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Utilizing neural networks in magnetic media modeling and field computation: A review

机译:在磁性介质建模和场计算中利用神经网络的回顾

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摘要

Magnetic materials are considered as crucial components for a wide range of products and devices. Usually, complexity of such materials is defined by their permeability classification and coupling extent to non-magnetic properties. Hence, development of models that could accurately simulate the complex nature of these materials becomes crucial to the multi-dimensional field-media interactions and computations. In the past few decades, artificial neural networks (ANNs) have been utilized in many applications to perform miscellaneous tasks such as identification, approximation, optimization, classification and forecasting. The purpose of this review article is to give an account of the utilization of ANNs in modeling as well as field computation involving complex magnetic materials. Mostly used ANN types in magnetics, advantages of this usage, detailed implementation methodologies as well as numerical examples are given in the paper.
机译:磁性材料被认为是广泛产品和设备的关键组件。通常,此类材料的复杂性由其磁导率分类和与非磁性质的耦合程度来定义。因此,开发能够精确模拟这些材料的复杂性质的模型对于多维现场-媒体交互和计算至关重要。在过去的几十年中,人工神经网络(ANN)已在许多应用程序中用于执行各种任务,例如识别,近似,优化,分类和预测。本文的目的是说明人工神经网络在建模以及涉及复杂磁性材料的场计算中的利用。本文给出了磁性中最常用的ANN类型,这种用法的优点,详细的实现方法以及数值示例。

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