Detector pixel calibration of time-of-flight neutron diffractometers accelerated by machine learning

Research output: Other contributionTechnical Report

Abstract

Modern time-of-flight neutron diffractometers at spallation neutron source are equipped with two dimensional detectors with fine pixelations. The flight path of neutrons from the moderator to the sample and to the detector needs to be precisely calibrated at detector pixel level using standard powders so the diffraction data from all the detector pixels can be correctly time-focused to produce high resolution diffraction peaks. The number of pixels can reach to millions which makes a single-pixel calibration process time-consuming, or even impossible, with conventional fitting routine. Here we presented a machine learning aided calibration process via a “training and predict” process by training machine learning models with the relations between the individual pixel time-of-flight diffraction pattern and fitted diffraction constant. The training models take a portion of the available pixels to predict the diffraction constants precisely and rapidly for massive pixel diffraction patterns.
Original languageEnglish
Place of PublicationUnited States
DOIs
StatePublished - 2025

Fingerprint

Dive into the research topics of 'Detector pixel calibration of time-of-flight neutron diffractometers accelerated by machine learning'. Together they form a unique fingerprint.

Cite this