Predictive modeling of temperature and grain growth for a thermally processed metal

Authors
Allahua, Michael J.
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Other Contributors
Maniatty, Antoinette M.
Picu, Catalin R.
Wen, John T.
Issue Date
2020-05
Keywords
Mechanical engineering
Degree
MS
Terms of Use
This electronic version is a licensed copy owned by Rensselaer Polytechnic Institute, Troy, NY. Copyright of original work retained by author.
Full Citation
Abstract
This thesis will discuss work done towards microstructure control during thermo-mechanical processing of the titanium alloy Ti-6Al-4V. There are three main areas of research reported: thermal simulations, image processing, and grain growth fitting. These areas were investigated with the goal of linking processing to microstructure, which, in turn, dictates the properties of the material. As the microstructure evolves due to thermo-mechanical processes so do the properties. Thermal simulations were conducted to model the temperature distribution across a sample during thermal processing. Image processing was then used to determine the average grain size from SEM images collected during the thermal processing. Thus, this work provides a link between the thermal conditions modeled in the simulation and the local grain structure. Lastly, the grain size evolution was fit to the grain growth equation to understand the behavior of the grain growth. After thermal simulations were conducted, one notable finding was that the thermocouple attached to the top of the sample piece did not need to be modeled as it did not significantly impact the local temperature field. The code used for image processing, developed for grain boundary detection in single phase copper by C. J. Zheng [26], was found to perform well for Ti-6Al-4V, but requires trial and error for the selection of the thresholding parameter. Lastly, using grain growth data from the literature, studies and a methodology to fit the grain growth equation were made that can applied to forthcoming experimental data to support the development of grain growth control algorithms.
Description
May 2020
School of Engineering
Department
Dept. of Mechanical, Aerospace, and Nuclear Engineering
Publisher
Rensselaer Polytechnic Institute, Troy, NY
Relationships
Rensselaer Theses and Dissertations Online Collection
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