耐久性
疲劳试验
压力(语言学)
结构工程
抗压强度
疲劳极限
钢筋混凝土
工程类
计算机科学
统计分析
建筑工程
数学
材料科学
统计
数据库
语言学
哲学
复合材料
作者
D.S. Yang,Dengxing Xue,Xu Hai,Wenhui Duan
标识
DOI:10.1016/j.cscm.2024.e03078
摘要
As engineering endeavors push the boundaries of material and design capabilities, the significance of understanding and mitigating fatigue in construction materials becomes paramount. This study specifically investigates the low-cycle fatigue performance of reinforced high-strength concrete (RHSC). Using rigorous data collection, we established a clear link between interpretable machine learning analysis and the fatigue properties of RHSC. A trained model was developed, yielding a straightforward formula tailored to low-cycle fatigue design considerations for RHSC. This model stands as a testament to the potential for marrying traditional engineering practices with advanced statistical techniques. Our results emphasize that, when appropriately applied, regression analysis can be instrumental in enhancing the durability and longevity of RHSC structures exposed to dynamic loadings. This research not only underscores the pivotal role of statistical methods in fatigue design but also champions the broader adoption of such techniques in evolving engineering landscapes.
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