建模并整合实验分析以预测 Kenaf 纤维加固混凝土梁柱连接的参数

Ige Samuel Ayeni, Yatim Mohamad Jamaludin, N. H. Abdul Shukor Lim
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引用次数: 0

摘要

为了减少基础设施项目对环境的影响,建筑行业最近对可持续材料的兴趣与日俱增。Kenaf纤维增强混凝土(KFRC)具有更好的机械性能和生物降解性,已成为一种可能的生态友好型替代材料。材料成分、几何因素和承载能力之间错综复杂的相互作用使得 KFRC 梁柱连接的结构参数设计难以优化。本研究中使用的梁柱连接是根据 ACI 318-19 剪力标准设计的。本研究提出了一种新方法,通过将机器学习建模与实验研究相结合,精确预测剑麻纤维增强混凝土梁柱(KFRC-BC)连接的参数。实验数据经过仔细记录,以确定实际情况,包括荷载-位移响应和梁柱连接参数,如剪力、刚度、延性、裂缝荷载、能量吸收和极限荷载。这些数据通过 GeneXproTools 5.0 (GEP) 用于建模,并为每个连接参数提出了具有数学表达式的经验关系。R2 统计分析用于评估模型的有效性。此外,通过不同的强度和相关性证明,深度学习可用于确定土木工程中精确的混凝土结构参数,而无需进行实验研究。剪切间距可增加 25% 至 50%。混凝土强度会影响所有这些特性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MODELLING AND INTEGRATING OF EXPERIMENTAL ANALYSIS FOR PREDICTING THE PARAMETERS OF KENAF FIBRE-REINFORCED CONCRETE BEAM-COLUMN JOINT
To lessen the environmental impact of infrastructure projects, the construction sector has recently demonstrated a growing interest in sustainable materials. Kenaf fibre-reinforced concrete (KFRC), which has improved mechanical qualities and biodegradability, has emerged as a possible eco-friendly substitute. The intricate interactions between material composition, geometrical factors, and load-bearing capacities make it difficult to optimise the design of structural parameters of KFRC beam-column joints. The beam-column joints used in this study were designed based on ACI 318-19 shear criteria. This study suggests a novel method for precisely predicting the parameters of kenaf fibre-reinforced concrete beam-column (KFRC-BC) joints by combining machine learning modelling and experimental investigation. Experimental data are carefully documented to establish the reality, including load-displacement responses and beam-column joint parameters such as shear, stiffness, ductility, crack load, energy absorption, and ultimate load. These data were used in the modelling through GeneXproTools 5.0 (GEP) and an empirical relationship with mathematical expressions has been proposed for each joint parameter. R2 statistical analysis is used to evaluate the model’s efficacy. In addition, it has been demonstrated by varying intensity and correlation that deep learning may be used to determine the precise concrete structure parameters in civil engineering without the need for experimental research. The shear spacing could be increased by 25% to 50%. Concrete strength influences all these characteristics. 
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