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Researcher
- Andrzej Nycz
- Chris Masuo
- Luke Meyer
- Soydan Ozcan
- William Carter
- Xianhui Zhao
- Adam Siekmann
- Alex Roschli
- Alex Walters
- Bruce Hannan
- Erin Webb
- Evin Carter
- Halil Tekinalp
- Hong Wang
- Hyeonsup Lim
- Jeremy Malmstead
- Joshua Vaughan
- Kitty K Mccracken
- Loren L Funk
- Mengdawn Cheng
- Oluwafemi Oyedeji
- Paula Cable-Dunlap
- Peter Wang
- Polad Shikhaliev
- Sanjita Wasti
- Theodore Visscher
- Tyler Smith
- Vivek Sujan
- Vladislav N Sedov
- Yacouba Diawara

We have developed a novel extrusion-based 3D printing technique that can achieve a resolution of 0.51 mm layer thickness, and catalyst loading of 44% and 90.5% before and after drying, respectively.

ORNL has developed a large area thermal neutron detector based on 6LiF/ZnS(Ag) scintillator coupled with wavelength shifting fibers. The detector uses resistive charge divider-based position encoding.

The use of biomass fiber reinforcement for polymer composite applications, like those in buildings or automotive, has expanded rapidly due to the low cost, high stiffness, and inherent renewability of these materials. Biomass are commonly disposed of as waste.

No readily available public data exists for vehicle class and weight information that covers the entire U.S. highway network. The Travel Monitoring Analysis System, managed by the Federal Highway Administration covers only less than 1% of the US highway network.

We have developed an aerosol sampling technique to enable collection of trace materials such as actinides in the atmosphere.

Pairing hybrid neural network modeling techniques with artificial intelligence, or AI, controls has resulted in a unique hybrid system that creates a smart solution for traffic-signal timing.