Title of article :
A non-linear dimension reduction methodology for generating data-driven stochastic input models
Author/Authors :
Ganapathysubramanian، نويسنده , , Baskar and Zabaras، نويسنده , , Nicholas، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2008
Pages :
26
From page :
6612
To page :
6637
Abstract :
Stochastic analysis of random heterogeneous media (polycrystalline materials, porous media, functionally graded materials) provides information of significance only if realistic input models of the topology and property variations are used. This paper proposes a framework to construct such input stochastic models for the topology and thermal diffusivity variations in heterogeneous media using a data-driven strategy. Given a set of microstructure realizations (input samples) generated from given statistical information about the medium topology, the framework constructs a reduced-order stochastic representation of the thermal diffusivity. This problem of constructing a low-dimensional stochastic representation of property variations is analogous to the problem of manifold learning and parametric fitting of hyper-surfaces encountered in image processing and psychology. by M the set of microstructures that satisfy the given experimental statistics. A non-linear dimension reduction strategy is utilized to map M to a low-dimensional region, A . We first show that M is a compact manifold embedded in a high-dimensional input space R n . An isometric mapping F from M to a low-dimensional, compact, connected set A ⊂ R d ( d ≪ n ) is constructed. Given only a finite set of samples of the data, the methodology uses arguments from graph theory and differential geometry to construct the isometric transformation F : M → A . Asymptotic convergence of the representation of M by A is shown. This mapping F serves as an accurate, low-dimensional, data-driven representation of the property variations. duced-order model of the material topology and thermal diffusivity variations is subsequently used as an input in the solution of stochastic partial differential equations that describe the evolution of dependant variables. A sparse grid collocation strategy (Smolyak algorithm) is utilized to solve these stochastic equations efficiently. We showcase the methodology by constructing low-dimensional input stochastic models to represent thermal diffusivity in two-phase microstructures. This model is used in analyzing the effect of topological variations of two-phase microstructures on the evolution of temperature in heat conduction processes.
Keywords :
Non-linear embedding , Collocation methods , sparse grids , microstructure , Stochastic partial differential equations , Model reduction , Data-driven models , Manifold learning
Journal title :
Journal of Computational Physics
Serial Year :
2008
Journal title :
Journal of Computational Physics
Record number :
1480802
Link To Document :
بازگشت