Applications of machine learning to precision neutrino physics in the DUNE experiment

Find Similar History 12 Claim Ownership Request Data Change Add Favourite

Title
Applications of machine learning to precision neutrino physics in the DUNE experiment

CoPED ID
26455406-758b-4bc7-9784-ed4fa22a1468

Status
Closed


Value
No funds listed.

Start Date
Sept. 30, 2018

End Date
Sept. 30, 2022

Description

More Like This


Machine learning algorithms have become essential statistical tools in experimental particle physics, providing the basis for the reduction and classification of big data sets, and the precision measurement of physical processes. In recent years, a collective effort has begun to harness these techniques to meet the challenges of the next generation of long-baseline neutrino oscillation experiments. One major neutrino project currently in its technical design phase is the Deep Underground Neutrino Experiment (DUNE), which will perform precision measurements of neutrino oscillations using a Megawatt neutrino beam produced at the Fermi Laboratory, USA, and a 40 kiloton Liquid Argon Time Projection Chamber (LAr-TPC), constructed 1300 km away at the Homestake mine. The superb imaging capabilities of
LAr-TPC detectors will enable DUNE to capture complex neutrino event topologies with high levels of spatial and calorimetric precision. However, new techniques of pattern recognition will be required to fully exploit the detailed information available in each LAr-TPC image.
In this PhD project, the student will apply techniques of machine learning to the analysis of LAr-TPC images, with the goal of precisely reconstructing the final-state particle tracks and electromagnetic showers in each image and classifying the overall neutrino event topology.
The techniques will be demonstrated on cosmic-ray and test-beam data from the DUNE prototype detectors, and will then be applied to the reconstruction of simulated neutrino data from DUNE to support both technical design and oscillation physics studies.

Lancaster University LEAD_ORG
BP (United Kingdom) STUDENT_PP_ORG

Andrew Blake SUPER_PER

Subjects by relevance
  1. Neutrinos
  2. Machine learning
  3. Particle physics
  4. Measurement
  5. Neutrino oscillation
  6. Dunes
  7. Simulation
  8. Physics

Extracted key phrases
  1. Baseline neutrino oscillation experiment
  2. Complex neutrino event topology
  3. Overall neutrino event topology
  4. Simulated neutrino datum
  5. Major neutrino project
  6. Neutrino physic
  7. Megawatt neutrino beam
  8. Machine learning algorithm
  9. Precision measurement
  10. Application
  11. Dune experiment
  12. Calorimetric precision
  13. Dune prototype detector
  14. Experimental particle physics
  15. Tpc image

Related Pages

UKRI project entry

UK Project Locations