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首页> 外文期刊>IEEE Transactions on Magnetics >Automatic finite-element mesh generation using artificial neural networks-Part I: Prediction of mesh density
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Automatic finite-element mesh generation using artificial neural networks-Part I: Prediction of mesh density

机译:使用人工神经网络自动生成有限元网格-第一部分:网格密度的预测

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摘要

One of the inconveniences associated with the existing finite-element packages is the need for an educated user to develop a correct mesh at the preprocessing level. Procedures which start with a coarse mesh and attempt serious refinements, as is the case in most adaptive finite-element packages, are time consuming and costly. Hence, it is very important to develop a tool that can provide a mesh that either leads immediately to an acceptable solution, or would require fewer correcting steps to achieve better results. In this paper, we present a technique for automatic mesh generation based on artificial neural networks (ANN). The essence of this technique is to predict the mesh density distribution of a given model, and then supply this information to a Kohonen neural network, which provides the final mesh. Prediction of mesh density is accomplished by a simple feedforward neural network which has the ability to learn the relationship between mesh density and model geometric features. It will be shown that ANN are able to recognize delicate areas where a sharp variation of the magnetic field is expected. Examples of 2-D models are provided to illustrate the usefulness of the proposed technique.
机译:与现有有限元软件包相关联的不便之一是受过教育的用户需要在预处理级别开发正确的网格。与大多数自适应有限元程序包一样,从粗糙的网格开始并尝试进行认真细化的过程既费时又费钱。因此,开发一种能够提供网格的工具非常重要,该网格可以立即导致可接受的解决方案,或者需要更少的校正步骤来获得更好的结果。在本文中,我们提出了一种基于人工神经网络(ANN)的自动网格生成技术。该技术的本质是预测给定模型的网格密度分布,然后将此信息提供给提供最终网格的Kohonen神经网络。网格密度的预测是通过简单的前馈神经网络完成的,该网络具有学习网格密度与模型几何特征之间关系的能力。结果表明,人工神经网络能够识别出预期磁场会急剧变化的敏感区域。提供了2-D模型的示例以说明所提出技术的实用性。

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