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首页> 外文期刊>Geomechanics and engineering >On the prediction of unconfined compressive strength of silty soil stabilized with bottom ash, jute and steel fibers via artificial intelligence
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On the prediction of unconfined compressive strength of silty soil stabilized with bottom ash, jute and steel fibers via artificial intelligence

机译:基于人工智能的底灰,黄麻和钢纤维稳定粉质土无侧限抗压强度预测

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The determination of the mixture parameters of stabilization has become a great concern in geotechnical applications. This paper presents an effort about the application of artificial intelligence (AI) techniques including radial basis neural network (RBNN), multi-layer perceptrons (MLP), generalized regression neural network (GRNN) and adaptive neuro-fuzzy inference system (ANFIS) in order to predict the unconfined compressive strength (UCS) of silty soil stabilized with bottom ash (BA), jute fiber (JF) and steel fiber (SF) under different freeze-thaw cycles (FTC). The dosages of the stabilizers and number of freeze-thaw cycles were employed as input (predictor) variables and the UCS values as output variable. For understanding the dominant parameter of the predictor variables on the UCS of stabilized soil, a sensitivity analysis has also been performed. The performance measures of root mean square error (RMSE), mean absolute error (MAE) and determination coefficient (R-2) were used for the evaluations of the prediction accuracy and applicability of the employed models. The results indicate that the predictions due to all AI techniques employed are significantly correlated with the measured UCS (p <= 0.05). They also perform better predictions than nonlinear regression (NLR) in terms of the performance measures. It is found from the model performances that RBNN approach within AI techniques yields the highest satisfactory results (RMSE = 55.4 kPa, MAE = 45.1 kPa, and R-2 = 0.988). The sensitivity analysis demonstrates that the JF inclusion within the input predictors is the most effective parameter on the UCS responses, followed by FTC.
机译:确定稳定度的混合参数已成为岩土工程应用中的重要问题。本文提出了在人工智能(AI)技术的应用方面的努力,其中包括径向基神经网络(RBNN),多层感知器(MLP),广义回归神经网络(GRNN)和自适应神经模糊推理系统(ANFIS)。为了预测在不同的冻融循环(FTC)下用底灰(BA),黄麻纤维(JF)和钢纤维(SF)稳定的粉质土壤的无侧限抗压强度(UCS)。稳定剂的剂量和冻融循环的次数用作输入(预测值)变量,UCS值用作输出变量。为了了解稳定土UCS上预测变量的主要参数,还进行了敏感性分析。均方根误差(RMSE),平均绝对误差(MAE)和确定系数(R-2)的性能指标用于评估所采用模型的预测准确性和适用性。结果表明,由于采用了所有AI技术而导致的预测与测得的UCS显着相关(p <= 0.05)。就性能指标而言,它们还比非线性回归(NLR)进行更好的预测。从模型性能中发现,人工智能技术中的RBNN方法产生了最高的满意结果(RMSE = 55.4 kPa,MAE = 45.1 kPa,R-2 = 0.988)。敏感性分析表明,在输入预测变量中包含JF是UCS响应上最有效的参数,其次是FTC。

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