Comprehensive Mapping of Continuous/Switching Circuits in CCM and DCM to Machine Learning Domain Using Homogeneous Graph Neural Networks

IF 2.4 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC IEEE open journal of circuits and systems Pub Date : 2023-01-04 DOI:10.1109/OJCAS.2023.3234244
Ahmed K. Khamis;Mohammed Agamy
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引用次数: 1

Abstract

This paper proposes a method of transferring physical continuous and switching/converter circuits working in continuous conduction mode (CCM) and discontinuous conduction mode (DCM) to graph representation, independent of the connection or the number of circuit components, so that machine learning (ML) algorithms and applications can be easily applied. Such methodology is generalized and is applicable to circuits with any number of switches, components, sources and loads, and can be useful in applications such as artificial intelligence (AI) based circuit design automation, layout optimization, circuit synthesis and performance monitoring and control. The proposed circuit representation and feature extraction methodology is applied to seven types of continuous circuits, ranging from second to fourth order and it is also applied to three of the most common converters (Buck, Boost, and Buck-boost) operating in CCM or DCM. A classifier ML task can easily differentiate between circuit types as well as their mode of operation, showing classification accuracy of 97.37% in continuous circuits and 100% in switching circuits.
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基于齐次图神经网络的CCM和DCM连续/开关电路到机器学习域的综合映射
本文提出了一种将工作在连续导通模式(CCM)和不连续导通方式(DCM)下的物理连续和开关/转换器电路转换为图形表示的方法,与电路组件的连接或数量无关,从而使机器学习(ML)算法和应用程序易于应用。这种方法是通用的,适用于具有任何数量的开关、组件、源和负载的电路,并可用于基于人工智能(AI)的电路设计自动化、布局优化、电路合成以及性能监测和控制等应用。所提出的电路表示和特征提取方法被应用于从二阶到四阶的七种类型的连续电路,并且它也被应用于在CCM或DCM中操作的三种最常见的转换器(降压、升压和降压-升压)。分类器ML任务可以很容易地区分电路类型及其操作模式,在连续电路中显示出97.37%的分类准确率,在开关电路中显示为100%。
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