Title:
Data-driven Process-Structure-Property Models for Additive Manufactured Ni-base Superalloys

dc.contributor.advisor Neu, Richard W.
dc.contributor.author GorganNejad, Sanam
dc.contributor.committeeMember McDowell, David
dc.contributor.committeeMember Antoniou, Antonia
dc.contributor.committeeMember Kacher, Joshua
dc.contributor.committeeMember Paynabar, Kamran
dc.contributor.department Mechanical Engineering
dc.date.accessioned 2021-01-11T17:13:52Z
dc.date.available 2021-01-11T17:13:52Z
dc.date.created 2020-12
dc.date.issued 2020-12-09
dc.date.submitted December 2020
dc.date.updated 2021-01-11T17:13:52Z
dc.description.abstract The complexity of the selective laser melting (SLM) process, which has shown success for shaping advanced structural alloys, has concentrated most of the research efforts to develop process-structure-property (PSP) models for fostering our understanding of the process that can ultimately serve as predictive and optimization tools. The data-driven approach has shown to effectively alleviate the burden of cost- and time-intensive computational and experimental approaches. The aim of the present research is two-fold. Firstly, it attempts to introduce a systematic and robust workflow for characterization and quantification of the key structural attributes of the SLM'ed manufactured materials such as porosity and surface roughness. The merit of implementing the introduced workflow is to enable data fusion and to integrate structural data and knowledge from various length-scales and sources for the creation of a coherent database. Secondly, this work seeks to investigate the implementation of various statistical and Machine Learning (ML) approaches for the establishment of the PSP models. Both parametric and non-parametric regression techniques are employed to construct models to illustrate the suitability of the different ML methods. From well-established regression techniques, non-parametric support vector regression (SVR), and Gaussian-based modeling approaches featuring uncertainty quantification to novel multiple tensor-on-tensor regression method with the distinct capability of data fusion of high-dimensional data have been examined.
dc.description.degree Ph.D.
dc.format.mimetype application/pdf
dc.identifier.uri http://hdl.handle.net/1853/64190
dc.language.iso en_US
dc.publisher Georgia Institute of Technology
dc.subject Superalloys, data-driven models, PSP linkages, machine learning, 2-point spatial correlation, high-cycle fatigue, surface roughness, gaussian process regression, support vector regression, Multiple tensor-on-tensor regression
dc.title Data-driven Process-Structure-Property Models for Additive Manufactured Ni-base Superalloys
dc.type Text
dc.type.genre Dissertation
dspace.entity.type Publication
local.contributor.advisor Neu, Richard W.
local.contributor.corporatename George W. Woodruff School of Mechanical Engineering
local.contributor.corporatename College of Engineering
relation.isAdvisorOfPublication 06a1818c-da22-4133-bde7-ad5adc26dab7
relation.isOrgUnitOfPublication c01ff908-c25f-439b-bf10-a074ed886bb7
relation.isOrgUnitOfPublication 7c022d60-21d5-497c-b552-95e489a06569
thesis.degree.level Doctoral
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