...
首页> 外文期刊>Ecological restoration >Estimation of Bearing Capacity of Piles in Cohesionless Soil Using Optimised Machine Learning Approaches
【24h】

Estimation of Bearing Capacity of Piles in Cohesionless Soil Using Optimised Machine Learning Approaches

机译:用优化的机器学习方法估算粘性土桩承载力

获取原文
获取原文并翻译 | 示例
           

摘要

Accurate estimation of the bearing capacity of piles requires complex modelling techniques which are not justified by timeframe, budget, or scope of the projects. In this study, six advanced machine learning algorithms including decision tree, k-nearest neighbour, multilayer perceptron artificial neural network, random forest, support vector regressor and extremely gradient boosting are employed to model the bearing capacity of piles in cohesionless soil, and the particle swarm optimisation algorithm is used to optimate the hyper-parameters of machine learning algorithms. A dataset comprising of 59 cases is employed and the R-squared value, root mean square error and variance accounted for are used as performance metrics to compare the performance of optimised machine learning methods. The comparison reveals that the optimised machine learning methods have great potential to estimate bearing capacity of piles and the particle swarm optimisation algorithm is efficient in the hyper-parameter tuning. The results show that R-squared values of six optimised machine learning approaches on the testing set vary from 0.731 to 0.9615. Also, the optimised extremely gradient boosting (R-squared value = 0.9615) shows the best performance compared with other algorithms. Furthermore, the relative importance of influential variable is investigated, which shows that effective stress is the most influential variable for bearing capacity of piles with an importance score of 30.9%. In addition, the results by the optimised machine learning method are compared to the beta-method which is a popular empirical method. It is revealed the prominent performance of optimised machine learning approaches.
机译:精确估计桩承载能力需要复杂的建模技术,这些技术不受项目的时间表,预算或范围的合理性。在这项研究中,六个先进的机器学习算法包括决策树,K-最近邻居,多层的感知者人工神经网络,随机森林,支持向量回归和极其梯度提升,以模拟粘性土壤中桩的承载力和颗粒Swarm优化算法用于对机器学习算法的超参数进行消极。使用包含59个案例的数据集,并且占用的R线值,均误差和方差被用作性能指标,以比较优化的机器学习方法的性能。比较揭示了优化的机器学习方法具有估计桩承载能力的巨大潜力,并且粒子群优化算法在超参数调谐中有效。结果表明,测试集上六种优化机器学习方法的R线值可从0.731到0.9615变化。此外,与其他算法相比,优化的极度梯度升压(R线值= 0.9615)显示了最佳性能。此外,研究了有影响变量的相对重要性,表明有效应力是最具影响力的桩承载能力,其重要性得分为30.9%。此外,通过优化的机器学习方法的结果与β-方法进行比较,这是一种流行的经验方法。揭示了优化机器学习方法的突出性能。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号