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Kumbakonam R. Rajagopal

Researcher at Texas A&M University

Publications -  688
Citations -  25779

Kumbakonam R. Rajagopal is an academic researcher from Texas A&M University. The author has contributed to research in topics: Constitutive equation & Viscoelasticity. The author has an hindex of 77, co-authored 659 publications receiving 23443 citations. Previous affiliations of Kumbakonam R. Rajagopal include Kent State University & University of Wisconsin-Madison.

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Modeling deformation induced anisotropy of light-activated shape memory polymers

TL;DR: In this article, the constitutive models developed for elastic and viscoelastic LASMPs are modified to include the changes in the symmetry group of the new network due to mechanically stretching the polymer.
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Characterization of the non-linear response of asphalt mixtures using a torsional rheometer

TL;DR: In this article, the authors used a torsional rheometer for measuring the normal stresses developed in asphalt mixtures when subjected to torsion, and found significant development of normal stresses due to shearing.
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On stress-based piecewise elasticity for limited strain extensibility materials

TL;DR: In this article, a one-dimensional stress-based elasticity model with limited strain extensibility is developed based on thermodynamics arguments, which can be used to model certain rubber-like and biological materials with limiting chain extENSibility.
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Flow of a non-Newtonian fluid between intersecting planes of which one is moving

TL;DR: In this paper, the flow of an Oldroyd-B fluid between two intersecting plates, one of which is fixed and the other moving along its plane, was studied and the effect of the coefficient σ, which is a measure of the elasticity of the flow, on the flow pattern was shown.
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Discrete large eddy simulation

TL;DR: This work conjoin the notion of large eddy simulation with those of fuzzy sets and neural networks to describe a class of turbulent flows to improve the filtering procedure.