Materials & Design | |
Machine learning for high-fidelity prediction of cement hydration kinetics in blended systems | |
Taihao Han1  Jie Huang2  Hongyan Ma2  Aditya Kumar3  Rachel Cook4  Alaina Childers4  Kamal Khayat4  Cambria Ryckman4  | |
[1] Corresponding author at: Department of Materials Science and Engineering, Missouri University of Science and Technology, 205 Engineering Research Laboratory, 500 W 16th St, Rolla, MO 65409, USA.;Department of Civil, Architectural, and Environmental Engineering, Missouri University of Science and Technology, Rolla, MO 65409, USA;Department of Electrical and Computer Engineering, Missouri University of Science and Technology, Rolla, MO 65409, USA;Department of Materials Science and Engineering, Missouri University of Science and Technology, Rolla, MO 65409, USA; | |
关键词: Machine learning; Random forests; Portland cement; Hydration; Mineral additives; | |
DOI : | |
来源: DOAJ |
【 摘 要 】
The production of ordinary Portland cement (OPC), the most broadly utilized man-made material, has been scrutinized due to its contributions to global anthropogenic CO2 emissions. Thus — to mitigate CO2 emissions — mineral additives have been promulgated as partial replacements for OPC. However, additives — depending on their physiochemical characteristics — can exert varying effects on OPC’s hydration kinetics. Therefore — in regards to more complex systems — it is infeasible for semi-empirical kinetic models to reveal the underlying nonlinear composition-property (i.e., reactivity) relationships. In the past decade or so, machine learning (ML) has arisen as a promising, holistic approach to predict the properties of heterogeneous materials, even without an across-the-board comprehension of the underlying composition-properties correlations. This paper describes the use of a Random Forests (RF) model to enable high-fidelity predictions of time-dependent hydration kinetics of OPC-based systems — more specifically [OPC + mineral additive(s)] systems — using the system’s physiochemical attributes as inputs. Results show that the RF model can also be used to formulate mixture designs that satisfy user-imposed kinetics-related criteria. Lastly, the presented results can be expanded to formulate mixture designs that satisfy target kinetic criteria, even without knowledge of the underlying kinetic mechanisms.
【 授权许可】
Unknown