Terrados-Cristos Marta, Diaz-Piloneta Marina, Ortega-Fernández Francisco, Martinez-Huerta Gemma Marta, Alvarez-Cabal José Valeriano
Project Engineering Department, University of Oviedo, 33004 Oviedo, Spain.
Sensors (Basel). 2025 Jul 7;25(13):4231. doi: 10.3390/s25134231.
Atmospheric corrosion, especially in coastal environments, presents a major challenge for the long-term durability of metallic and concrete infrastructure due to chloride deposition from marine aerosols. With a significant portion of the global population residing in coastal zones-often associated with intense industrial activity-there is growing demand for accurate and early corrosion prediction methods. Traditional standards for assessing atmospheric corrosivity depend on long-term empirical data, limiting their usefulness during the design stage of infrastructure projects. To address this limitation, this study develops predictive models using machine-learning techniques, namely gradient boosting, support vector machine, and neural networks, to estimate chloride deposition levels based on easily accessible climatic and geographical parameters. Our models were trained on a comprehensive dataset that included variables such as land coverage, wind speed, and orientation. Among the models tested, tree-based algorithms, particularly gradient boosting, provided the highest prediction accuracy (F1 score: 0.8673). This approach not only highlights the most influential environmental variables driving chloride deposition but also offers a scalable and cost-effective solution to support corrosion monitoring and structural life assessment in coastal infrastructure.
大气腐蚀,尤其是在沿海环境中,由于海洋气溶胶中的氯化物沉积,对金属和混凝土基础设施的长期耐久性构成了重大挑战。全球很大一部分人口居住在沿海地区,这些地区往往与密集的工业活动相关,因此对准确和早期腐蚀预测方法的需求日益增长。评估大气腐蚀性的传统标准依赖于长期的经验数据,这限制了它们在基础设施项目设计阶段的实用性。为了解决这一局限性,本研究使用机器学习技术,即梯度提升、支持向量机和神经网络,开发预测模型,以根据易于获取的气候和地理参数估计氯化物沉积水平。我们的模型在一个包含土地覆盖、风速和方向等变量的综合数据集上进行了训练。在测试的模型中,基于树的算法,特别是梯度提升,提供了最高的预测准确率(F1分数:0.8673)。这种方法不仅突出了驱动氯化物沉积的最具影响力的环境变量,还提供了一种可扩展且具有成本效益的解决方案,以支持沿海基础设施的腐蚀监测和结构寿命评估。