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Grouting knowledge discovery based on data mining

机译:基于数据挖掘的灌浆知识发现

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摘要

The existence of highly complex and heterogeneous geological and hydrogeological conditions makes it cumbersome to determine grouting parameters for a cost-efficient grouting process. Although many empirical, numerical and analytical models have been proposed previously, there are still some gaps between the existing predictive models and practical grouting applications, leading to the fact that practical grouting design mainly depends on onsite engineers' experience. In this study, we propose to use data mining to discover grouting knowledge from onsite data of a project in Singapore. After systematic analysis of data concerning the geological information, hydrogeological conditions and grouting records, an artificial neural network was structured to further extract grouting knowledge, based on which the grout take can be estimated under given geological and hydrogeological conditions. The grout take at individual station is found to be closely correlated with overall water inflow and Q value of rock mass, making it promising to estimate the potential grout take, once probe hole and face mapping information are given before pre-grouting. The degree of correlation between input parameters and the corresponding model accuracy are significantly affected by the classification methods used.
机译:高度复杂和非均质的地质和水文地质条件的存在使得确定灌浆参数以实现经济高效的灌浆过程变得很麻烦。尽管先前已经提出了许多经验,数值和分析模型,但是现有的预测模型与实际灌浆应用之间仍然存在一些差距,导致实际灌浆设计主要取决于现场工程师的经验。在这项研究中,我们建议使用数据挖掘从新加坡项目的现场数据中发现灌浆知识。在对有关地质信息,水文地质条件和灌浆记录的数据进行系统分析之后,构造了一个人工神经网络以进一步提取灌浆知识,在此基础上可以在给定的地质和水文地质条件下估算灌浆量。发现各个工位的灌浆量与总体入水量和岩体的Q值密切相关,因此一旦在预灌浆前给出了探孔和面图信息,就有望估计潜在的灌浆量。输入参数与相应模型精度之间的相关程度会受到所使用分类方法的显着影响。

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