03910nam 22007095 450 991076029490332120251009094728.03-031-43583-410.1007/978-3-031-43583-6(MiAaPQ)EBC30876556(Au-PeEL)EBL30876556(DE-He213)978-3-031-43583-6(CKB)28804789100041(EXLCZ)992880478910004120231108d2023 u| 0engurcnu||||||||txtrdacontentcrdamediacrrdacarrierDomain Generalization with Machine Learning in the NOvA Experiment /by Andrew T.C. Sutton1st ed. 2023.Cham :Springer Nature Switzerland :Imprint: Springer,2023.1 online resource (174 pages)Springer Theses, Recognizing Outstanding Ph.D. Research,2190-5061Print version: Sutton, Andrew T. C. Domain Generalization with Machine Learning in the NOvA Experiment Cham : Springer International Publishing AG,c2023 9783031435829 Chapter 1: Neutrinos: A Desperate Remedy -- Chapter 2. A Review of Neutrino Physics -- Chapter 3. The NOvA Experiment -- Chapter 4. Event Reconstruction -- Chapter 5. The 3-Flavor Analysis -- Chapter 6. A Long Short-Term Memory Neural Network -- Chapter 7. Domain Generalization by Adversarial Training -- Chapter 8. Conclusion.This thesis presents significant advances in the use of neural networks to study the properties of neutrinos. Machine learning tools like neural networks (NN) can be used to identify the particle types or determine their energies in detectors such as those used in the NOvA neutrino experiment, which studies changes in a beam of neutrinos as it propagates approximately 800 km through the earth. NOvA relies heavily on simulations of the physics processes and the detector response; these simulations work well, but do not match the real experiment perfectly. Thus, neural networks trained on simulated datasets must include systematic uncertainties that account for possible imperfections in the simulation. This thesis presents the first application in HEP of adversarial domain generalization to a regression neural network. Applying domain generalization to problems with large systematic variations will reduce the impact of uncertainties while avoiding the risk of falselyconstraining the phase space. Reducing the impact of systematic uncertainties makes NOvA analysis more robust, and improves the significance of experimental results.Springer Theses, Recognizing Outstanding Ph.D. Research,2190-5061Particles (Nuclear physics)Particle acceleratorsMeasurementMeasuring instrumentsMachine learningMathematical physicsComputer simulationParticle PhysicsAccelerator PhysicsMeasurement Science and InstrumentationMachine LearningComputational Physics and SimulationsParticles (Nuclear physics)Particle accelerators.Measurement.Measuring instruments.Machine learning.Mathematical physics.Computer simulation.Particle Physics.Accelerator Physics.Measurement Science and Instrumentation.Machine Learning.Computational Physics and Simulations.539.72Sutton Andrew T. C1437616MiAaPQMiAaPQMiAaPQBOOK9910760294903321Domain Generalization with Machine Learning in the NOvA Experiment3598280UNINA