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A robust data mining approach for formulation of geotechnical engineering systems

机译:建立岩土工程系统的可靠数据挖掘方法

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Purpose - The complexity of analysis of geotechnical behavior is due to multivariable dependencies of soil and rock responses. In order to cope with this complex behavior, traditional forms of engineering design solutions are reasonably simplified. Incorporating simplifying assumptions into the development of the traditional models may lead to very large errors. The purpose of this paper is to illustrate capabilities of promising variants of genetic programming (GP), namely linear genetic programming (LGP), gene expression programming (GEP), and multi-expression programming (MEP) by applying them to the formulation of several complex geotechnical engineering problems. Design/methodology/approach - LGP, GEP, and MEP are new variants of GP that make a clear distinction between the genotype and the phenotype of an individual. Compared with the traditional GP, the LGP, GEP, and MEP techniques are more compatible with computer architectures. This results in a significant speedup in their execution. These methods have a great ability to directly capture the knowledge contained in the experimental data without making assumptions about the underlying rules governing the system. This is one of their major advantages over most of the traditional constitutive modeling methods. Findings - In order to demonstrate the simulation capabilities of LGP, GEP, and MEP, they were applied to the prediction of: relative crest settlement of concrete-faced rockfill dams; slope stability; settlement around tunnels; and soil liquefaction. The results are compared with those obtained by other models presented in the literature and found to be more accurate. LGP has the best overall behavior for the analysis of the considered problems in comparison with GEP and MEP. The simple and straightforward constitutive models developed using LGP, GEP and MEP provide valuable analysis tools accessible to practicing engineers. Originality/value - The LGP, GEP, and MEP approaches overcome the shortcomings of different methods previously presented in the literature for the analysis of geotechnical engineering systems. Contrary to artificial neural networks and many other soft computing tools, LGP, GEP, and MEP provide prediction equations that can readily be used for routine design practice. The constitutive models derived using these methods can efficiently be incorporated into the finite element or finite difference analyses as material models. They may also be used as a quick check on solutions developed by more time consuming and in-depth deterministic analyses.
机译:目的-岩土力学分析的复杂性是由于土壤和岩石响应的多变量依赖性。为了应付这种复杂的行为,合理简化了传统形式的工程设计解决方案。将简化的假设纳入传统模型的开发中可能会导致非常大的错误。本文的目的是通过将遗传编程(GP)应用于几种基因的表达,以阐明有前途的遗传编程(GP)的功能,即线性遗传编程(LGP),基因表达编程(GEP)和多表达编程(MEP)。复杂的岩土工程问题。设计/方法/方法-LGP,GEP和MEP是GP的新变体,可以明确区分个体的基因型和表型。与传统的GP相比,LGP,GEP和MEP技术与计算机体系结构更兼容。这样可以大大提高执行速度。这些方法具有直接捕获实验数据中包含的知识的强大功能,而无需假设控制系统的基本规则。这是它们相对于大多数传统本构建模方法的主要优点之一。研究结果-为了演示LGP,GEP和MEP的模拟功能,将它们应用于以下方面的预测:混凝土面板堆石坝的相对波峰沉降;边坡稳定性隧道周围的沉降;和土壤液化。将结果与文献中提出的其他模型获得的结果进行比较,发现结果更为准确。与GEP和MEP相比,LGP具有最佳的整体行为来分析考虑的问题。使用LGP,GEP和MEP开发的简单直接的本构模型为实践工程师提供了有价值的分析工具。原创性/价值-LGP,GEP和MEP方法克服了以前文献中介绍的用于岩土工程系统分析的不同方法的缺点。与人工神经网络和许多其他软计算工具相反,LGP,GEP和MEP提供的预测方程式可轻松用于常规设计实践。使用这些方法得出的本构模型可以有效地合并到有限元或有限差分分析中作为材料模型。它们还可以用作对通过更多耗时和深入的确定性分析开发的解决方案的快速检查。

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