scispace - formally typeset
H

Hagen Klippel

Researcher at ETH Zurich

Publications -  19
Citations -  147

Hagen Klippel is an academic researcher from ETH Zurich. The author has contributed to research in topics: Finite element method & Computer science. The author has an hindex of 4, co-authored 12 publications receiving 61 citations.

Papers
More filters
Journal ArticleDOI

Meshfree simulation of metal cutting: an updated Lagrangian approach with dynamic refinement

TL;DR: An implementation of a meshfree method, intended for the application to simulate an orthogonal metal cutting operation, and a dynamic refinement algorithm via particle splitting is employed to optimize the runtime.
Journal ArticleDOI

Metal cutting simulations using smoothed particle hydrodynamics on the GPU

TL;DR: A new software tool is presented that employs meshless methods instead of the established FEM and is parallelized using GPGPU computing, allowing for a dramatic reduction in the computation time compared to established tools, enabling low- resolution simulations in the orders of minutes, and extremely high-resolution simulations in over night time frames.
Journal ArticleDOI

GPU-accelerated meshfree simulations for parameter identification of a friction model in metal machining

TL;DR: In this paper, an enhanced Coulomb law is proposed whose coefficient μ(T) is a decreasing function of temperature, and the unknown parameters of the coefficient are determined by a force optimization of iterative simulations carried out on several configurations.
Journal ArticleDOI

A Numerical-Experimental Study on Orthogonal Cutting of AISI 1045 Steel and Ti6Al4V Alloy: SPH and FEM Modeling with Newly Identified Friction Coefficients

TL;DR: In this paper, a series of cutting experiments on two widely used workpiece materials, i.e., AISI 1045 steel and Ti6Al4V titanium alloy, is conducted for validation purposes.
Journal ArticleDOI

Meshless single grain cutting simulations on the GPU

TL;DR: Meshless methods are not limited in the amount of deformation they can reproduce and thus are a promising alternative, which also has the potential for extreme parallelisation on the graphics co-processor (GPU).