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NIST Awards Nearly $4 Million to Support Metals-Based Additive Manufacturing

A hollow semicircle of metal has much thinner metal scaffolding inside the hollow area.

NIST has awarded $3.7 million in grants to help address barriers to widespread adoption of metals-based additive manufacturing through measurement science research. Additive manufacturing typically creates parts and components by building them layer by layer, based on a 3D computer model. Most metals-based additive processes form parts by melting or sintering material in powder form.

Credit: OlegDoroshin/Shutterstock

GAITHERSBURG, Md. — The U.S. Department of Commerce’s National Institute of Standards and Technology (NIST) has awarded $3.7 million in grants to help address current and future barriers to widespread adoption of metals-based additive manufacturing (AM) through measurement science research.

“The U.S. can take a leading role in developing the measurements and international standards that will help accelerate adoption of these important 3D-printing technologies,” said Under Secretary of Commerce for Standards and Technology and NIST Director Laurie E. Locascio. “To compete globally, we need to invest in programs such as this that bring together our best minds in industry, academia and government to solve important technical challenges.”

Additive manufacturing typically creates parts and components by building them layer by layer, based on a 3D computer model. Most metals-based additive processes form parts by melting or sintering material in powder form. 

“Additive manufacturing offers advantages such as reduced material waste, lower energy intensity, reduced time-to-market, and just-in-time production that could bolster supply chains in the U.S.,” said Locascio. “Accelerating the adoption of new measurement methods and standards will help to advance U.S. competitiveness in this important industry.”

Through its own research and with these grants, NIST is addressing barriers to adoption of additive manufacturing, including measurement science to support equivalence-based qualification and model-based qualification, the characterization of AM materials, and standards to support consistent data exchange/characterizing new advances in AM production systems.

“Accelerating the adoption of new measurement methods and standards will help to advance U.S. competitiveness in this important industry.” —NIST Director Laurie E. Locascio

The following organizations will receive NIST Metals-Based Additive Manufacturing Grants Program funding to be spent over two years:

The Research Foundation for the State University of New York (Albany, New York) — $957,706
The goal for this project is to demonstrate an enhanced nondestructive evaluation (NDE) technique that can determine key material properties such as oxide thicknesses, splatter particle percentage, grain size and defect detection.

Colorado School of Mines (Golden, Colorado) — $956,888
This project will examine new optical metrologies to enable real-time process feedback and control to achieve process-based qualification and certification of metallic parts made by AM.

Auburn University (Auburn, Alabama) — $949,075 
The goal of this project is to establish a data-driven framework with computer vision and machine learning for the nondestructive qualification of AM materials and parts for applications that cannot afford failures due to fatigue.

General Electric, GE Research (Niskayuna, New York) — $873,999
GE Research teamed up with GE Additive and the University of Texas at El Paso (UTEP) to establish the Intelligent Stitch Integration for Testing and Evaluation (I-SITE) program to extend existing standardized methods and build correlations between sensor response, material behavior and mechanical properties.

Released July 26, 2022, Updated December 19, 2024