Mix Proportion and Compressive Strength Prediction Models for High Performance Concrete based on Computational Intelligence
This study proposed two new models based on computational intelligence approach to aid mix proportioning of high performance concrete. The models developed in this study are: (1) a data-driven fuzzy adaptive resonance theory (ART)-based model for predicting high performance concrete mix design, a...
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Main Author: | |
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Format: | Thesis |
Language: | English |
Published: |
Universiti Malaysia Sarawak, (UNIMAS)
2018
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Subjects: | |
Online Access: | http://ir.unimas.my/id/eprint/24829/1/Chiew%20Fei%20Ha%20ft.pdf http://ir.unimas.my/id/eprint/24829/ |
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Institution: | Universiti Malaysia Sarawak |
Language: | English |
Summary: | This study proposed two new models based on computational intelligence approach to aid
mix proportioning of high performance concrete. The models developed in this study are:
(1) a data-driven fuzzy adaptive resonance theory (ART)-based model for predicting high
performance concrete mix design, and (2) a data-driven monotonicity preserving single
input rule modules (SIRMs)-connected fuzzy inference system (FIS) with harmony search
(HS) model for prediction of high performance concrete compressive strength. Fuzzy
ART is adopted because of its online learning and suitability for large and incremental
datasets. The fuzzy adaptive resonance theory (ART)-based model receives a set of
desired range of concrete performances, searches for a set of mix proportions which
satisfies the desired range of concrete performances, classifies the mix proportions of
selected data into clusters, measures the similarity between performances of deduced
clusters with desired performances, and deduces a mix proportion. The model was used to
estimate mix proportions of five batches of concrete based on the performance criteria of
7
th and 28th day compressive strengths. The generated mix proportions were used in an
experimental work, and 4 out of 5 mix proportions achieved experimental 7th and 28th day
compressive strengths that satisfy the desired performances, signifying the ability of the
fuzzy ART-based model in estimating the mix proportion of HPC. The ability of the
model to estimate mix proportions with different constituents is also demonstrated. The
proposed high performance concrete mix proportion prediction model is a novel datadriven fuzzy ART-based model with an application in civil engineering. On the other hand,
the monotonicity preserving HS-based SIRMs-connected FIS model is adopted because it
considers the monotonic relationship between the input (i.e., water-binder ratio) and output
v
of the model (i.e., compressive strength). The proposed model is evaluated using
experimental data. An evaluation was carried out to study the suitability of monotonicity
preserving property of the HS-based SIRMs-connected FIS model, by comparing its results
to a HS-based SIRMs-connected FIS model without monotonicity preserving property.
Results showed that the predictions from the model with monotonicity preserving property
for testing dataset are able to give lower root-mean-square error (RMSE) and mean
absolute percentage error (MAPE) values. Results from the model were further compared
with results from neural networks fitting tool in matrix laboratory (MATLAB). Although
neural networks fitting tool gave better predictions for training data set, neural networks
does not show any meaningful relationship between water-binder ratio with predicted
compressive strength. The monotonicity preserving HS-based SIRMs-connected FIS
model is found to give better predictions for testing dataset by having a lower RMSE value
compared to neural networks fitting tool. Incorporating monotonicity preserving property
into the compressive strength prediction model reflects the nature of relationship between
water-binder ratio with compressive strength, and is able to correct noisy data during
evaluation. Both models in this study serve the purpose as material models that can
provide more economical and faster way in obtaining a satisfactory high performance
concrete mixture with desired properties. The limitations of both models are that both
models are not able to consider experimental data with missing values. Therefore, future
works recommended is to extend the use of both models to consider experimental data with
missing values. |
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