Research on determining the piles bearing capacity using a random forest model considering the randomness of the soil data

Van Loi Giap, Tuan Anh Pham, Tuong Lai Nguyen
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Abstract

Bearing capacity is one of the most important parameters when designing piles. However, determining the exact bearing capacity of piles is a difficult job due to the influence of many parameters. The traditional methods of calculating the axial load capacity of piles all use a predefined problem, that is, determining only a single load capacity value, which is not entirely consistent with the actual working of the piles, where the input parameters affecting the bearing capacity of the piles are random. In this study, an advanced machine learning model based on artificial intelligence, the Random Forest, was developed and applied to predict the bearing capacity of piles. This model is used as a predefined model applied in the Monte-Carlo simulation method to determine the reliability of the pile-bearing capacity. The results show that the Random Forest model very well predicts the bearing capacity of piles on both training and testing data. In addition, the Monte-Carlo simulation results with random soil data show that there is still the possibility of unsafe pile operation even when the pile top load is lower than the expected average bearing capacity of the pile. Furthermore, the maximum load to the top of the pile should not exceed 99.2% of the mean load value, to achieve a high probability of safe working, on this data set.
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考虑土壤数据随机性的随机森林模型确定桩基承载力研究
承载力是桩设计中最重要的参数之一。然而,由于众多参数的影响,确定桩的准确承载力是一项困难的工作。传统的计算桩轴向承载力的方法都采用了一个预定义的问题,即只确定一个单一的承载力值,与桩的实际工作情况并不完全一致,其中影响桩承载力的输入参数是随机的。本研究开发了一种基于人工智能的先进机器学习模型——随机森林,并将其应用于桩的承载力预测。该模型作为蒙特卡罗模拟方法中用于确定桩承载力可靠度的预定义模型。结果表明,无论在训练数据还是测试数据上,随机森林模型都能很好地预测桩的承载力。此外,随机土体数据的蒙特卡罗模拟结果表明,即使桩顶荷载低于桩的预期平均承载能力,仍存在桩不安全运行的可能性。此外,在该数据集上,桩顶最大荷载不应超过平均荷载值的99.2%,以实现高概率的安全工作。
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