Filter News
Area of Research
- Advanced Manufacturing (6)
- Biology and Environment (84)
- Building Technologies (2)
- Clean Energy (126)
- Climate and Environmental Systems (4)
- Computational Biology (1)
- Computational Engineering (3)
- Computer Science (14)
- Electricity and Smart Grid (1)
- Energy Sciences (1)
- Functional Materials for Energy (2)
- Fusion and Fission (4)
- Fusion Energy (2)
- Isotopes (19)
- Materials (84)
- Materials Characterization (2)
- Materials for Computing (14)
- Materials Under Extremes (1)
- Mathematics (1)
- National Security (24)
- Neutron Science (27)
- Nuclear Science and Technology (7)
- Quantum information Science (5)
- Supercomputing (73)
News Type
News Topics
- (-) Biomedical (37)
- (-) Clean Water (20)
- (-) Computer Science (113)
- (-) Cybersecurity (27)
- (-) Environment (125)
- (-) Isotopes (34)
- (-) Materials (111)
- (-) Sustainable Energy (93)
- 3-D Printing/Advanced Manufacturing (93)
- Advanced Reactors (27)
- Artificial Intelligence (48)
- Big Data (33)
- Bioenergy (57)
- Biology (61)
- Biotechnology (14)
- Buildings (44)
- Chemical Sciences (49)
- Climate Change (62)
- Composites (21)
- Coronavirus (34)
- Critical Materials (24)
- Decarbonization (45)
- Education (3)
- Element Discovery (1)
- Energy Storage (89)
- Exascale Computing (16)
- Fossil Energy (1)
- Frontier (20)
- Fusion (30)
- Grid (44)
- High-Performance Computing (51)
- Hydropower (8)
- Irradiation (3)
- ITER (6)
- Machine Learning (29)
- Materials Science (99)
- Mathematics (5)
- Mercury (9)
- Microscopy (38)
- Molten Salt (7)
- Nanotechnology (46)
- National Security (38)
- Net Zero (7)
- Neutron Science (91)
- Nuclear Energy (64)
- Partnerships (28)
- Physics (44)
- Polymers (27)
- Quantum Computing (15)
- Quantum Science (40)
- Renewable Energy (1)
- Security (18)
- Simulation (22)
- Software (1)
- Space Exploration (13)
- Statistics (3)
- Summit (29)
- Transformational Challenge Reactor (4)
- Transportation (77)
Media Contacts
Pablo Moriano, a research scientist in the Computer Science and Mathematics Division at ORNL, was selected as a member of the 2024 Class of MGB-SIAM Early Career Fellows.
ORNL climate modeling expertise contributed to a project that assessed global emissions of ammonia from croplands now and in a warmer future, while also identifying solutions tuned to local growing conditions.
Scientists at the Department of Energy’s Oak Ridge National Laboratory are using a new modeling framework in conjunction with data collected from marshes in the Mississippi Delta to improve predictions of climate-warming methane and nitrous oxide.
Rigoberto “Gobet” Advincula, a scientist at the Department of Energy’s Oak Ridge National Laboratory, has been appointed a Fellow of the Institute of Materials, Minerals and Mining.
Louise Stevenson uses her expertise as an environmental toxicologist to evaluate the effects of stressors such as chemicals and other contaminants on aquatic systems.
Corning uses neutron scattering to study the stability of different types of glass. Recently, researchers for the company have found that understanding the stability of the rings of atoms in glass materials can help predict the performance of glass products.
Rigoberto “Gobet” Advincula, a scientist at the Department of Energy’s Oak Ridge National Laboratory, has been named a 2023 Fellow of the National Academy of Inventors. Advincula has been recognized for his 14 patents and 21 published filings related to nanomaterials, smart coatings and films, solid-state device fabrication and chemical additives.
Ateios Systems licensed an ORNL technology for solvent-free battery component production using electron curing. Through Innovation Crossroads, Ateios continues to work with ORNL to enable readiness for production-quality battery components.
ORNL Environmental Sciences Division Director Eric Pierce presented the division’s 2023 Distinguished Achievement Awards at the organization’s December all-hands meeting.
A team from DOE’s Oak Ridge, Los Alamos and Sandia National Laboratories has developed a new solver algorithm that reduces the total run time of the Model for Prediction Across Scales-Ocean, or MPAS-Ocean, E3SM’s ocean circulation model, by 45%.