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Determination of Young's modulus of jet grouted coalcretes using an intelligent model

机译:使用智能模型确定喷射灌浆灌浆液的杨氏模量

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The coalcrete, a new supporting material produced by jet grouting (JG) technique was firstly studied for improving soft coal mass to support roadways in Guobei coal mine, China. Young's modulus is an essential indicator to evaluate the deformation-resisting ability of coalcretes. In this study, for determining Young's modulus of coalcretes efficiently, an intelligent technique was proposed using the support vector machine (SVM) and beetle antennae search (BAS). The hyper-parameters of SVM were firstly tuned by BAS, and then the SVM-BAS model with optimum hyper-parameters was employed to model the non-linear relationship between the inputs (coal content, water content, cement content, and curing time) and output (Young's modulus). By combining these variables, 360 coalcrete samples in total were prepared and tested for establishing the dataset. The results show that BAS is more reliable and efficient than the trial-and-error tuning method. Moreover, by comparison with other baseline models such as back-propagation neural network (BPNN), logistic regression (LR) and multiple linear regression (MLR), the optimized SVM-BAS model is more reliable, accurate and less time consuming for predicting Young's modulus of coalcretes. Besides, by conducting sensitivity analysis (SA), the importance of different input variables was determined. This pioneering work provides guidelines for predicting Young's modulus of coalcretes and designing proper JG parameters in engineering applications.
机译:采用喷射灌浆(JG)技术生产的一种新的配套材料,研究了改善软煤矿,以支持中国煤矿煤矿的巷道。年轻的模量是评估煤炭变形能力的必要指标。在这项研究中,为了有效地确定杨氏模量,采用支持向量机(SVM)和甲虫天线搜索(BAS)提出了一种智能技术。 SVM的超参数首先通过BAS调整,然后采用具有最佳超参数的SVM-BAS模型来模拟输入(煤含量,水含量,水泥含量和固化时间)之间的非线性关系并输出(杨氏模量)。通过组合这些变量,总共准备360个煤粉样品并测试以建立数据集。结果表明,BAS比试验和误差调谐方法更可靠,更有效。此外,通过与其他基线模型(如背部传播神经网络(BPNN),Logistic回归(LR)和多个线性回归(MLR)的比较,优化的SVM-BAS模型更可靠,准确,耗时较少,以预测杨煤炭模量。此外,通过进行灵敏度分析(SA),确定了不同输入变量的重要性。这种开创性的工作提供了预测杨氏模量的指导方针,并在工程应用中设计适当的JG参数。

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