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Advanced microwave modeling framework exploiting automatic model generation, knowledge neural networks, and space mapping

机译:利用自动模型生成,知识神经网络和空间映射的高级微波建模框架

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In this paper, we propose an efficient knowledge-based automatic model generation (KAMG) technique aimed at generating microwave neural models of the highest possible accuracy using the fewest accurate data. The technique is comprehensively derived to integrate three distinct powerful concepts, namely, automatic model generation, knowledge neural networks, and space mapping. For the first time, we simultaneously utilize two types of data generators, namely, coarse data generators that are approximate and fast (e.g., two-and-one-half-dimensional electromagnetic), and fine data generators that are accurate and slow (e.g., three-dimensional electromagnetic). Motivated by the space-mapping concept, the KAMG technique utilizes extensive coarse data, but fewest fine data to generate neural models that accurately match the fine data. Our formulation exploits a variety of knowledge neural-network architectures to facilitate reinforced neural-network learning from coarse and fine data. During neural model generation by KAMG, both coarse and fine data generators are automatically driven using adaptive sampling. The KAMG technique helps to increase the efficiency of neural model development by taking advantage of a microwave reality, i.e., availability of multiple sources of training data for most high-frequency components. The advantages of the proposed KAMG technique are demonstrated through practical microwave examples of MOSFET and embedded passive components used in multilayer printed circuit boards.
机译:在本文中,我们提出了一种有效的基于知识的自动模型生成(KAMG)技术,旨在使用最少的准确数据来生成尽可能最高的准确性的微波神经模型。该技术经过综合推导,可以集成三个不同的强大概念,即自动模型生成,知识神经网络和空间映射。首次,我们同时使用两种类型的数据生成器,即近似和快速的粗略数据生成器(例如,二维半电磁波)和精确而缓慢的精细数据生成器(例如, ,三维电磁)。受空间映射概念的启发,KAMG技术利用广泛的粗略数据,但最少的精细数据来生成与精细数据精确匹配的神经模型。我们的公式利用各种知识神经网络架构来促进从粗略数据和精细数据中进行强化的神经网络学习。在KAMG生成神经模型的过程中,粗略数据生成器和精细数据生成器均使用自适应采样自动驱动。 KAMG技术通过利用微波现实技术,即为大多数高频分量提供多个训练数据源的可用性,有助于提高神经模型开发的效率。通过在多层印刷电路板上使用的MOSFET和嵌入式无源元件的实际微波示例,证明了所提出的KAMG技术的优势。

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