4.6 Article

An edge-based strain smoothing particle finite element method for large deformation problems in geotechnical engineering

出版社

WILEY
DOI: 10.1002/nag.3016

关键词

finite element method; footing; large deformation; slope failure; soil collapse; strain smoothing

资金

  1. National Natural Science Foundation of China [51579179]
  2. Research Grants Council (RGC) of Hong Kong Special Administrative Region Government (HKSARG) of China [15209119]
  3. RIF project of Hong Kong [PolyU R5037-18F]

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To solve large deformation geotechnical problems, a novel strain-smoothed particle finite element method (SPFEM) is proposed that incorporates a simple and effective edge-based strain smoothing method within the framework of original PFEM. Compared with the original PFEM, the proposed novel SPFEM can solve the volumetric locking problem like previously developed node-based smoothed PFEM when lower-order triangular element is used. Compared with the node-based smoothed PFEM known as overly soft or underestimation property, the proposed SPFEM offers super-convergent and very accurate solutions due to the implementation of edge-based strain smoothing method. To guarantee the computational stability, the proposed SPFEM uses an explicit time integration scheme and adopts an adaptive updating time step. Performance of the proposed SPFEM for geotechnical problems is first examined by four benchmark numerical examples: (a) bar vibrations, (b) large settlement of strip footing, (c) collapse of aluminium bars column, and (d) failure of a homogeneous soil slope. Finally, the progressive failure of slope of sensitive clay is simulated using the proposed SPFEM to show its outstanding performance in solving large deformation geotechnical problems. All results demonstrate that the novel SPFEM is a powerful and easily extensible numerical method for analysing large deformation problems in geotechnical engineering.

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