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Prediction of the diameter of jet grouting columns with artificial neural networks

机译:用人工神经网络预测旋喷桩的直径

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The prediction of the diameter of columns is a fundamental step for the design of jet grouting applications, as harmful consequences may derive from an inadequate selection of the treatment setup. Starting from different perspectives, empirical or theoretical correlations between the mean diameter of columns, the treatment parameters and the mechanical properties of native soils have been provided in the literature. However, the margin of uncertainty with these relations is still relatively large, mostly because of arbitrary assumptions made in their formulation. In order to reduce as much as possible the role of preliminary choices, a method based on artificial neural networks (ANN) is proposed. It consists in training a computer code with a set of experimental observations and in using the established correlations between input and output variables to predict future occurrences. After a brief introduction of the principles and limitations of ANN's, the paper describes the logical procedure followed for the selection of the variables which better describe the mechanism of columns formation. A database of more than 130 case studies, where jet grouting parameters, properties of soil and diameters are simultaneously reported, has been collected from the literature to train the network. Systematic analyses have been then performed, parametrically varying the structure of the network and the use of data, in order to improve the accuracy of prediction. The comparison with other methods recently published in the literature confirms the good predictive capability of the proposed method. For its practical application, a set of design charts has been produced where the mean diameters of columns are expressed, for all injection systems and soil types, as functions of the soil penetration index Nspiand the specific energy of treatment. Safety factors have been finally computed to take into account the inaccuracy of prediction. (C) 2015 The Japanese Geotechnical Society. Production and hosting by Elsevier B.V. All rights reserved.
机译:柱直径的预测是设计喷射灌浆应用的基本步骤,因为处理方案选择不当可能导致有害后果。从不同的角度出发,文献中已经提供了柱的平均直径,处理参数和天然土壤的力学性能之间的经验或理论相关性。但是,这些关系的不确定性范围仍然相对较大,这主要是由于在制定这些关系时进行了任意假设。为了尽可能减少初步选择的作用,提出了一种基于人工神经网络的方法。它包括通过一组实验观察结果训练计算机代码,以及使用输入和输出变量之间已建立的相关性来预测未来的事件。在简要介绍了人工神经网络的原理和局限性之后,本文介绍了选择变量时要遵循的逻辑过程,以更好地描述列形成的机理。从文献中收集了130多个案例研究的数据库,其中同时报告了喷射注浆参数,土壤特性和直径,以训练该网络。然后进行了系统分析,以参数方式改变了网络的结构和数据的使用,以提高预测的准确性。与最近在文献中发表的其他方法的比较证实了所提出方法的良好预测能力。对于其实际应用,已生成了一组设计图表,其中表示了所有注入系统和土壤类型的柱的平均直径,作为土壤渗透指数Nspi和处理比能的函数。最终已经计算出安全系数,以考虑到预测的不准确性。 (C)2015年日本岩土学会。 Elsevier B.V制作和托管。保留所有权利。

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