Experimental Investigations and Machine Learning-Based Predictive Modeling of the Chemo-mechanical Characteristics of Ultra-High Performance Binders

abstract: Ultra High Performance (UHP) cementitious binders are a class of cement-based materials with high strength and ductility, designed for use in precast bridge connections, bridge superstructures, high load-bearing structural members like columns, and in structural repair and strengthening. T...

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Other Authors: Ford, Emily Lucile (Author)
Format: Doctoral Thesis
Language:English
Published: 2020
Subjects:
Online Access:http://hdl.handle.net/2286/R.I.62997
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spelling ndltd-asu.edu-item-629972021-01-15T05:01:18Z Experimental Investigations and Machine Learning-Based Predictive Modeling of the Chemo-mechanical Characteristics of Ultra-High Performance Binders abstract: Ultra High Performance (UHP) cementitious binders are a class of cement-based materials with high strength and ductility, designed for use in precast bridge connections, bridge superstructures, high load-bearing structural members like columns, and in structural repair and strengthening. This dissertation aims to elucidate the chemo-mechanical relationships in complex UHP binders to facilitate better microstructure-based design of these materials and develop machine learning (ML) models to predict their scale-relevant properties from microstructural information.To establish the connection between micromechanical properties and constitutive materials, nanoindentation and scanning electron microscopy experiments are performed on several cementitious pastes. Following Bayesian statistical clustering, mixed reaction products with scattered nanomechanical properties are observed, attributable to the low degree of reaction of the constituent particles, enhanced particle packing, and very low water-to-binder ratio of UHP binders. Relating the phase chemistry to the micromechanical properties, the chemical intensity ratios of Ca/Si and Al/Si are found to be important parameters influencing the incorporation of Al into the C-S-H gel. ML algorithms for classification of cementitious phases are found to require only the intensities of Ca, Si, and Al as inputs to generate accurate predictions for more homogeneous cement pastes. When applied to more complex UHP systems, the overlapping chemical intensities in the three dominant phases – Ultra High Stiffness (UHS), unreacted cementitious replacements, and clinker – led to ML models misidentifying these three phases. Similarly, a reduced amount of data available on the hard and stiff UHS phases prevents accurate ML regression predictions of the microstructural phase stiffness using only chemical information. The use of generic virtual two-phase microstructures coupled with finite element analysis is also adopted to train MLs to predict composite mechanical properties. This approach applied to three different representations of composite materials produces accurate predictions, thus providing an avenue for image-based microstructural characterization of multi-phase composites such UHP binders. This thesis provides insights into the microstructure of the complex, heterogeneous UHP binders and the utilization of big-data methods such as ML to predict their properties. These results are expected to provide means for rational, first-principles design of UHP mixtures. Dissertation/Thesis Ford, Emily Lucile (Author) Neithalath, Narayanan (Advisor) Rajan, Subramaniam (Committee member) Mobasher, Barzin (Committee member) Chawla, Nikhilesh (Committee member) Hoover, Christian G. (Committee member) Maneparambil, Kailas (Committee member) Arizona State University (Publisher) Civil engineering Computer science Cement Paste Machine Learning Micromechanical Nanoindentation Qualitative Chemical Intensity Ultra-High Performance Binder eng 254 pages Doctoral Dissertation Engineering 2020 Doctoral Dissertation http://hdl.handle.net/2286/R.I.62997 http://rightsstatements.org/vocab/InC/1.0/ 2020
collection NDLTD
language English
format Doctoral Thesis
sources NDLTD
topic Civil engineering
Computer science
Cement Paste
Machine Learning
Micromechanical
Nanoindentation
Qualitative Chemical Intensity
Ultra-High Performance Binder
spellingShingle Civil engineering
Computer science
Cement Paste
Machine Learning
Micromechanical
Nanoindentation
Qualitative Chemical Intensity
Ultra-High Performance Binder
Experimental Investigations and Machine Learning-Based Predictive Modeling of the Chemo-mechanical Characteristics of Ultra-High Performance Binders
description abstract: Ultra High Performance (UHP) cementitious binders are a class of cement-based materials with high strength and ductility, designed for use in precast bridge connections, bridge superstructures, high load-bearing structural members like columns, and in structural repair and strengthening. This dissertation aims to elucidate the chemo-mechanical relationships in complex UHP binders to facilitate better microstructure-based design of these materials and develop machine learning (ML) models to predict their scale-relevant properties from microstructural information.To establish the connection between micromechanical properties and constitutive materials, nanoindentation and scanning electron microscopy experiments are performed on several cementitious pastes. Following Bayesian statistical clustering, mixed reaction products with scattered nanomechanical properties are observed, attributable to the low degree of reaction of the constituent particles, enhanced particle packing, and very low water-to-binder ratio of UHP binders. Relating the phase chemistry to the micromechanical properties, the chemical intensity ratios of Ca/Si and Al/Si are found to be important parameters influencing the incorporation of Al into the C-S-H gel. ML algorithms for classification of cementitious phases are found to require only the intensities of Ca, Si, and Al as inputs to generate accurate predictions for more homogeneous cement pastes. When applied to more complex UHP systems, the overlapping chemical intensities in the three dominant phases – Ultra High Stiffness (UHS), unreacted cementitious replacements, and clinker – led to ML models misidentifying these three phases. Similarly, a reduced amount of data available on the hard and stiff UHS phases prevents accurate ML regression predictions of the microstructural phase stiffness using only chemical information. The use of generic virtual two-phase microstructures coupled with finite element analysis is also adopted to train MLs to predict composite mechanical properties. This approach applied to three different representations of composite materials produces accurate predictions, thus providing an avenue for image-based microstructural characterization of multi-phase composites such UHP binders. This thesis provides insights into the microstructure of the complex, heterogeneous UHP binders and the utilization of big-data methods such as ML to predict their properties. These results are expected to provide means for rational, first-principles design of UHP mixtures. === Dissertation/Thesis === Doctoral Dissertation Engineering 2020
author2 Ford, Emily Lucile (Author)
author_facet Ford, Emily Lucile (Author)
title Experimental Investigations and Machine Learning-Based Predictive Modeling of the Chemo-mechanical Characteristics of Ultra-High Performance Binders
title_short Experimental Investigations and Machine Learning-Based Predictive Modeling of the Chemo-mechanical Characteristics of Ultra-High Performance Binders
title_full Experimental Investigations and Machine Learning-Based Predictive Modeling of the Chemo-mechanical Characteristics of Ultra-High Performance Binders
title_fullStr Experimental Investigations and Machine Learning-Based Predictive Modeling of the Chemo-mechanical Characteristics of Ultra-High Performance Binders
title_full_unstemmed Experimental Investigations and Machine Learning-Based Predictive Modeling of the Chemo-mechanical Characteristics of Ultra-High Performance Binders
title_sort experimental investigations and machine learning-based predictive modeling of the chemo-mechanical characteristics of ultra-high performance binders
publishDate 2020
url http://hdl.handle.net/2286/R.I.62997
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