Ahmad Ayaz, Farooq Furqan, Ostrowski Krzysztof Adam, Śliwa-Wieczorek Klaudia, Czarnecki Slawomir
Department of Civil Engineering, COMSATS University Islamabad, Abbottabad Campus 22060, Pakistan.
Faculty of Civil Engineering, Cracow University of Technology, 24 Warszawska Str., 31-155 Cracow, Poland.
Materials (Basel). 2021 Apr 29;14(9):2297. doi: 10.3390/ma14092297.
Structures located on the coast are subjected to the long-term influence of chloride ions, which cause the corrosion of steel reinforcements in concrete elements. This corrosion severely affects the performance of the elements and may shorten the lifespan of an entire structure. Even though experimental activities in laboratories might be a solution, they may also be problematic due to time and costs. Thus, the application of individual machine learning (ML) techniques has been investigated to predict surface chloride concentrations (C) in marine structures. For this purpose, the values of C in tidal, splash, and submerged zones were collected from an extensive literature survey and incorporated into the article. Gene expression programming (GEP), the decision tree (DT), and an artificial neural network (ANN) were used to predict the surface chloride concentrations, and the most accurate algorithm was then selected. The GEP model was the most accurate when compared to ANN and DT, which was confirmed by the high accuracy level of the K-fold cross-validation and linear correlation coefficient (R2), mean absolute error (MAE), mean square error (MSE), and root mean square error (RMSE) parameters. As is shown in the article, the proposed method is an effective and accurate way to predict the surface chloride concentration without the inconveniences of laboratory tests.
位于海岸的结构物受到氯离子的长期影响,这会导致混凝土构件中的钢筋腐蚀。这种腐蚀严重影响构件的性能,并可能缩短整个结构的使用寿命。尽管实验室中的实验活动可能是一种解决方案,但由于时间和成本问题,它们也可能存在问题。因此,人们研究了应用个体机器学习(ML)技术来预测海洋结构物表面的氯化物浓度(C)。为此,通过广泛的文献调研收集了潮汐区、飞溅区和浸没区的C值,并纳入本文。使用基因表达式编程(GEP)、决策树(DT)和人工神经网络(ANN)来预测表面氯化物浓度,然后选择最准确的算法。与ANN和DT相比,GEP模型最为准确,这通过K折交叉验证和线性相关系数(R2)、平均绝对误差(MAE)、均方误差(MSE)和均方根误差(RMSE)参数的高精度水平得到了证实。如本文所示,所提出的方法是一种有效且准确的预测表面氯化物浓度的方法,无需进行实验室测试带来的不便。