TY - JOUR
T1 - Experimental and Statistical Evaluation of Mechanical Properties of Green Cement Concrete - Taguchi Integrated Supervised Learning Approach
AU - Maddodi, Balakrishna
AU - Radhika Bhandary, P.
AU - Sharma, Vivek
AU - Yadav, Jitendra Singh
AU - Mohapatra, Smaranika
AU - Rao, Asha Udaya
AU - Kumar, Prasanna M.
AU - Gurpur, Prakash Rao
AU - Chougule, Shivani
AU - Narasimha, Dhanaraj Bharathi
N1 - Publisher Copyright:
© 2022 by the authors.
PY - 2022
Y1 - 2022
N2 - Globally, rapid infrastructure development and environmental challenges associated with the higher carbon footprints of ordinary Portland cement (OPC) based concrete have increased the usage of green cement-based concrete (GCC) to reduce energy consumption and provide a sustainable option. Even though GCC is a superior alternative to OPC, only a few publications have addressed optimizing process parameters in GCC manufacturing to optimize mechanical properties. The Taguchi method is well-known as one of the most effective methods for optimizing predictors to get the desired level of response. Additionally, in modern era, data-driven supervised machine learning approaches have been used extensively to develop mathematical models to establish relationships between the variables. As a result, the Taguchi method was used in this study to obtain the best mix design targeting a compressive strength of greater than 40 MPa. Numerous design combinations have been tested, and a process for selecting the most effective combination has been established. The analysis aided in comprehending the individual contributions of the major components to the mechanism of strength gain. The observations confirmed the Taguchi method's ability to predict the design mix proportions of the GCC and the ability of machine learning to relate the variables mathematically.
AB - Globally, rapid infrastructure development and environmental challenges associated with the higher carbon footprints of ordinary Portland cement (OPC) based concrete have increased the usage of green cement-based concrete (GCC) to reduce energy consumption and provide a sustainable option. Even though GCC is a superior alternative to OPC, only a few publications have addressed optimizing process parameters in GCC manufacturing to optimize mechanical properties. The Taguchi method is well-known as one of the most effective methods for optimizing predictors to get the desired level of response. Additionally, in modern era, data-driven supervised machine learning approaches have been used extensively to develop mathematical models to establish relationships between the variables. As a result, the Taguchi method was used in this study to obtain the best mix design targeting a compressive strength of greater than 40 MPa. Numerous design combinations have been tested, and a process for selecting the most effective combination has been established. The analysis aided in comprehending the individual contributions of the major components to the mechanism of strength gain. The observations confirmed the Taguchi method's ability to predict the design mix proportions of the GCC and the ability of machine learning to relate the variables mathematically.
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U2 - 10.30919/es8e689
DO - 10.30919/es8e689
M3 - Article
AN - SCOPUS:85131376376
SN - 2576-988X
VL - 18
SP - 148
EP - 158
JO - Engineered Science
JF - Engineered Science
ER -