Filter News
Area of Research
- Advanced Manufacturing (1)
- Biology and Environment (55)
- Biology and Soft Matter (1)
- Clean Energy (90)
- Climate and Environmental Systems (2)
- Computational Biology (1)
- Computational Engineering (2)
- Computer Science (6)
- Electricity and Smart Grid (2)
- Fusion and Fission (17)
- Fusion Energy (11)
- Isotope Development and Production (1)
- Isotopes (1)
- Materials (35)
- Materials for Computing (7)
- Mathematics (1)
- National Security (19)
- Neutron Science (11)
- Nuclear Science and Technology (8)
- Quantum information Science (1)
- Sensors and Controls (1)
- Supercomputing (37)
- Transportation Systems (2)
News Type
News Topics
- (-) Clean Water (27)
- (-) Climate Change (67)
- (-) Coronavirus (28)
- (-) Fusion (37)
- (-) Grid (43)
- (-) Irradiation (2)
- (-) Machine Learning (31)
- (-) Physics (30)
- (-) Transportation (62)
- 3-D Printing/Advanced Manufacturing (65)
- Advanced Reactors (21)
- Artificial Intelligence (56)
- Big Data (36)
- Bioenergy (63)
- Biology (73)
- Biomedical (39)
- Biotechnology (13)
- Buildings (35)
- Chemical Sciences (28)
- Composites (14)
- Computer Science (119)
- Critical Materials (13)
- Cybersecurity (17)
- Decarbonization (51)
- Education (1)
- Emergency (2)
- Energy Storage (59)
- Environment (143)
- Exascale Computing (25)
- Fossil Energy (4)
- Frontier (24)
- High-Performance Computing (53)
- Hydropower (11)
- Isotopes (30)
- ITER (5)
- Materials (74)
- Materials Science (74)
- Mathematics (6)
- Mercury (10)
- Microelectronics (2)
- Microscopy (31)
- Molten Salt (6)
- Nanotechnology (28)
- National Security (36)
- Net Zero (9)
- Neutron Science (73)
- Nuclear Energy (70)
- Partnerships (15)
- Polymers (15)
- Quantum Computing (21)
- Quantum Science (37)
- Renewable Energy (1)
- Security (11)
- Simulation (35)
- Software (1)
- Space Exploration (22)
- Statistics (1)
- Summit (36)
- Sustainable Energy (86)
- Transformational Challenge Reactor (3)
Media Contacts
New computational framework speeds discovery of fungal metabolites, key to plant health and used in drug therapies and for other uses.
In summer 2023, ORNL's Prasanna Balaprakash was invited to speak at a roundtable discussion focused on the importance of academic artificial intelligence research and development hosted by the White House Office of Science and Technology Policy and the U.S. National Science Foundation.
Electric vehicles can drive longer distances if their lithium-ion batteries deliver more energy in a lighter package. A prime weight-loss candidate is the current collector, a component that often adds 10% to the weight of a battery cell without contributing energy.
The 2023 top science achievements from HFIR and SNS feature a broad range of materials research published in high impact journals such as Nature and Advanced Materials.
Oak Ridge National Laboratory researchers have identified the most energy-efficient 2024 model year vehicles available in the United States, including electric and hybrids, in the latest edition of the Department of Energy’s Fuel Economy Guide.
ORNL will lead a new DOE-funded project designed to accelerate bringing fusion energy to the grid. The Accelerate award focuses on developing a fusion power plant design concept that supports remote maintenance and repair methods for the plasma-facing components in fusion power plants.
Two fusion energy leaders have joined ORNL in the Fusion and Fission Energy and Science Directorate, or FFESD.
A 19-member team of scientists from across the national laboratory complex won the Association for Computing Machinery’s 2023 Gordon Bell Special Prize for Climate Modeling for developing a model that uses the world’s first exascale supercomputer to simulate decades’ worth of cloud formations.
ORNL is leading three research collaborations with fusion industry partners through the Innovation Network for FUSion Energy, or INFUSE, program that will focus on resolving technical challenges and developing innovative solutions to make practical fusion energy a reality.
Lee's paper at the August conference in Bellevue, Washington, combined weather and power outage data for three states – Texas, Michigan and Hawaii – and used a machine learning model to predict how extreme weather such as thunderstorms, floods and tornadoes would affect local power grids and to estimate the risk for outages. The paper relied on data from the National Weather Service and the U.S. Department of Energy’s Environment for Analysis of Geo-Located Energy Information, or EAGLE-I, database.