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首页> 外文期刊>Journal of materials in civil engineering >Observational Analysis of Fire-Induced Spalling of Concrete through Ensemble Machine Learning and Surrogate Modeling
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Observational Analysis of Fire-Induced Spalling of Concrete through Ensemble Machine Learning and Surrogate Modeling

机译:通过集合机学习和代理建模混凝土火灾突出的观察分析

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Despite ongoing research efforts, we continue to fall short of arriving at a consistent representation of fire-induced spalling of concrete. This is often attributed to the complexity and randomness of spalling as well as our persistence in favoring traditional approaches as a sole mean to examine this phenomenon. With the hope of bridging this knowledge gap, this paper demonstrates how utilizing surrogate modeling via data science and machine learning algorithms can provide us with valuable insights into fire-induced spalling. In this study, nine algorithms, namely naive Bayes, generalized linear model, logistic regression, fast large margin, deep learning, decision tree, random forest, gradient boosted trees, and support vector machine, are applied to analyze observations obtained from 185 fire tests (collected over the last 65 years). The same algorithms were also applied to identify key features that govern the tendency of fire-induced spalling in reinforced concrete columns and to develop tools for instantaneous prediction of spalling. The results of this comprehensive analysis highlight the merit in utilizing modern computing techniques in structural fire engineering applications given their extraordinary ability to comprehend multidimensional phenomena with ease, high predictivity, and potential for continuous improvement.
机译:尽管采取了持续的研究努力,但我们继续暂缓抵达的致力于混凝土的一致展示。这通常归因于剥落的复杂性和随机性以及我们持久地利用传统方法,因为唯一意味着检查这种现象。凭借弥合这一知识差距的希望,本文演示了如何通过数据科学和机器学习算法利用代理建模,可以为我们提供有价值的洞察的有价值的洞察。在本研究中,九种算法,即天鹅,广义线性模型,逻辑回归,快速大幅度,深度学习,决策树,随机森林,渐变树木和支持向量机,用于分析从185个火灾测试获得的观察结果(在过去的65年里收集)。还应用了相同的算法,以识别控制钢筋混凝土柱中的火灾引起剥落趋势的关键特征,并开发用于瞬时预测剥落的工具。这种综合分析的结果突出了利用结构防火工程应用中的现代计算技术的优点,因为他们具有易于,高预测性和持续改进的潜力来理解多维现象的非凡能力。

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