Close Menu
AM ChronicleAM Chronicle
  • Content
    • News
    • Insights
    • Case Studies
    • AM Infocast
  • Focus Regions
    • India
    • Asia Pacific
    • Middle East
    • North America
    • Europe
  • Industries
    • Automotive
    • Aerospace
    • Defence
    • Energy
    • Construction
    • Healthcare
    • Tooling
    • Engineering
  • Training
  • Magazine
    • Digital Issues
  • Events
Facebook Instagram YouTube LinkedIn
  • About us
  • Media Kit
  • Contact us
Facebook Instagram YouTube LinkedIn
AM ChronicleAM Chronicle
  • Content
    1. News
    2. Insights
    3. Case Studies
    4. AM Infocast
    5. View All
    Marvin Raupert – an engineer on the project – pictured with a model demonstrating the 3D printing process., Credits: Leibniz University

    Leibniz University Researchers Successfully Demonstrate Metal 3D Printing in Microgravity

    August 30, 2025
    Rocket Lab Signs MoU with Nikon SLM Solutions for Next-Generation Ultra-Large Metal AM Platform

    Rocket Lab Signs MoU with Nikon SLM Solutions for Next-Generation Ultra-Large Metal AM Platform

    August 29, 2025
    Honeywell-Led Consortium Secures £14.1 Million for AI-Driven Additive Manufacturing in Aerospace Sector

    Honeywell-Led Consortium Secures £14.1 Million for AI-Driven Additive Manufacturing in Aerospace Sector

    August 29, 2025
    Credits: WFIRM

    WFIRM to Test 3D Bioprinted Liver Tissue Onboard the ISS

    August 25, 2025
    Making Milestones: 3D printing for a greener tomorrow

    Making Milestones: 3D printing for a greener tomorrow

    August 29, 2025
    Nestlé embraces technology and innovation in 3D printing

    Nestlé embraces technology and innovation in 3D printing

    August 29, 2025
    Pure copper and copper alloy (CuCrZr, CuCrNb, CuSn10) samples produced using ADDIREEN's green-laser powder bed fusion AM machines (Image courtesy: Addireen Technologies)

    Addireen: Pioneering Copper Printing in Metal Additive Manufacturing

    August 12, 2025
    Digital Twin Integration in Additive Manufacturing Systems: Revolutionizing Design, Production, and Lifecycle Management

    Digital Twin Integration in Additive Manufacturing Systems: Revolutionizing Design, Production, and Lifecycle Management

    July 4, 2025
    Source: Formlabs

    Case Study: Eaton Corporation’s Strategic Transition to In-House 3D Printing for Tooling Applications

    August 29, 2025
    Revolutionizing Atherosclerosis Research with 3D-Bioprinted Brain Vessels

    Revolutionizing Atherosclerosis Research with 3D-Bioprinted Brain Vessels

    August 25, 2025
    Formlabs fuse 1+

    How Imaginarium Helped Kaash Studio Scale with the Right 3D Printing Technology

    April 12, 2025
    The Formlabs Fuse 1+ 30W

    Kaash Studio Optimized Service Bureau Operations with Formlabs 3D Printers- Case Study

    January 30, 2025
    Sustainable Production of Metal Powder for Additive Manufacturing

    Sustainable Production of Metal Powder for Additive Manufacturing with Bruce Bradshaw

    February 15, 2024
    Meeting Evolving Customer Demands in the Additive Manufacturing Industry with Tyler Reid

    Meeting Evolving Customer Demands in the Additive Manufacturing Industry with Tyler Reid

    February 9, 2024
    Innovation is at the heart of AMUG with Diana Kalisz

    Innovation is at the heart of AMUG with Diana Kalisz

    March 7, 2023
    3D Printing Workshops at AMUG with Edward Graham

    3D Printing Workshops at AMUG with Edward Graham

    March 7, 2023
    Marvin Raupert – an engineer on the project – pictured with a model demonstrating the 3D printing process., Credits: Leibniz University

