Using Machine Learning for noise reduction in X-ray Photon Correlation Spectroscopy data to quantify time series dynamics
ORAL
Abstract
Computational methods of noise reduction in data allow for reliable extraction of useful signals from a limited amount of experimental data. This opens the door for optimal use of experimental resources and obtaining information from intrinsically limited, e.g. destructive or out-of-equilibrium, measurements. Here, I present the application of the convolutional deep learning models for the reduction of noise in intensity-intensity correlation functions from X-ray Photon Correlation Spectroscopy (XPCS) experiments. This approach creates a filter tailored to specific types of noise encountered in XPCS experiments and results in up to 20-fold reduction of required experimental data.
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Presenters
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Tatiana Konstantinova
Brookhaven National Laboratory
Authors
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Tatiana Konstantinova
Brookhaven National Laboratory
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Lutz Wiegart
Brookhaven National Laboratory
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Anthony DeGennaro
Brookhaven National Laboratory
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Andi Barbour
Brookhaven National Lab, Brookhaven National Laboratory, Brookhaven Natl Lab, National Synchrotron Light Source II, Brookhaven National Laboratory, NSLS-II, Brookhaven National Laboratory