A analysis staff led by Penn State has secured a $1 million grant from DARPA’s Constructions Uniquely Resolved to Assure Efficiency (SURGE) program to develop new high quality management strategies for metallic 3D printing. The 2-year venture goals to detect porosity defects in metallic components throughout the printing course of moderately than after completion. The staff will incorporate acoustic sensors into printing platforms and use ultrasonic microphones to determine flaws in real-time.


Christopher Kube, affiliate professor of engineering science and mechanics at Penn State, will lead the multidisciplinary staff. Co-principal investigators embrace Penn State college members Allison Beese and Andrea Argüelles, together with Northwestern College’s Tao Solar. Their method leverages the truth that soften swimming pools in laser-based metallic printing emit distinctive acoustic tones when bubbles type.
“Our approach relies on stimulating the soften swimming pools with brief period ultrasonic waves such that the bubbles ‘sing’ to the acoustic microphones put in throughout the construct chamber,” Kube defined. The analysis will make the most of high-speed X-ray imaging at Argonne Nationwide Laboratory’s Superior Photon Supply to offer reference information for decoding acoustic signatures throughout printing.
Present metallic 3D printing processes require post-production inspection utilizing X-ray computed tomography, which provides time and value to manufacturing. The staff’s purpose is to develop a way that may reliably measure 25-micron subsurface pores and find them inside 125 microns throughout printing. This functionality might considerably enhance manufacturing effectivity for protection functions.
Testing will happen at each Penn State and the Superior Photon Supply, with a closing demonstration deliberate for late 2026 utilizing a laser powder mattress fusion 3D printer at Penn State. The venture represents one in every of solely 4 groups chosen to take part within the DARPA SURGE program, which focuses on high-risk, high-reward analysis initiatives.
Supply: psu.edu