    Leibniz University Researchers Successfully Demonstrate Metal 3D Printing in Microgravity

    August 30, 2025
    Making Milestones: 3D printing for a greener tomorrow

    Making Milestones: 3D printing for a greener tomorrow

    August 29, 2025
    Nestlé embraces technology and innovation in 3D printing

    Nestlé embraces technology and innovation in 3D printing

    August 29, 2025
    Source: Formlabs

    Case Study: Eaton Corporation’s Strategic Transition to In-House 3D Printing for Tooling Applications

    August 29, 2025
  • Focus Regions
    • India
    • Asia Pacific
    • Middle East
    • North America
    • Europe
  • Industries
    • Automotive
    • Aerospace
    • Defence
    • Energy
    • Construction
    • Healthcare
    • Tooling
    • Engineering
  • Training
  • Magazine
    • Digital Issues
  • Events
Subscribe
AM ChronicleAM Chronicle
Home » News

Deep learning makes X-ray CT inspection of 3D-printed parts faster, more accurate

News By AM Chronicle EditorOctober 15, 20225 Mins Read
x ray ct scan e1665809574963
Paul Brackman loads 3D-printed metal samples into a tower for examination using an X-ray CT scan in DOE’s Manufacturing Demonstration Facility at ORNL. Credit: Brittany Cramer/ORNL, U.S. Dept. of Energy
LinkedIn Twitter Facebook WhatsApp Pinterest Email Copy Link

A new deep-learning framework developed at the Department of Energy’s Oak Ridge National Laboratory is speeding up the process of inspecting additively manufactured metal parts using X-ray computed tomography, or CT, while increasing the accuracy of the results. The reduced costs for time, labor, maintenance and energy are expected to accelerate expansion of additive manufacturing, or 3D printing.

More from the News 

“The scan speed reduces costs significantly,” said ORNL lead researcher Amir Ziabari. “And the quality is higher, so the post-processing analysis becomes much simpler.”

The framework is already being incorporated into software used by commercial partner ZEISS within its machines at DOE’s Manufacturing Demonstration Facility at ORNL, where companies hone 3D-printing methods.

 

 

ORNL researchers had previously developed technology that can analyze the quality of a part while it is being printed. Adding a high level of imaging accuracy after printing provides an additional level of trust in additive manufacturing while potentially increasing production.

“With this, we can inspect every single part coming out of 3D-printing machines,” said Pradeep Bhattad, ZEISS business development manager for additive manufacturing. “Currently CT is limited to prototyping. But this one tool can propel additive manufacturing toward industrialization.”

X-ray CT scanning is important for certifying the soundness of a 3D-printed part without damaging it. The process is similar to medical X-ray CT. In this case, an object set inside a cabinet is slowly rotated and scanned at each angle by powerful X-rays. Computer algorithms use the resulting stack of two-dimensional projections to construct a 3D image showing the density of the object’s internal structure. X-ray CT can be used to detect defects, analyze failures or certify that a product matches the intended composition and quality.

However, X-ray CT is not used at large scale in additive manufacturing because current methods of scanning and analysis are time-intensive and imprecise. Metals can totally absorb the lower-energy X-rays in the X-ray beam, creating image inaccuracies that can be further multiplied if the object has a complex shape. The resulting flaws in the image can obscure cracks or pores the scan is intended to reveal. A trained technician can correct for these problems during analysis, but the process is time- and labor-intensive.

Ziabari and his team developed a deep-learning framework that rapidly provides a clearer, more accurate reconstruction and an automated analysis. He will present the process his team developed during the Institute of Electrical and Electronics Engineers International Conference on Image Processing in October.

Training a supervised deep-learning network for CT usually requires many expensive measurements. Because metal parts pose additional challenges, getting the appropriate training data can be difficult. Ziabari’s approach provides a leap forward by generating realistic training data without requiring extensive experiments to gather it.

