利用神经网络预测沥青混凝土的疲劳寿命

Jakub Houlík, Jan Valentin, Václav Nežerka
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引用次数: 0

摘要

沥青混凝土(AC)的耐久性和维护需求受其疲劳寿命的影响很大。确定这一特性的传统方法既耗费资源又耗费时间。本研究利用人工神经网络(ANN)预测混凝土的疲劳寿命,重点关注应变水平、粘结剂含量和空隙含量的影响。利用大量数据集,我们对模型进行了调整,以有效处理通常以对数标度表示的更广泛的疲劳寿命数据。我们使用主题平方对数误差作为损失函数,以提高所有疲劳寿命水平的预测精度。通过对各种超参数的比较分析,我们开发出了一种机器学习模型,可以捕捉数据中的复杂关系。我们的研究结果表明,粘结剂含量越高,疲劳寿命就越长,而空隙含量的影响则因粘结剂含量的不同而变化较大。最重要的是,这项研究深入揭示了使用ANNs建模的复杂性,展示了其在更大数据集中的潜在用途。本研究中开发的代码和使用的数据在 GitHub 存储库中以开放源代码的形式提供,论文中包含了一个链接,供全文访问。
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Predicting the fatigue life of asphalt concrete using neural networks
Asphalt concrete's (AC) durability and maintenance demands are strongly influenced by its fatigue life. Traditional methods for determining this characteristic are both resource-intensive and time-consuming. This study employs artificial neural networks (ANNs) to predict AC fatigue life, focusing on the impact of strain level, binder content, and air-void content. Leveraging a substantial dataset, we tailored our models to effectively handle the wide range of fatigue life data, typically represented on a logarithmic scale. The mean square logarithmic error was utilized as the loss function to enhance prediction accuracy across all levels of fatigue life. Through comparative analysis of various hyperparameters, we developed a machine-learning model that captures the complex relationships within the data. Our findings demonstrate that higher binder content significantly enhances fatigue life, while the influence of air-void content is more variable, depending on binder levels. Most importantly, this study provides insights into the intricacies of using ANNs for modeling, showcasing their potential utility with larger datasets. The codes developed and the data used in this study are provided as open source on a GitHub repository, with a link included in the paper for full access.
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