Usage of Optimized Least Square SVR to Volume Expansion Estimation of Cement Paste Including Fly Ash and Mgo Expansive Additive
Abstrak
The limited hydration capacity and challenges related to delayed expansion prevent fly ash (πΉπ΄) and πππ expansive additive (ππΈπ΄) from being used significantly. Nonetheless, utilizing these two procedures in hydraulic mass concrete applications is a frequently used approach that yields favorable outcomes. To construct and assess machine learning-based algorithms to assess the volume expansion (ππ) of cement paste, which consists of πΉπ΄ and ππΈπ΄, 170 experimental findings from published studies are employed. A novel approach called least square support vector regression (πΏππππ ) has been developed. The efficacy of πΏππππ is significantly impacted by its hyperparameters (π and π), which were fine-tuned using the Dwarf Mongoose Optimization Algorithm (π·πππ΄) and the Equilibrium Optimization Algorithm (πΈππ΄). Based on the results obtained, it can be inferred that there exists a significant potential for both πΏππππ πΈ and πΏππππ π· models to accurately predict the ππ of cement paste that incorporates fly ash and πππ expansive addition. In the training and testing phases, the Theil inequality coefficient (ππΌπΆ) values for πΏππππ πΈ are observed to be 0.0906 and 0.01043, which are comparatively higher than the ππΌπΆ values for πΏππππ π·, which are 0.0382 and 0.0044, respectively. By predicting the volume expansion accurately, engineers can adjust the proportions of πΉπ΄ and ππΈπ΄ to achieve desired expansion properties, improving the durability and stability of concrete structures. Accurate prediction models allow for better control of thermal stresses, reducing the risk of thermal cracking and extending the structure's lifespan.
Topik & Kata Kunci
Penulis (2)
Mazharul Islam
Sadia Afrin
Akses Cepat
- Tahun Terbit
- 2024
- Sumber Database
- DOAJ
- DOI
- 10.22034/aeis.2024.477469.1227
- Akses
- Open Access β