that an anomalous reduction of the material deposition rate can be detected within seconds of its onset. We show that our results are robust to (a) camera-to-camera variability and (b) print-to-print variability.