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Penetrability prediction of microfine cement grout in granular soil using Artificial Intelligence techniques

机译:人工智能技术预测颗粒土中超细水泥灌浆的渗透性。

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In connection to permeation grouting present study is aimed to investigate the penetrability of microfine cement (MC) grout in granular soil. Series of laboratory based sand column grouting tests were undertaken to characterize the penetrability of MC grout in granular soil in terms of rheological properties of grout suspension (i.e. yield stress, tau(0) and plastic viscosity, mu), properties pertinent to sand and grout material such as fine sand content (FC), relative density of sand (RD) and uniformity coefficient of sand (C-u) and groutability ratio (N-2) and grouting procedure (i.e. grouting pressure, P), using permeation grouting technique. Ten (10) different sand types having d10 ranging from 0.17 mm to 2.53 mm and Cu ranging from 1.35 to 5.76 were grouted in laboratory with MC grout suspensions under two different relative densities (i.e. 30% and 70%). MC grout suspensions were prepared with four different water to cement (w/c) ratios viz. 0.8, 1, 2 and 3. Rheological tests of the MC grout suspensions prepared with different w/c ratios were performed to evaluate the flow properties (tau(0) and mu). Subsequently, artificial neural network (ANN) and support vector machine (SVM) based penetrability prediction models were developed to correlate penetrability with tau(0), mu, FC, RD, C-u, N-2 and P. Sensitivity analysis and neural interpretation diagram (ND) was employed to identify the key variables in penetrability prediction, to measure its effect and to explain and extract understandable knowledge from the proposed model.
机译:与渗透灌浆有关的本研究旨在研究粒状土壤中超细水泥浆的渗透性。进行了一系列基于实验室的砂柱灌浆测试,以根据灌浆悬浮液的流变特性(即屈服应力,tau(0)和塑性粘度,μ),与砂浆相关的特性来表征MC灌浆在颗粒状土壤中的渗透性。使用渗透灌浆技术,例如细砂含量(FC),砂的相对密度(RD)和砂的均匀系数(Cu)和灌浆比(N-2)和灌浆程序(即灌浆压力P)等材料。在实验室中用MC灌浆悬浮液在两种不同的相对密度(即30%和70%)下灌浆十(10)种不同类型的砂,其d10为0.17 mm至2.53 mm,Cu为1.35至5.76。用四种不同的水与水泥(w / c)比即v制备MC灌浆悬浮液。 0.8、1、2和3。对以不同w / c比例制备的MC灌浆悬浮液进行流变测试,以评估其流动性能(tau(0)和mu)。随后,开发了基于人工神经网络(ANN)和支持向量机(SVM)的渗透性预测模型,以将渗透性与tau(0),mu,FC,RD,Cu,N-2和P关联。敏感性分析和神经解释图(ND)用于确定渗透性预测中的关键变量,以测量其影响并解释和提取所提出模型中可理解的知识。

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