Concrete materials compressive strength using soft computing techniques

被引:0
|
作者
Chongyang Lu
机构
[1] Lanzhou Institute of Technology,College of Civil Engineering
关键词
Charged system search; Colliding bodies optimization; Particle swarm optimization; TSK model; Prediction of strength;
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暂无
中图分类号
学科分类号
摘要
A robust and reliable method to estimate the strength of concrete materials based on their mix parameters is required, considering their extensive use in construction over the last few decades. Consequently, the relationship between the compressive strength of the concrete and its mixed components is highly nonlinear. In this study, artificial intelligence techniques are applied to predict the compressive strength of cement-based concrete materials, whether they contain or do not contain metakaolin. A surrogate model, including the TSK fuzzy inference system, has been expanded to forecast the compressive strength of concretes based on experimental data available in the literature. Results indicate that the TSK model can reliably and robustly approximate the compressive strength of concretes. The TSK model has been optimized for mean square error (MSE) to train the inference system. In this regard, motion-based algorithms such as Particle Swarm Optimization (PSO), Colliding Bodies Optimization (CBO), and Charged System Search (CSS) have been used. The TSK fuzzy inference system, as a surrogate model, has been expanded to predict the compressive strength of concrete based on experimental data available in the literature.
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页码:1209 / 1221
页数:12
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