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Prediction of Pile Capacity Parameters using Functional Networks and Multivariate Adaptive Regression Splines

机译:基于功能网络和多元自适应回归样条的桩体承载力参数预测

摘要

The soil is found to vary spatially everywhere in nature. As such, it’s generally a difficult task to predict the nature of soil for any particular application with traditional methods like experimental, empirical, finite element or finite difference analysis. Analysis with traditional methods taking into factor all the varying inputs makes it a complex problem, which is difficult to solve and comprehend. This necessitates the use of statistical modelling tool for the solution to problems concerning soil. Pile foundations are widely used in civil engineering construction. However, owing to the variable behavior of soil and the dependence of vertical pile load capacity on numerous factors, there does not exist a definite equation which can estimate the pile load accurately and include all the factors comprehensively. Artificial intelligence techniques are known to successfully develop accurate prediction models with the obtained input and output data form laboratory experiments or field data. Therefore, in the present study, Functional Network (FN) and multivariate adaptive regression splines (MARS) were used to develop prediction models for the lateral load capacity of piles, vertical capacity of driven piles in cohesionless soil, friction capacity of piles in clay, axial capacity of piles and pullout capacity of ground anchors. In all the cases, prediction equations were provided for the developed models which were found to be simple and can be easily used by practicing geotechnical engineers. A standalone application was also developed to facilitate the calculation of required pile capacity parameters based on the prediction equations. The prediction models built by FN and MARS were compared with different artificial intelligence (AI) techniques and empirical models available in the literature and FN and MARS were found to invariably outperform other AI techniques and empirical methods.
机译:人们发现自然界中的土壤在空间上都在变化。因此,使用传统方法(例如实验,经验,有限元或有限差分分析)来预测任何特定应用的土壤性质通常是一项艰巨的任务。传统方法的分析考虑了所有变化的输入,使其成为一个复杂的问题,难以解决和理解。这需要使用统计建模工具来解决有关土壤的问题。桩基广泛用于土木工程建设中。但是,由于土壤的变化特性以及竖向桩承载力与多种因素的关系,因此不存在能够准确估计桩体承载力并综合考虑所有因素的确定方程。众所周知,人工智能技术可以利用实验室实验或现场数据获得的输入和输出数据成功开发出准确的预测模型。因此,在本研究中,功能网络(FN)和多元自适应回归样条(MARS)用于建立桩的侧向承载能力,无粘性土中打入桩的竖向承载力,黏土中桩的摩擦承载力,桩的轴向承载力和地锚的拔出承载力。在所有情况下,都为已开发的模型提供了预测方程式,该方程式非常简单,并且易于由岩土工程师来使用。还开发了一个独立的应用程序,以简化基于预测方程式的所需桩容量参数的计算。将FN和MARS建立的预测模型与不同的人工智能(AI)技术和文献中提供的经验模型进行比较,发现FN和MARS始终优于其他AI技术和经验方法。

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    Suman Shakti;

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  • 年度 2015
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