通过先进的机器学习技术预测 AAC 砌块的抗压强度

Ehsan Harirchian
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引用次数: 0

摘要

通过传统的压缩实验确定蒸压加气混凝土 (AAC) 的强度特性既耗时又昂贵。使用复杂的机器学习(ML)算法预测混凝土抗压强度可以加快耗时的实验过程并降低成本。本研究提出了四种 ML 模型,包括随机森林 (RF)、支持向量回归 (SVR)、线性回归 (LR) 和随机梯度下降 (SGD)。这些模型是基于 525 个立方体样本数据集开发的,用于预测 AAC 块体的抗压强度。通过使用不同的评价指数对结果进行比较,研究分析了每个输入变量的相对重要性和对输出的影响。研究结果表明,SVR 模型的误差最小,因此最适合用于混凝土抗压强度估算。这种方法可以节省试样和实验室测试的成本。在包括水、水泥、砂、石灰、粉煤灰、铝粉和石膏比例在内的七个输入因素中,水泥比例和含水量被认为是最关键的特征。相比之下,铝粉和石膏的重要性较低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting compressive strength of AAC blocks through machine learning advancements
Determining the strength properties of Autoclaved Aerated Concrete (AAC) through conventional compression experiments is both time-consuming and costly. Using sophisticated Machine Learning (ML) algorithms to forecast concrete compressive strength can expedite time-consuming experimental procedures and reduce expenses. In this study, four ML models were proposed, including Random Forest (RF), Support Vector Regression (SVR), Linear Regression (LR), and Stochastic Gradient Descent (SGD). These models were developed to forecast the compressive strength of AAC blocks based on a dataset of 525 cubic samples. By comparing the results using different evaluation indices, the study analyzed each input variable’s relative importance and impact on the output. The findings revealed that the SVR model had the least error and is thus the most suitable for concrete compressive strength estimation. This approach results in cost savings on both specimens and laboratory tests. Out of the seven input factors, which encompass the proportions of water, cement, sand, lime, fly ash, aluminum powder, and gypsum, the proportions of cement and water content were pinpointed as the most crucial characteristics. In contrast, aluminum powder and gypsum displayed less prominent significance.
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