Accelerating longitudinal spinfluctuation theory for iron at high temperature using a machine learning method

In the development of materials, the understanding of their properties is crucial. For magnetic materials, magnetism is an apparent property that needs to be accounted for. There are multiple factors explaining the phenomenon of magnetism, one being the effect of vibrations of the atoms on longitudi...

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Main Author: Arale Brännvall, Marian
Format: Others
Language:English
Published: Linköpings universitet, Teoretisk Fysik 2020
Subjects:
Online Access:http://urn.kb.se/resolve?urn=urn:nbn:se:liu:diva-170314
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spelling ndltd-UPSALLA1-oai-DiVA.org-liu-1703142020-10-10T05:37:41ZAccelerating longitudinal spinfluctuation theory for iron at high temperature using a machine learning methodengArale Brännvall, MarianLinköpings universitet, Teoretisk Fysik2020Machine learninglongitudinal spin fluctuationskernel ridge regressionPhysical SciencesFysikIn the development of materials, the understanding of their properties is crucial. For magnetic materials, magnetism is an apparent property that needs to be accounted for. There are multiple factors explaining the phenomenon of magnetism, one being the effect of vibrations of the atoms on longitudinal spin fluctuations. This effect can be investigated by simulations, using density functional theory, and calculating energy landscapes. Through such simulations, the energy landscapes have been found to depend on the magnetic background and the positions of the atoms. However, when simulating a supercell of many atoms, to calculate energy landscapes for all atoms consumes many hours on the supercomputer. In this thesis, the possibility of using machine learning models to accelerate the approximation of energy landscapes is investigated. The material under investigation is body-centered cubic iron in the paramagnetic state at 1043 K. Machine learning enables statistical predictions to be made on new data based on patterns found in a previous set of data. Kernel ridge regression is used as the machine learning method. An important issue when training a machine learning model is the representation of the data in the so called descriptor (feature vector representation) or, more specific to this case, how the environment of an atom in a supercell is accounted for and represented properly. Four different descriptors are developed and compared to investigate which one yields the best result and why. Apart from comparing the descriptors, the results when using machine learning models are compared to when using other methods to approximate the energy landscapes. The machine learning models are also tested in a combined atomistic spin dynamics and ab initio molecular dynamics simulation (ASD-AIMD) where they were used to approximate energy landscapes and, from that, magnetic moment magnitudes at 1043 K. The results of these simulations are compared to the results from two other cases: one where the magnetic moment magnitudes are set to a constant value and one where they are set to their magnitudes at 0 K. From these investigations it is found that using machine learning methods to approximate the energy landscapes does, to a large degree, decrease the errors compared to the other approximation methods investigated. Some weaknesses of the respective descriptors were detected and if, in future work, these are accounted for, the errors have the potential of being lowered further. Student thesisinfo:eu-repo/semantics/bachelorThesistexthttp://urn.kb.se/resolve?urn=urn:nbn:se:liu:diva-170314application/pdfinfo:eu-repo/semantics/openAccess
collection NDLTD
language English
format Others
sources NDLTD
topic Machine learning
longitudinal spin fluctuations
kernel ridge regression
Physical Sciences
Fysik
spellingShingle Machine learning
longitudinal spin fluctuations
kernel ridge regression
Physical Sciences
Fysik
Arale Brännvall, Marian
Accelerating longitudinal spinfluctuation theory for iron at high temperature using a machine learning method
description In the development of materials, the understanding of their properties is crucial. For magnetic materials, magnetism is an apparent property that needs to be accounted for. There are multiple factors explaining the phenomenon of magnetism, one being the effect of vibrations of the atoms on longitudinal spin fluctuations. This effect can be investigated by simulations, using density functional theory, and calculating energy landscapes. Through such simulations, the energy landscapes have been found to depend on the magnetic background and the positions of the atoms. However, when simulating a supercell of many atoms, to calculate energy landscapes for all atoms consumes many hours on the supercomputer. In this thesis, the possibility of using machine learning models to accelerate the approximation of energy landscapes is investigated. The material under investigation is body-centered cubic iron in the paramagnetic state at 1043 K. Machine learning enables statistical predictions to be made on new data based on patterns found in a previous set of data. Kernel ridge regression is used as the machine learning method. An important issue when training a machine learning model is the representation of the data in the so called descriptor (feature vector representation) or, more specific to this case, how the environment of an atom in a supercell is accounted for and represented properly. Four different descriptors are developed and compared to investigate which one yields the best result and why. Apart from comparing the descriptors, the results when using machine learning models are compared to when using other methods to approximate the energy landscapes. The machine learning models are also tested in a combined atomistic spin dynamics and ab initio molecular dynamics simulation (ASD-AIMD) where they were used to approximate energy landscapes and, from that, magnetic moment magnitudes at 1043 K. The results of these simulations are compared to the results from two other cases: one where the magnetic moment magnitudes are set to a constant value and one where they are set to their magnitudes at 0 K. From these investigations it is found that using machine learning methods to approximate the energy landscapes does, to a large degree, decrease the errors compared to the other approximation methods investigated. Some weaknesses of the respective descriptors were detected and if, in future work, these are accounted for, the errors have the potential of being lowered further.
author Arale Brännvall, Marian
author_facet Arale Brännvall, Marian
author_sort Arale Brännvall, Marian
title Accelerating longitudinal spinfluctuation theory for iron at high temperature using a machine learning method
title_short Accelerating longitudinal spinfluctuation theory for iron at high temperature using a machine learning method
title_full Accelerating longitudinal spinfluctuation theory for iron at high temperature using a machine learning method
title_fullStr Accelerating longitudinal spinfluctuation theory for iron at high temperature using a machine learning method
title_full_unstemmed Accelerating longitudinal spinfluctuation theory for iron at high temperature using a machine learning method
title_sort accelerating longitudinal spinfluctuation theory for iron at high temperature using a machine learning method
publisher Linköpings universitet, Teoretisk Fysik
publishDate 2020
url http://urn.kb.se/resolve?urn=urn:nbn:se:liu:diva-170314
work_keys_str_mv AT aralebrannvallmarian acceleratinglongitudinalspinfluctuationtheoryforironathightemperatureusingamachinelearningmethod
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