Accelerating neutron scattering data collection and experiments using AI deep super-resolution learning

MC Chang, Y Wei, WR Chen, C Do - arXiv preprint arXiv:1904.08450, 2019 - arxiv.org
arXiv preprint arXiv:1904.08450, 2019arxiv.org
We present a novel methodology of augmenting the scattering data measured by small
angle neutron scattering via an emerging deep convolutional neural network (CNN) that is
widely used in artificial intelligence (AI). Data collection time is reduced by increasing the
size of binning of the detector pixels at the sacrifice of resolution. High-resolution scattering
data is then reconstructed by using AI deep super-resolution learning method. This
technique can not only improve the productivity of neutron scattering instruments by …
We present a novel methodology of augmenting the scattering data measured by small angle neutron scattering via an emerging deep convolutional neural network (CNN) that is widely used in artificial intelligence (AI). Data collection time is reduced by increasing the size of binning of the detector pixels at the sacrifice of resolution. High-resolution scattering data is then reconstructed by using AI deep super-resolution learning method. This technique can not only improve the productivity of neutron scattering instruments by speeding up the experimental workflow but also enable capturing kinetic changes and transient phenomenon of materials that are currently inaccessible by existing neutron scattering techniques.
arxiv.org
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