Implementing Machine Learning Algorithms for Identifying Microstructure of Materials

<p>Alloys of different materials are extensively used in many fields of our day-to-day life. Several studies are performed at a microscopic level to analyze the properties of such alloys. Manually evaluating these microscopic structures (microstructures) can be time-consuming. This thesis atte...

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Main Author: Shah, Niyati S.
Language:EN
Published: California State University, Long Beach 2018
Subjects:
Online Access:http://pqdtopen.proquest.com/#viewpdf?dispub=10837912
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spelling ndltd-PROQUEST-oai-pqdtoai.proquest.com-108379122018-09-14T04:17:14Z Implementing Machine Learning Algorithms for Identifying Microstructure of Materials Shah, Niyati S. Computer science <p>Alloys of different materials are extensively used in many fields of our day-to-day life. Several studies are performed at a microscopic level to analyze the properties of such alloys. Manually evaluating these microscopic structures (microstructures) can be time-consuming. This thesis attempts to build different models that can automate the identification of an alloy from its microstructure. All the models were developed, with various supervised and unsupervised machine learning algorithms, and results of all the models were compared. The best accuracy of 92.01 ? 0.54% and 94.31 ? 0.59% was achieved, for identifying the type of an alloy from its microstructure (Task 1) and classifying the microstructure as belonging to either Ferrous, Non-Ferrous or Others class (Task 2), respectively. The model, which gave the best accuracy, was then used to build an Image Search Engine (ISE) that can predict the type of an alloy from its microstructure, search the microstructures by different keywords and search for visually similar microstructures. California State University, Long Beach 2018-09-13 00:00:00.0 thesis http://pqdtopen.proquest.com/#viewpdf?dispub=10837912 EN
collection NDLTD
language EN
sources NDLTD
topic Computer science
spellingShingle Computer science
Shah, Niyati S.
Implementing Machine Learning Algorithms for Identifying Microstructure of Materials
description <p>Alloys of different materials are extensively used in many fields of our day-to-day life. Several studies are performed at a microscopic level to analyze the properties of such alloys. Manually evaluating these microscopic structures (microstructures) can be time-consuming. This thesis attempts to build different models that can automate the identification of an alloy from its microstructure. All the models were developed, with various supervised and unsupervised machine learning algorithms, and results of all the models were compared. The best accuracy of 92.01 ? 0.54% and 94.31 ? 0.59% was achieved, for identifying the type of an alloy from its microstructure (Task 1) and classifying the microstructure as belonging to either Ferrous, Non-Ferrous or Others class (Task 2), respectively. The model, which gave the best accuracy, was then used to build an Image Search Engine (ISE) that can predict the type of an alloy from its microstructure, search the microstructures by different keywords and search for visually similar microstructures.
author Shah, Niyati S.
author_facet Shah, Niyati S.
author_sort Shah, Niyati S.
title Implementing Machine Learning Algorithms for Identifying Microstructure of Materials
title_short Implementing Machine Learning Algorithms for Identifying Microstructure of Materials
title_full Implementing Machine Learning Algorithms for Identifying Microstructure of Materials
title_fullStr Implementing Machine Learning Algorithms for Identifying Microstructure of Materials
title_full_unstemmed Implementing Machine Learning Algorithms for Identifying Microstructure of Materials
title_sort implementing machine learning algorithms for identifying microstructure of materials
publisher California State University, Long Beach
publishDate 2018
url http://pqdtopen.proquest.com/#viewpdf?dispub=10837912
work_keys_str_mv AT shahniyatis implementingmachinelearningalgorithmsforidentifyingmicrostructureofmaterials
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