利用集合机器学习法预测混凝土抗压强度

Jyoti Thapa
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引用次数: 0

摘要

预测混凝土抗压强度是确保建筑项目结构完整性和耐久性的一个重要方面。近年来,机器学习方法改善了经验公式和实验室测试方法在预测混凝土抗压强度方面的局限性。本研究利用集合机器学习技术,如 Bagging、XGBoost 和 Stacking 模型,来提高混凝土抗压强度预测模型的准确性。研究采用了五倍交叉验证技术,以减少回归模型中的拟合不足或拟合过度问题。此外,还采用了各种统计指数来比较这些集合技术的预测性能。研究结果表明,XGBoost 的 R 方值最高,达到 93%,其次是 Stacking 和 Bagging 回归模型,为 92%。因此,本研究强调了集合技术作为土木工程领域宝贵工具的潜力,为更可靠、更高效的施工实践铺平了道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Concrete Compressive Strength Prediction by Ensemble Machine Learning Approach
The prediction of concrete compressive strength is a crucial aspect of ensuring the structural integrity and durability of construction projects. In recent years, machine learning approaches have improved upon the limitations of empirical formulas and laboratory testing methods for predicting concrete compressive strength. This study utilizes ensemble machine-learning techniques, such as Bagging, XGBoost, and Stacking models, to enhance the accuracy of concrete compressive strength prediction models. A five-fold cross-validation technique was applied to mitigate the problems of underfitting or overfitting in the regression model. Furthermore, various statistical indices were employed to compare the forecasting performance of these ensemble techniques. The prediction performance of this research revealed that XGBoost achieved the highest R-squared value of 93%, followed by Stacking and Bagging regression models at 92%. Consequently, this research underscores the potential of ensemble techniques as valuable tools in the domain of civil engineering, paving the way for more reliable and efficient construction practices.
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