Login / Signup

Time filtering of event based neutron scattering data: A pathway to study the dynamic structural responses of materials.

Chris M FancherChristina M HoffmannV SedovAndre ParizziW ZhouA J SchultzXiaoping WangDaniel M Long
Published in: The Review of scientific instruments (2018)
Time-resolved diffraction has become a vital tool for probing dynamic responses to an applied stimulus. Such experiments traditionally use hardware solutions to histogram measured data into their respective bin. We will show that a major advantage of event-based data acquisition, which time-stamps measured diffraction data with 100 ns accuracy, is much preferred over hardware histogramming of the data by enabling postprocessing for advanced custom binning using a software solution. This approach is made even more powerful by coupling measured diffraction data with metadata about the applied stimuli and material response. In this work, we present a time-filter approach that leverages the power of event-based diffraction collection to reduce stroboscopic data measured over many hours into equally weighted segments that represent subsets of the response to a single cycle of the applied stimulus. We demonstrate this approach by observing ferroelectric/ferroelastic domain wall motion during electric field cycling of BaTiO3. The developed approach can readily be expanded to investigate other dynamic phenomena using complex sample environments.
Keyphrases
  • electronic health record
  • big data
  • data analysis
  • magnetic resonance
  • magnetic resonance imaging
  • machine learning
  • zika virus
  • artificial intelligence
  • deep learning
  • high resolution
  • dengue virus
  • contrast enhanced