Strength assessment of structural masonry walls: analysis based on machine learning approaches

被引:0
|
作者
Marulasiddappa S.B. [1 ]
Naganna S.R. [2 ]
K M P. [3 ]
Tantri A. [2 ]
Kuntoji G. [4 ]
Sammen S.S. [5 ]
机构
[1] Department of Civil Engineering, Siddaganga Institute of Technology, Tumakuru
[2] Department of Civil Engineering, Manipal Institute of Technology Bengaluru, Manipal Academy of Higher Education, Manipal
[3] Coastal Hydraulic Structures Division, Central Water and Power Research Station, Pune
[4] Department of Civil Engineering, BMS College of Engineering, Bengaluru
[5] Department of Civil Engineering, College of Engineering, University of Diyala, Baqubah
来源
HBRC J. | 2024年 / 1卷 / 505-524期
关键词
Compressive strength; Elman Neural Network; Gradient Tree Boosting (GTB); Machine Learning; Multivariate Adaptive Regression Splines; Structural masonry;
D O I
10.1080/16874048.2024.2334507
中图分类号
学科分类号
摘要
In conventional masonry buildings, masonry walls are key structural load-bearing elements. Likewise, masonry infill walls strengthen framed constructions against lateral stress. The material characteristics of brick units and mortar determine the compressive strength of structural masonry walls. In this study, advanced machine learning (ML) techniques were utilized to estimate the compressive strength of structural masonry walls based on the material properties of brick units and mortar. The Young’s modulus of brick units (Eu), compressive strength of brick units (Fcu), Young’s modulus of mortar (Em), and compressive strength of mortar (Fcm) were used as input parameters to model the compressive strength (Fc) of the structural masonry wall. Gradient Tree Boosting (GTB), Elman Neural Network (ENN), and Multivariate Adaptive Regression Splines (MARS) were developed using four diverse input and output (I/O) combinations to explore the effect of each input parameter on output estimation. The data used for modeling were obtained from prior studies published in the literature. The model’s performance was evaluated based on different statistical (error and efficiency) indices. For the third and fourth (I/O) combinations, the MARS model significantly outperformed other models. However, for the first I/O combination, the GTB model performed well. The study also revealed that the compressive strength of a structural masonry wall is more likely to depend on the strength and quality of the brick units than on the strength of the mortar. © 2024 The Author(s). Published by Informa UK Limited, trading as Taylor & Francis Group.
引用
收藏
页码:505 / 524
页数:19
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