Predicting Rubberized Concrete Compressive Strength Using Machine Learning: A Feature Importance and Partial Dependence Analysis

Mahdi Hasanipanah, R. Abdullah, Mudassir Iqbal, Hải Bằng Lý
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Abstract

Rubberized concrete is a material that is both ecologically friendly and sustainable, and it has been finding more and more usage in building applications recently. In this study, a machine learning model, namely LightGBM, is developed to predict the compressive strength (CS) of rubberized concrete using 11 input parameters. The performance of the model is measured using a number of different statistical criteria after it has been trained on a dataset containing 275 samples. In order to evaluate the impact that each input parameter has on the CS, feature importance and partial dependency plots (PDP) are used as analytical tools. According to the findings, the superplasticizer, chipped rubber, crumb rubber, coarse aggregate, fine aggregate, and water content all have a significant impact on the CS of rubberized concrete. On the other hand, the results indicate that the cement content, slag/fly ash content, and type of CS have a relatively minor effect. In addition to this, the PDP offers insights into the manner in which the input parameters have an effect on the CS of rubberized concrete. Overall, the developed model and analytic techniques may be used as a helpful tool in forecasting the CS of rubberized concrete and improving its mix design for a variety of construction applications.
用机器学习预测橡胶混凝土抗压强度:特征重要性和部分依赖分析
橡胶混凝土是一种既环保又可持续的材料,近年来在建筑中得到了越来越多的应用。在本研究中,开发了一个机器学习模型,即LightGBM,用于使用11个输入参数预测橡胶混凝土的抗压强度(CS)。在包含275个样本的数据集上进行训练后,使用许多不同的统计标准来测量模型的性能。为了评估每个输入参数对CS的影响,使用特征重要性和部分依赖图(PDP)作为分析工具。研究结果表明,减水剂、碎胶、碎胶、粗骨料、细骨料和含水率对橡胶混凝土的CS均有显著影响。另一方面,研究结果表明,水泥掺量、矿渣/粉煤灰掺量和CS类型的影响相对较小。除此之外,PDP还提供了对输入参数对橡胶混凝土CS的影响方式的见解。总的来说,所开发的模型和分析技术可以作为预测橡胶混凝土CS和改进其配合比设计的有用工具,用于各种建筑应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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