Predicting mechanical properties of self-healing concrete with Trichoderma Reesei Fungus using machine learning

被引:10
作者
Chiadighikaobi, Paschal Chimeremeze [1 ]
Hematibahar, Mohammad [2 ]
Kharun, Makhmud [2 ]
Stashevskaya, Nadezhda A. [2 ]
Camara, Kebba [3 ]
机构
[1] Afe Babalola Univ, Dept Civil Engn, Ado Ekiti, Nigeria
[2] Moscow State Univ Civil Engn, Reinforced Concrete & Stone Struct, Moscow, Russia
[3] Gambia Port Author, Estate & Civil Engn Dept, Banjul, Gambia
关键词
Self-healing concrete; Trichoderma Reesei Fungus; fungi; compressive strength; machine learning;
D O I
10.1080/23311916.2024.2307193
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Trichoderma Reesei is a mesophilic and filamentous fungus. It is an anamorph of the fungus Hypocrea jecorina, in addition, T. reesei can secrete large amounts of cellulolytic enzymes and form dextrose PDA (potato dextrose agar) and potato injection. After the preparation of fungi, it is added to the cracked samples. The experimental samples were 150 mm(3) cubic compression and 70 mm x 30 mm x 15 mm cracks on the surface of each cube. Different fungi water extracts were used with 0, 50.5, 6.37, and 8.42 liters of water per ml. The results show that the addition of 8.42 (ml) of the mushroom extract with one liter of water has the maximum compressive strength with more than 18.99 MPa for 28 days, 16.7 for 14 days, and 14.5 for 7 days. In this study, linear regression, lasso regression, and rigid regression have been used to predict compressive strength, also the cooperation between mushroom juice per milliliter and compressive strength has been predicted. To find the accuracy, Correlation Coefficient (R2), Mean Absolute Errors (MAE), and Root Mean Square Error have been used. The results of machine learning show that the results of linear regression and rigid regression R-2 were more than 0.98. In addition, the relationship compressive strength prediction results showed that R-2 for fungi broth with one liter of water was 5.05 mL was more than 0.98. Finally, this study shows that the fungus Trichoderma reesei is an effective agent for curing concrete and improving the compressive strength of concrete.
引用
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页数:17
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