ZHANG Wensheng, CAO Fuli, ZHI Xiao, YE Jiayuan, REN Xuehong. Overview on Machine Learning Methods for Cement-Based Materials[J]. Journal of the Chinese Ceramic Society, 2024, 52(11): 3617

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- Journal of the Chinese Ceramic Society
- Vol. 52, Issue 11, 3617 (2024)
Abstract
Summary and prospects
The integration with ML is a major advancement in the field of cement-based materials. ML is able to process and to learn from huge datasets to predict a range of material properties. This approach not only solves the complex problem of nonlinear regression of materials, but also marks a new era in materials research. However, to realize the full potential of machine learning in this area, challenges such as imbalances in data quality and quantity, insufficient model interpretability and limited model commonality need to be addressed. The research prospect of cement-based materials by integrating with artificial intelligence is promising. And, with the continuous improvement of AI capability and computational power, we can foresee that more complex models combined with more advanced algorithms will be able to predict and design cement-based materials more accurately. This progress will likely lead to the development of new materials with enhanced properties, contributing significantly to the field of construction and material science. This research area remains a hotspot, promisingly exciting developments and breakthroughs in the near future.

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