基于深度学习的输电线路逆设计

K. Roy, M. A. Dolatsara, H. Torun, R. Trinchero, M. Swaminathan
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引用次数: 10

摘要

微波结构和调谐参数的设计主要依赖于电路设计人员的专业知识,需要进行大量的仿真,这可能会耗费大量的时间。反问题方法建议从相反的方向,根据期望输出的特性来确定设计参数。在这项工作中,我们提出了一种新的机器学习架构,通过终身学习架构绕过了给定眼睛特征质量的通常设计方法。我们提出的机器学习架构是一个大规模的耦合训练系统,其中多个预测和分类是联合进行的,用于从眼睛特征中逆映射传输线几何形状。我们的模型通过使用任务内部结果、公共知识库(KB)和耦合约束以指导的方式进行训练。我们的反设计方法具有通用性,可以应用于其他领域。
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Inverse Design of Transmission Lines with Deep Learning
Design of microwave structures and tuning parameters have mostly relied on the domain expertise of circuit designers by doing many simulations, which can be prohibitively time consuming. An inverse problem approach suggests going in the opposite direction to determine design parameters from characteristics of the desired output. In this work, we propose a novel machine learning architecture that circumvents usual design method for given quality of eye characteristics by means of a Lifelong Learning Architecture. Our proposed machine learning architecture is a large-scale coupled training system in which multiple predictions and classifications are done jointly for inverse mapping of transmission line geometry from eye characteristics. Our model is trained in a guided manner by using intra-tasks results, common Knowledge Base (KB), and coupling constraints. Our method of inverse design is general and can be applied to other applications.
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