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NIST only participates in the February and August reviews. The modern transmission electron microscope (TEM) is capable of atomic-resolution structural and chemical imaging. However, such data
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powders and the final parts, a lack of understanding of the process physics and methods to control them, poor surface quality and part accuracy, and limitations in fabrication speed or throughput. We
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301.975.8087 Description One of the benefits of nanoimprint lithography (NIL) is that it can directly pattern functional materials, not just sacrificially resist formulations that are used to transfer
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variables. Computer-controlled equipment is available for alternating-current magnetic-susceptibility measurements as a function of frequency, temperature, and magnetic field. An automated vibrating sample
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of phase distributions, grain sizes, texture, and residual stresses in both as-built and heat-treated materials. Model results will both be informed by and feed into parallel work in macroscale
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semiconductor nanoparticles, dopant based quantum devices in Si, and complex nanosystems made from these structures. Generation, control, guiding, and manipulation of photons on the nanoscale with these systems
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NIST only participates in the February and August reviews. The fire modeling community is actively working to develop the tools needed to quantitatively predict material and product flammability
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remediation, and infrastructure corrosion. Emergent behavior in these communities is mediated by subtle chemical and spatial cues; however, little knowledge exists to model or control that behavior due
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transmission electron microscopy (TEM) and in situ atomic force microscopy (AFM) studies of how these slip structures evolve on pure Al single crystals and follow-up work on Cu is underway. Such studies provide
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landscapes for promoter activity based on steady state population distributions and measures of fluctuations in individual cells. We have previously applied Langevin/Fokker Planck equations to predict rates