A generative adversarial network, or GAN, method is used to synthetically create a realistic-looking data set for training a neural network, leveraging physics-based simulations and computer-aided design. GAN is a class of machine learning that utilizes neural networks competing with each other as in a game. It has rarely been used for practical applications like this, Ziabari said.

Because this X-ray CT framework needs scans with fewer angles to achieve accuracy, it has reduced imaging time by a factor of six, Ziabari said — from about one hour to 10 minutes or less. Working that quickly with so few viewing angles would normally add significant “noise” to the 3D image. But the ORNL algorithm taught on the training data corrects this, even enhancing small flaw detection by a factor of four or more.

The framework developed by Ziabari’s team would allow manufacturers to rapidly fine-tune their builds, even while changing designs or materials. With this approach, sample analysis can be completed in a day instead of six to eight weeks, Bhattad said.

“If I can very rapidly inspect the whole part in a very cost-effective way, then we have 100% confidence,” he said. “We are partnering with ORNL to make CT an accessible and reliable industry inspection tool.”

ORNL researchers evaluated the performance of the new deep learning framework on hundreds of samples printed with different scan parameters, using complicated, dense materials. These results were good, and ongoing trials at MDF are working to verify that the technique is equally effective with any type of metal alloy, Bhattad said.

That’s important, because the approach developed by Ziabari’s team could make it far easier to certify parts made from new metal alloys. “People don’t use novel materials because they don’t know the best printing parameters,” Ziabari said. “Now, if you can characterize these materials so quickly and optimize the parameters, that would help move these novel materials into additive manufacturing.”

In fact, Ziabari said, the technology can be applied in many fields, including defense, auto manufacturing, aerospace and electronics printing, as well as nondestructive evaluation of electric vehicle batteries.

UT-Battelle manages Oak Ridge National Laboratory for DOE’s Office of Science, the single largest supporter of basic research in the physical sciences in the United States. DOE’s Office of Science is working to address some of the most pressing challenges of our time. For more information, visit energy.gov/science. — S. Heather Duncan

Subscribe to AM Chronicle Newsletter to stay connected:  https://bit.ly/3fBZ1mP 

Follow us on LinkedIn: https://bit.ly/3IjhrFq 

Visit for more interesting content on additive manufacturing: https://amchronicle.com

Original Source

3d printing additive manufacturing Canada Deep learning Medical Oak Ridge National Laboratory research X-ray
AM Chronicle Editor

NAMIC GLOBAL AM SUMMIT 2025
LATEST FROM AM
Marvin Raupert – an engineer on the project – pictured with a model demonstrating the 3D printing process., Credits: Leibniz University News

Leibniz University Researchers Successfully Demonstrate Metal 3D Printing in Microgravity

August 30, 20251 Min Read
Making Milestones: 3D printing for a greener tomorrow Insights

Making Milestones: 3D printing for a greener tomorrow

August 29, 20257 Mins Read
Nestlé embraces technology and innovation in 3D printing Insights

Nestlé embraces technology and innovation in 3D printing

August 29, 20253 Mins Read

CONNECT WITH US

  • 126 A, Dhuruwadi, A. V. Nagvekar Marg, Prabhadevi, Mumbai 400025
  • [email protected]
  • +91 022 24306319
Facebook Instagram YouTube LinkedIn

Newsletter

Subscribe to the AM Chronicle mailer to receive latest tech updates and insights from global industry experts.

SUBSCRIBE NOW

Quick Links

  • News
  • Insights
  • Case Studies
  • AM Training
  • AM Infocast
  • AM Magazine
  • Events

Media

  • Advertise with us
  • Sponsored Articles
  • Media Kit

Events

  • AM Conclave 2025
    24-25 September 2025 | ADNEC, Abu Dhabi
  • AMTECH 2025
    3-4 December 2025 | KTPO, Whitefield, Bengaluru
CNT Expositions & Services LLP
© 2025 CNT Expositions & Services LLP.
  • Privacy Policy
  • Cookie Policy

Type above and press Enter to search. Press Esc to cancel.



0 / 75