Prediction of California Bearing Ratio (CBR) of Stabilized Expansive Soils with Agricultural and Industrial Waste Using Light Gradient Boosting Machine

Van Quan, H. Do
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引用次数: 11

Abstract

Using agricultural and industrial waste such as bagasse ash, groundnut shell ash and coal ash in stabilizing expansive soils are used as a subgrade material to reduce harmful impaction of swelling/shrinkage of expansive soils, reduce construction costs. It is also a solution for environmental protection. California Bearing Ratio (CBR) is an important criterion to evaluate the application technique of stabilized expansive soil such as road construction, building construction, highway construction, airport construction, etc. Using the traditional method such as experimental methods or empirical approach, the estimation of CBR of stabilized expansive soils is costly, time consuming for the experiment or low accuracy for empirical method. In this investigation, open-source code of Machine Learning technique Light Gradient Boosting Machine algorithm is introduced to predict the CBR. In order to build model, data of 207 experimental samples was synthesized from the literature to create a database. The database consists of 6 input variables (ash content, ash type, liquid limit LL, plastic limit PL, optimum moisture content OMC and maximum dry density MDD) to obtain output variable CBR. The results show that the LightGBM model can successfully predict the CBR of stabilized expansive soils with high accuracy. The ash content is the most important input factor for CBR prediction using LightGBM model. In order of importanc input factor affecting CBR prediction are ash content, MDD, ash type, OMC, LL, PL.
利用光梯度增压机预测工农业废弃物稳定膨胀土的加州承载比
利用蔗渣灰、花生壳灰、粉煤灰等工农业废弃物作为稳定膨胀土的路基材料,减少膨胀土膨胀/收缩的有害影响,降低施工成本。这也是环境保护的一个解决方案。加州承载比(CBR)是评价稳定膨胀土在道路建设、房屋建设、公路建设、机场建设等工程中应用技术的重要标准。传统的稳定膨胀土CBR估算方法,如实验方法或经验方法,成本高,耗时长,经验方法精度低。在本研究中,引入了机器学习技术Light Gradient Boosting Machine算法的开源代码来预测CBR。为了建立模型,从文献中综合207个实验样本的数据,建立数据库。数据库由6个输入变量(灰分、灰分类型、液限LL、塑限PL、最佳含水率OMC、最大干密度MDD)组成输出变量CBR。结果表明,LightGBM模型能较好地预测稳定膨胀土的CBR,具有较高的精度。利用LightGBM模型进行CBR预测时,灰分是最重要的输入因子。影响CBR预测的重要输入因素依次为灰分含量、MDD、灰分类型、OMC、LL、PL。
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