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.
翻译:在受损固体中进行局部密集变形建模模型需要高度精细的分解,以便准确预测,这大大增加了计算成本。虽然为了提高效益,可以采用适应性模型改进,但对于传统的网状模型方法来说,在对不断变化的局部化进行建模时,它十分繁琐。在这项工作中,提出了神经网络增强后再生的内核内核粒子模型(NN-RKPM)方法(NNN-RK-RKPM),因为当地化附近位置、方向和方形的解决方案过渡由NNT通过区块级神经网络优化自动地得到。被封住的美化网络的重量和偏差可以控制本地化的地点和方向。设计的基本四核内核NNNB区块能够捕捉三重接点或四重接接地表层模式,而更为复杂的本地化表层板则被多个四内核区块的超定位所捕。然后,标准的冷却法被用来接近解决方案的平滑度部分,这样可以比高分辨率分解的分解分解网络控制地方化,从而获得离式的离式解决方案的离式的定位。通过常规网络进行新的自动化,对准,将新的数据库进行新的升级。