Prediction of blast loading on protruded structures using machine learning methods

IF 2.1 Q2 ENGINEERING, CIVIL
M. Zahedi, Shahriar Golchin
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引用次数: 7

Abstract

Current empirical and semi-empirical based design manuals are restricted to the analysis of simple building configurations against blast loading. Prediction of blast loads for complex geometries is typically carried out with computational fluid dynamics solvers, which are known for their high computational cost. The combination of high-fidelity simulations with machine learning tools may significantly accelerate processing time, but the efficacy of such tools must be investigated. The present study evaluates various machine learning algorithms to predict peak overpressure and impulse on a protruded structure exposed to blast loading. A dataset with over 250,000 data points extracted from ProSAir simulations is used to train, validate, and test the models. Among the machine learning algorithms, gradient boosting models outperformed neural networks, demonstrating high predictive power. These models required significantly less time for hyperparameter optimization, and the randomized search approach achieved relatively similar results to that of grid search. Based on permutation feature importance studies, the protrusion length was considered a significantly more influential parameter in the construction of decision trees than building height.
利用机器学习方法预测突出结构的爆炸载荷
目前基于经验和半经验的设计手册仅限于对爆炸荷载下的简单建筑结构的分析。复杂几何形状的爆炸载荷预测通常使用计算流体动力学求解器进行,这以其高计算成本而闻名。高保真仿真与机器学习工具的结合可能会显著加快处理时间,但必须研究这些工具的有效性。本研究评估了各种机器学习算法,以预测暴露在爆炸载荷下的突出结构的峰值超压和脉冲。从proair模拟中提取的超过250,000个数据点的数据集用于训练,验证和测试模型。在机器学习算法中,梯度增强模型优于神经网络,显示出较高的预测能力。这些模型所需的超参数优化时间显著减少,并且随机搜索方法获得的结果与网格搜索方法相对相似。基于排列特征的重要性研究,突出长度被认为是构建决策树时比建筑高度更有影响的参数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
4.30
自引率
25.00%
发文量
48
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