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A Bayesian-physical informed conditional tabular generative adversarial network framework for low-carbon concrete data augmentation and hyperparameter optimization

Shiqi Wang, Peng Xia, Fuyuan Gong, Yuxi Zhao, Peng Lin

2025Engineering Applications of Artificial Intelligence27 citationsDOIOpen Access PDF

Abstract

Data shortage, unbalanced data distribution and multi-factor coupling mechanism of materials all increase the difficulty of design. This paper proposed a physical constraint-conditional generative adversarial network (PI-CTGAN) to solve the above problems. Firstly, residual layers are added to the generator to enhance model stability. The continuous differentiable function and wasserstein_distance were constructed to embed physical loss functions into the generator, including water-cement ratio, supplementary cementitious materials (SCMs) ratio, and aggregate water absorption ratio. Based on this, Bayesian optimization (BO) was used to optimize the hyperparameters of PI-CTGAN. The results showed that BO effectively optimized the model's hyperparameters, reducing the total of Kolmogorov-Smirnov distribution (K-S tot ) of the generated dataset by 27.9 %. Additionally, applying physical loss to the optimized model can improve the model's data recognition capability, with generation accuracy increasing by 16.2 %. The influence of physical weight (W PI ) and activation functions on data generation quality was compared. Revealing that K-S tot initially decreased and then increased with W PI . The model using the rectified linear unit exhibited the best generation accuracy, with a K-S tot of 0.37 and anomaly data ratios (water-binder ratio and supplementary cementitious materials/binder ratio) of 11.67 % and 3.2 %, respectively. The generated data and the experimental data show statistical similarity and conform to the physical law. By constructing the target dataset and related physical constraints, the proposed PI-CTGAN can effectively solve the issues of multi-source data sets with data shortage and imbalance, thereby providing numerous datasets to guide engineering design.

Topics & Concepts

HyperparameterComputer scienceGenerative grammarGenerative adversarial networkBayesian networkAdversarial systemMachine learningArtificial intelligenceBayesian probabilityDeep learningInfrastructure Maintenance and MonitoringBIM and Construction IntegrationInnovative concrete reinforcement materials