TY - JOUR
T1 - Attention-based hybrid deep learning framework for modelling the compressive strength of ultra-high-performance geopolymer concrete
AU - Xu, Minggang
AU - Tang, Xihai
AU - Sun, Jian
AU - Li, Chong
AU - Su, Jonglong
AU - Lu, Zhixiang
N1 - Publisher Copyright:
© 2026 The Author(s).
PY - 2026/3
Y1 - 2026/3
N2 - Ultra-high-performance geopolymer concrete (UHPGC) offers a promising low-carbon alternative to Portland-cement-based ultra-high-performance concrete, yet its mechanical behaviour is governed by a highly non-linear interplay among mix proportions, activator chemistry and curing age. To support data-driven mix-design optimisation, we curated and released a benchmark dataset containing 427 distinct UHPGC mixes with compressive-strength records at eight curing ages (3-360 days). Leveraging on this, we propose a hybrid deep-learning framework that cascades one-dimensional convolutional neural networks (CNNs) and long short-term memory (LSTM) layers with a Feature Masking Attention (FMA) module. The CNN extracts local compositional patterns, the LSTM captures latent temporal dependencies across ages, and FMA randomly masks input features during training while learning adaptive attention weights, thereby enhancing generalisation and interpretability. Five-fold cross-validation demonstrates that the CNN-LSTM-FMA model achieves an R² of 0.904 ± 0.018, an RMSE of 5.56 MPa and an MAE of 3.38 MPa, surpassing conventional deep-learning baselines and ablated variants by 4-16%. Moreover, an analysis of the model’s attention mechanism, corroborated by SHAP importance analysis, reveals that cement (Cem), coarse aggregate (Cag), and ground-granulated blast-furnace slag (GGBS) are the most influential factors governing strength development. The proposed dataset and model constitute an open, extensible platform for AI-assisted, low-carbon concrete design.
AB - Ultra-high-performance geopolymer concrete (UHPGC) offers a promising low-carbon alternative to Portland-cement-based ultra-high-performance concrete, yet its mechanical behaviour is governed by a highly non-linear interplay among mix proportions, activator chemistry and curing age. To support data-driven mix-design optimisation, we curated and released a benchmark dataset containing 427 distinct UHPGC mixes with compressive-strength records at eight curing ages (3-360 days). Leveraging on this, we propose a hybrid deep-learning framework that cascades one-dimensional convolutional neural networks (CNNs) and long short-term memory (LSTM) layers with a Feature Masking Attention (FMA) module. The CNN extracts local compositional patterns, the LSTM captures latent temporal dependencies across ages, and FMA randomly masks input features during training while learning adaptive attention weights, thereby enhancing generalisation and interpretability. Five-fold cross-validation demonstrates that the CNN-LSTM-FMA model achieves an R² of 0.904 ± 0.018, an RMSE of 5.56 MPa and an MAE of 3.38 MPa, surpassing conventional deep-learning baselines and ablated variants by 4-16%. Moreover, an analysis of the model’s attention mechanism, corroborated by SHAP importance analysis, reveals that cement (Cem), coarse aggregate (Cag), and ground-granulated blast-furnace slag (GGBS) are the most influential factors governing strength development. The proposed dataset and model constitute an open, extensible platform for AI-assisted, low-carbon concrete design.
KW - Compressive strength
KW - Concrete
KW - Geopolymer
KW - Machine learning
KW - Ultra-high performance
UR - https://www.scopus.com/pages/publications/105029061007
U2 - 10.1016/j.rineng.2026.109288
DO - 10.1016/j.rineng.2026.109288
M3 - Article
AN - SCOPUS:105029061007
SN - 2590-1230
VL - 29
JO - Results in Engineering
JF - Results in Engineering
M1 - 109288
ER -