Computational tools for preliminary material design of metals and polymer-ceramic nano composites

In this dissertation, algorithms for creating estimated potentials for metals and modeling of nano composites are developed. The efficacy of the algorithms for estimated potentials were examined. The algorithm was found to allow molecular dynamic and Monte Carlo modeling to be included in the potent...

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Main Author: Kraus, Zachary
Other Authors: Jacob, Karl
Format: Others
Language:en_US
Published: Georgia Institute of Technology 2014
Subjects:
Online Access:http://hdl.handle.net/1853/51795
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spelling ndltd-GATECH-oai-smartech.gatech.edu-1853-517952016-06-09T03:33:14ZComputational tools for preliminary material design of metals and polymer-ceramic nano compositesKraus, ZacharyAlgorithmsPreliminary material designMetalsPolymer-ceramic nano compositesNanocomposites (Materials)AlgorithmsComputer simulationMolecular dynamicsIn this dissertation, algorithms for creating estimated potentials for metals and modeling of nano composites are developed. The efficacy of the algorithms for estimated potentials were examined. The algorithm was found to allow molecular dynamic and Monte Carlo modeling to be included in the potential building process. Additionally, the spline based equations caused issues with the elastic constants and Young’s modulus due to extra local minima. Two algorithms were developed for improved modeling of nano composites: one was a random number generation algorithm for initializing polymer, second was a bonding algorithm for controlling bonds between polymer and nano particle. Both algorithms were effective in their tasks. Additionally, the algorithms for improved nano composite modeling were used for preliminary material design of PMMA metal oxide nano composite systems. The results from the molecular dynamic simulations show the bonding between polymer matrix and nanoparticle has a large effect on the Young’s modulus and if this bonding could be controlled, the tensile properties of PMMA-metal oxide nano composites could be tailored to the applications’ requirements. The simulations also showed bonding had caused changes in the density of the material which than effected the energy on the polymer chain and the Young’s modulus. A model was than developed showing the relationship between density and the chain energy, and density and the Young’s modulus. This model can be used for a better understanding and further improvement of PMMA-metal oxide nano composites.Georgia Institute of TechnologyJacob, KarlMcDowell, David L.2014-05-22T15:21:09Z2014-05-22T15:21:09Z2014-052014-01-07May 20142014-05-22T15:21:09ZDissertationapplication/pdfhttp://hdl.handle.net/1853/51795en_US
collection NDLTD
language en_US
format Others
sources NDLTD
topic Algorithms
Preliminary material design
Metals
Polymer-ceramic nano composites
Nanocomposites (Materials)
Algorithms
Computer simulation
Molecular dynamics
spellingShingle Algorithms
Preliminary material design
Metals
Polymer-ceramic nano composites
Nanocomposites (Materials)
Algorithms
Computer simulation
Molecular dynamics
Kraus, Zachary
Computational tools for preliminary material design of metals and polymer-ceramic nano composites
description In this dissertation, algorithms for creating estimated potentials for metals and modeling of nano composites are developed. The efficacy of the algorithms for estimated potentials were examined. The algorithm was found to allow molecular dynamic and Monte Carlo modeling to be included in the potential building process. Additionally, the spline based equations caused issues with the elastic constants and Young’s modulus due to extra local minima. Two algorithms were developed for improved modeling of nano composites: one was a random number generation algorithm for initializing polymer, second was a bonding algorithm for controlling bonds between polymer and nano particle. Both algorithms were effective in their tasks. Additionally, the algorithms for improved nano composite modeling were used for preliminary material design of PMMA metal oxide nano composite systems. The results from the molecular dynamic simulations show the bonding between polymer matrix and nanoparticle has a large effect on the Young’s modulus and if this bonding could be controlled, the tensile properties of PMMA-metal oxide nano composites could be tailored to the applications’ requirements. The simulations also showed bonding had caused changes in the density of the material which than effected the energy on the polymer chain and the Young’s modulus. A model was than developed showing the relationship between density and the chain energy, and density and the Young’s modulus. This model can be used for a better understanding and further improvement of PMMA-metal oxide nano composites.
author2 Jacob, Karl
author_facet Jacob, Karl
Kraus, Zachary
author Kraus, Zachary
author_sort Kraus, Zachary
title Computational tools for preliminary material design of metals and polymer-ceramic nano composites
title_short Computational tools for preliminary material design of metals and polymer-ceramic nano composites
title_full Computational tools for preliminary material design of metals and polymer-ceramic nano composites
title_fullStr Computational tools for preliminary material design of metals and polymer-ceramic nano composites
title_full_unstemmed Computational tools for preliminary material design of metals and polymer-ceramic nano composites
title_sort computational tools for preliminary material design of metals and polymer-ceramic nano composites
publisher Georgia Institute of Technology
publishDate 2014
url http://hdl.handle.net/1853/51795
work_keys_str_mv AT krauszachary computationaltoolsforpreliminarymaterialdesignofmetalsandpolymerceramicnanocomposites
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