首页> 外文期刊>Engineering Computations >An evolutionary modelling approach to predicting stress-strain behaviour of saturated granular soils
【24h】

An evolutionary modelling approach to predicting stress-strain behaviour of saturated granular soils

机译:预测饱和颗粒土应力应变行为的演化建模方法

获取原文
获取原文并翻译 | 示例
           

摘要

Purpose - This paper aims to develop a unified framework for modelling triaxial deviator stress - axial strain and volumetric strain - axial strain behaviour of granular soils with the ability to predict the entire stress paths, incrementally, point by point, in deviator stress versus axial strain and volumetric strain versus axial strain spaces using an evolutionary-based technique based on a comprehensive set of data directly measured from triaxial tests without pre-processing. In total, 177 triaxial test results acquired from literature were used to develop and validate the models. Models aimed to not only be capable of capturing and generalising the complicated behaviour of soils but also explicitly remain consistent with expert knowledge available for such behaviour.Design/methodology/approach - Evolutionary polynomial regression (EPR) was used to develop models to predict stress - axial strain and volumetric strain - axial strain behaviour of granular soils. EPR integrates numerical and symbolic regression to perform EPR. The strategy uses polynomial structures to take advantage of favourable mathematical properties. EPR is a two-stage technique for constructing symbolic models. It initially implements evolutionary search for exponents of polynomial expressions using a genetic algorithm (GA) engine to find the best form of function structure; second, it performs a least squares regression to find adjustable parameters, for each combination of inputs (terms in the polynomial structure).Findings - EPR-based models were capable of generalising the training to predict the behaviour of granular soils under conditions that have not been previously seen by EPR in the training stage. It was shown that the proposed EPR models outperformed ANN and provided closer predictions to the experimental data cases. The entire stress paths for the shearing behaviour of granular soils using developed model predictions were created with very good accuracy despite error accumulation. Parametric study results revealed the consistency of developed model predictions, considering roles of various contributing parameters, with physical and engineering understandings of the shearing behaviour of granular soils.Originality/value - In this paper, an evolutionary-based data-mining method was implemented to develop a novel unified framework to model the complicated stress-strain behaviour of saturated granular soils. The proposed methodology overcomes the drawbacks of artificial neural network-based models with black box nature by developing accurate, explicit, structured and user-friendly polynomial models and enabling the expert user to obtain a clear understanding of the system.
机译:目的-本文旨在建立一个统一的框架,用于对粒状土的三轴偏斜应力-轴向应变和体积应变-轴向应变行为进行建模,并能够逐点逐点预测偏斜应力与轴向应变的整个应力路径。使用基于进化的技术,基于从三轴测试直接测量而无需预处理的一组全面数据,得出体积应变与轴向应变空间。总共使用了从文献中获得的177个三轴测试结果来开发和验证模型。模型不仅旨在能够捕获和概括土壤的复杂行为,而且还明确地与可用于这种行为的专家知识保持一致。设计/方法/方法-进化多项式回归(EPR)用于开发模型来预测应力-轴向应变和体积应变-粒状土壤的轴向应变行为。 EPR集成了数字和符号回归来执行EPR。该策略使用多项式结构来利用有利的数学特性。 EPR是用于构建符号模型的两阶段技术。它首先使用遗传算法(GA)引擎对多项式表达式的指数进行进化搜索,以找到函数结构的最佳形式。其次,对于输入的每种组合(多项式结构中的项),它执行最小二乘回归以找到可调整的参数。发现-基于EPR的模型能够概括训练以预测在没有条件的情况下粒状土壤的行为之前在培训阶段曾被EPR看到过。结果表明,所提出的EPR模型优于人工神经网络,并为实验数据提供了更精确的预测。尽管存在误差,但使用已开发的模型预测,可以非常精确地创建用于颗粒状土壤剪切行为的整个应力路径。参数研究结果揭示了模型预测的一致性,考虑了各种贡献参数的作用,并且对粒状土壤的剪切行为具有物理和工程方面的理解。原始性/价值-本文采用了一种基于进化的数据挖掘方法来开发了一个新的统一框架来模拟饱和颗粒状土的复杂应力-应变行为。所提出的方法通过开发准确,显式,结构化和用户友好的多项式模型,并使专家用户对系统有清晰的了解,从而克服了具有黑盒性质的基于人工神经网络的模型的弊端。

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