IGBT Module DPT Efficiency Enhancement via Multimodal Fusion Networks and Graph Convolution Networks

被引:0
|
作者
Zhang, Xiaotian [1 ,2 ]
Hu, Yihua [3 ]
Zhang, Jingwei [4 ]
Esfahani, Mohammad Nasr [5 ]
Tilford, Tim [6 ]
Stoyanov, Stoyan [6 ]
机构
[1] Univ York, Sch Phys Engn & Technol, York YO10 5DD, England
[2] Univ York, Dept Elect Engn, York YO10 5DD, England
[3] Kings Coll London, London WC2R 2LS, England
[4] Sch Elect Engn, China Univ Min & Technol, Xuzhou 221116, Peoples R China
[5] Univ York, Sch Phys Engn & Technol, York YO10 5DD, England
[6] Univ Greenwich, London SE9 2UG, England
基金
英国工程与自然科学研究理事会;
关键词
Insulated gate bipolar transistors; Estimation; Transient analysis; Integrated circuit modeling; Switches; Behavioral sciences; Employee welfare; Double pulse test (DPT); feature fusion; graph convolutional network (GCN); insulated-gate bipolar transistor (IGBT); POWER; MODEL; REPRESENTATION; PERFORMANCE; LOSSES;
D O I
10.1109/TIE.2024.3368165
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
The dynamic electrical characteristics of insulated-gate bipolar transistor (IGBT) are of great significance in practical high-power electrical applications and are usually evaluated through double pulse test (DPT). However, DPTs of IGBTs under various working conditions are time-consuming and laborious. Traditional estimation methods are based on detailed physical parameters and complex formula calculations, making deployment process challenging. This article proposes a novel DPT efficiency enhancement method based on graph convolution network (GCN) and feature fusion technology, which can estimate and supplement switching transient waveforms of all working conditions. Thereby, dynamic electrical characteristics of the IGBT are obtained by estimated waveforms of DPT. This method proposes a multimodal attention fusion network to capture and fuse the features of switching transient waveforms between different positions thereby improving the expressive power and performance of the model. Moreover, this method is novel in that it is the first to utilize GCN to embed DPT data under multiple working conditions into a graph structure, which can use the graph structure information to fuse the features of spatially correlated working conditions data to obtain reliable estimation results. The method has been verified to be effective and accurate on real dataset collected on two batches of IGBTs.
引用
收藏
页码:13766 / 13777
页数:12
相关论文
共 50 条
  • [41] GCNE: Graph Convolution Networks with Explicitly Influence for Recommendation
    Cai, Xili
    Wang, Jingchang
    Seng, Dewen
    Zhang, Xuefeng
    TRAITEMENT DU SIGNAL, 2023, 40 (02) : 775 - 781
  • [42] Canonical Representation of Biological Networks Using Graph Convolution
    Li, Mengzhen
    Coskun, Mustafa
    Koyuturk, Mehmet
    14TH ACM CONFERENCE ON BIOINFORMATICS, COMPUTATIONAL BIOLOGY, AND HEALTH INFORMATICS, BCB 2023, 2023,
  • [43] Canonical Representation of Biological Networks Using Graph Convolution
    Case Western Reserve University, Cleveland
    OH, United States
    不详
    ACM-BCB - ACM Conf. Bioinform., Comput. Biol., Health Informatics, 1600,
  • [44] Graph Convolution Networks for Probabilistic Modeling of Driving Acceleration
    Su, Jianyu
    Beling, Peter A.
    Guo, Rui
    Han, Kyungtae
    2020 IEEE 23RD INTERNATIONAL CONFERENCE ON INTELLIGENT TRANSPORTATION SYSTEMS (ITSC), 2020,
  • [45] Node-Feature Convolution for Graph Convolutional Networks
    Zhang, Li
    Song, Heda
    Aletras, Nikolaos
    Lu, Haiping
    Pattern Recognition, 2022, 128
  • [46] Towards a Geometric Understanding of Spatiotemporal Graph Convolution Networks
    Das, Pratyusha
    Shekkizhar, Sarath
    Ortega, Antonio
    IEEE OPEN JOURNAL OF SIGNAL PROCESSING, 2024, 5 : 1023 - 1030
  • [47] Short-Term Forecasting Based on Graph Convolution Networks and Multiresolution Convolution Neural Networks for Wind Power
    Song, Yue
    Tang, Diyin
    Yu, Jinsong
    Yu, Zetian
    Li, Xin
    IEEE TRANSACTIONS ON INDUSTRIAL INFORMATICS, 2023, 19 (02) : 1691 - 1702
  • [48] A Novel Representation of Graphical Patterns for Graph Convolution Networks
    Benini, Marco
    Bongini, Pietro
    Trentin, Edmondo
    ARTIFICIAL NEURAL NETWORKS IN PATTERN RECOGNITION, ANNPR 2022, 2023, 13739 : 16 - 27
  • [49] Node-Feature Convolution for Graph Convolutional Networks
    Zhang, Li
    Song, Heda
    Aletras, Nikolaos
    Lu, Haiping
    PATTERN RECOGNITION, 2022, 128
  • [50] Discriminative graph convolution networks for hyperspectral image classification
    Wang, Zhe
    Li, Jing
    Zhang, Taotao
    DISPLAYS, 2021, 70