Poster (Invited) FZJ-2022-03623

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Virtual Experiments combined with Machine Learning to improve Data Evaluation of SANS measurements

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2022

JCNS WORKSHOP 2022 TRENDS AND PERSPECTIVES IN NEUTRON SCATTERING: EXPERIMENTS AND DATA ANALYSIS IN THE DIGITAL AGE, Evangelische Akademie TutzingEvangelische Akademie Tutzing, Germany, 11 Oct 2022 - 14 Oct 20222022-10-112022-10-14

Abstract: In this work we present our research line that has begun as part of the “Global Neutron Scientist” (GneuS) call N.º 1 this year. We present our strategy to combine virtual experiments with Machine Learning (ML) techniques to improve the data evaluation procedure in Small Angle Neutron Scattering (SANS) experiments. In particular, we describe the virtual experiments we are planning to do at a SANS instrument at MLZ with the VITESS software [1] to create a training database for ML algorithms, and we discuss aproposed first step exploratory analysis to the generated data using Multivariate Statistical methodologies. This analysis will give insight to the adequate ML algorithms that we will explore. [1] C. Zendler, K. Lieutenant, D. Nekrassov, M. Fromme, Vitess 3 – Virtual Instrumentation Tool for the European Spallation, J. Phys. Conf. Ser. 528 (2014) 012036.


Contributing Institute(s):
  1. Streumethoden (JCNS-2)
  2. Streumethoden (PGI-4)
  3. JARA-FIT (JARA-FIT)
Research Program(s):
  1. 632 - Materials – Quantum, Complex and Functional Materials (POF4-632) (POF4-632)
  2. 6G4 - Jülich Centre for Neutron Research (JCNS) (FZJ) (POF4-6G4) (POF4-6G4)

Appears in the scientific report 2022
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Institute Collections > JCNS > JCNS-2
JARA > JARA > JARA-JARA\-FIT
Document types > Presentations > Poster
Institute Collections > PGI > PGI-4
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 Record created 2022-10-07, last modified 2024-05-29



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