Filter Results
Related Organization
- Biological and Environmental Systems Science Directorate (23)
- Computing and Computational Sciences Directorate (35)
- Energy Science and Technology Directorate
(217)
- Fusion and Fission Energy and Science Directorate (21)
- Information Technology Services Directorate (2)
- Isotope Science and Enrichment Directorate (6)
- National Security Sciences Directorate
(17)
- Neutron Sciences Directorate (11)
- Physical Sciences Directorate (128)
- User Facilities (27)
Researcher
- Singanallur Venkatakrishnan
- Amir K Ziabari
- Philip Bingham
- Ryan Dehoff
- Vincent Paquit
- Aaron Werth
- Alexander I Wiechert
- Ali Passian
- Costas Tsouris
- Debangshu Mukherjee
- Diana E Hun
- Emilio Piesciorovsky
- Gary Hahn
- Gina Accawi
- Gs Jung
- Gurneesh Jatana
- Gyoung Gug Jang
- Harper Jordan
- Jason Jarnagin
- Joel Asiamah
- Joel Dawson
- Mark M Root
- Mark Provo II
- Md Inzamam Ul Haque
- Michael Kirka
- Nance Ericson
- Obaid Rahman
- Olga S Ovchinnikova
- Philip Boudreaux
- Radu Custelcean
- Raymond Borges Hink
- Rob Root
- Srikanth Yoginath
- Varisara Tansakul
- Yarom Polsky

ORNL researchers have developed a deep learning-based approach to rapidly perform high-quality reconstructions from sparse X-ray computed tomography measurements.

The ever-changing cellular communication landscape makes it difficult to identify, map, and localize commercial and private cellular base stations (PCBS).

We have been working to adapt background oriented schlieren (BOS) imaging to directly visualize building leakage, which is fast and easy.

Among the methods for point source carbon capture, the absorption of CO2 using aqueous amines (namely MEA) from the post-combustion gas stream is currently considered the most promising.

Electrical utility substations are wired with intelligent electronic devices (IEDs), such as protective relays, power meters, and communication switches.

Simurgh revolutionizes industrial CT imaging with AI, enhancing speed and accuracy in nondestructive testing for complex parts, reducing costs.

This innovative approach combines optical and spectral imaging data via machine learning to accurately predict cancer labels directly from tissue images.