A Neural Network-enhanced Reproducing Kernel Particle Method for Modeling Strain Localization
Modeling the localized intensive deformation in a damaged solid requires highly refined discretization for accurate prediction, which significantly increases the computational cost. Although adaptive model refinement can be employed for enhanced effectiveness, it is cumbersome for the traditional me...
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Zusammenfassung: | Modeling the localized intensive deformation in a damaged solid requires
highly refined discretization for accurate prediction, which significantly
increases the computational cost. Although adaptive model refinement can be
employed for enhanced effectiveness, it is cumbersome for the traditional
mesh-based methods to perform while modeling the evolving localizations. In
this work, neural network-enhanced reproducing kernel particle method (NN-RKPM)
is proposed, where the location, orientation, and shape of the solution
transition near a localization is automatically captured by the NN
approximation via a block-level neural network optimization. The weights and
biases in the blocked parametrization network control the location and
orientation of the localization. The designed basic four-kernel NN block is
capable of capturing a triple junction or a quadruple junction topological
pattern, while more complicated localization topological patters are captured
by the superposition of multiple four-kernel NN blocks. The standard RK
approximation is then utilized to approximate the smooth part of the solution,
which permits a much coarser discretization than the high-resolution
discretization needed to capture sharp solution transitions with the
conventional methods. A regularization of the neural network approximation is
additionally introduced for discretization-independent material responses. The
effectiveness of the proposed NN-RKPM is verified by a series of numerical
verifications. |
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DOI: | 10.48550/arxiv.2204.13821 |