Anysz Hubert, Brzozowski Łukasz, Kretowicz Wojciech, Narloch Piotr
Faculty of Civil Engineering, Warsaw University of Technology, Al. Armii Ludowej 16, 00-637 Warsaw, Poland.
Faculty of Mathematics and Information Science, Warsaw University of Technology, Koszykowa 75, 00-662 Warsaw, Poland.
Materials (Basel). 2020 May 18;13(10):2317. doi: 10.3390/ma13102317.
Cement-stabilized rammed earth (CSRE) is a sustainable construction material. The use of it allows for economizing on the cost of a structure. These two properties of CSRE are based on the fact that the soil used for the rammed mixture is usually dug close to the construction site, so it has random characteristics. That is the reason for the lack of widely accepted prescriptions for CSRE mixture, which could ascertain high enough compressive strength. Therefore, assessing which components of CSRE have the highest impact on its compressive strength becomes an important issue. There are three machine learning regression tools, i.e., artificial neural networks, decision tree, and random forest, used for predicting the compressive strength based on the relative content of CSRE composites (clay, silt, sand, gravel, cement, and water content). The database consisted of 434 samples of CSRE, which were prepared and crushed for testing purposes. Relatively low prediction errors of aforementioned models allowed for the use of explainable artificial intelligence tools (drop-out loss, mean squared error reduction, accumulated local effect) to rank the influence of the ingredients on the dependent variable-the compressive strength. Consistent results from all above-mentioned methods are discussed and compared to some statistical analysis of selected features. This innovative approach, helpful in designing the construction material is a solid base for reliable conclusions.
水泥稳定夯实土(CSRE)是一种可持续的建筑材料。使用它可以节省结构成本。CSRE的这两个特性基于这样一个事实,即用于夯实混合物的土壤通常在施工现场附近挖掘,因此具有随机特性。这就是缺乏被广泛接受的CSRE混合物配方的原因,而这些配方可以确定足够高的抗压强度。因此,评估CSRE的哪些成分对其抗压强度影响最大成为一个重要问题。有三种机器学习回归工具,即人工神经网络、决策树和随机森林,用于根据CSRE复合材料(粘土、粉砂、沙子、砾石、水泥和含水量)的相对含量预测抗压强度。该数据库由434个CSRE样本组成,这些样本是为测试目的而制备和粉碎的。上述模型相对较低的预测误差使得可以使用可解释人工智能工具(辍学损失、均方误差减少、累积局部效应)来对成分对因变量——抗压强度的影响进行排名。讨论了上述所有方法的一致结果,并与所选特征的一些统计分析进行了比较。这种有助于设计建筑材料的创新方法是得出可靠结论的坚实基础。