梯度升压
Boosting(机器学习)
随机森林
决策树
机器学习
回归
人工智能
山脊
算法
预测建模
风速
计算机科学
英联邦
工程类
气象学
数学
地质学
统计
地理
古生物学
考古
作者
Yi Li,Xuan Huang,Yonggui Li,Fubin Chen,Q.S. Li
标识
DOI:10.1177/13694332221092671
摘要
In recent years, machine learning (ML) techniques have been used in various fields of engineering practice. In order to evaluate the feasibility of machine learning algorithms for prediction of wind-induced effects on high-rise buildings, four ML algorithms including ridge regression, decision tree, random forest and gradient boosting regression tree are adopted in this study to predict wind pressures on Commonwealth Advisory Aeronautical Research Council standard tall building. The gradient boosting regression tree model is proved to be well performed in predicting both mean wind pressures and fluctuating wind pressures. Compared to expensive wind tunnel tests and time-consuming computational fluid dynamic simulations, it is expected that the gradient boosting regression tree model is an efficient and economical alternative for predicting wind pressures on high-rise buildings.
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