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Estimation of ultimate bearing capacity of shallow foundations resting on cohesionless soils using a new hybrid M5'-GP model

机译:用新型杂交M5'-GP模型估算浅埋区休息基础岩土基础的终极承载力

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摘要

Available methods to determine the ultimate bearing capacity of shallow foundations may not be accurate enough owing to the complicated failure mechanism and diversity of the underlying soils. Accordingly, applying new methods of artificial intelligence can improve the prediction of the ultimate bearing capacity. The M5' model tree and the genetic programming are two robust artificial intelligence methods used for prediction purposes. The model tree is able to categorize the data and present linear models while genetic programming can give nonlinear models. In this study, a combination of these methods, called the M5'-GP approach, is employed to predict the ultimate bearing capacity of the shallow foundations, so that the advantages of both methods are exploited, simultaneously. Factors governing the bearing capacity of the shallow foundations, including width of the foundation (B), embedment depth of the foundation (D), length of the foundation (L), effective unit weight of the soil (gamma) and internal friction angle of the soil (phi) are considered for modeling. To develop the new model, experimental data of large and small-scale tests were collected from the literature. Evaluation of the new model by statistical indices reveals its better performance in contrast to both traditional and recent approaches. Moreover, sensitivity analysis of the proposed model indicates the significance of various predictors. Additionally, it is inferred that the new model compares favorably with different models presented by various researchers based on a comprehensive ranking system.
机译:由于底层土壤的复杂机制和多样性,可用于确定浅层基础的最终承载能力的可用方法可能不足以准确。因此,应用新的人工智能方法可以改善对最终承载力的预测。 M5'模型树和遗传编程是两个用于预测目的的强大人工智能方法。模型树能够对数据进行分类并显示线性模型,而遗传编程可以提供非线性模型。在本研究中,采用这些方法的组合,称为M5'-GP方法,用于预测浅层基础的最终承载力,从而同时利用两种方法的优点。治疗浅层基础承载力的因素,包括基础(b)的宽度,基础的嵌入深度(d),基础(L)的长度,土壤(伽玛)的有效单位重量和内部摩擦角土壤(PHI)被认为是建模。要开发新模型,从文献中收集了大型和小规模测试的实验数据。通过统计指标评估新模型揭示了与传统和最近的方法相比更好的性能。此外,所提出的模型的灵敏度分析表明了各种预测因子的重要性。此外,推断新型号与基于全面排名系统的各种研究人员呈现的不同模型相比。

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