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刘发林

博士生导师
硕士生导师
教师姓名:刘发林
教师英文名称:LIU Falin
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学历:博士研究生毕业
联系方式:0551-63601922
学位:工学博士学位
职称:研究员
毕业院校:中国科学技术大学
所属院系:信息科学技术学院
学科:电子科学与技术    信息与通信工程    
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论文成果
Topology-Evolving Neural Network for Digital Predistortion of RF Power Amplifiers
发布时间:2026-07-12    点击次数:

DOI码:10.1109/TMTT.2026.3710476

所属单位:中国科学技术大学信息学院,东方理工大学

发表刊物:IEEE Transactions on Micriwave Theory and Techniques (Early Access)

项目来源:NSFC 62371436 等

关键字:Digital predistortion (DPD), evolutionary algorithm, neural networks (NNs), power amplifier (PA).

摘要:In scenarios where both low computational complexity and high linearization performance are strictly required, this article proposes a novel topology-evolving neural network(TENN) for digital predistortion (DPD) of radio frequency (RF) power amplifiers (PAs). Unlike conventional neural network (NN) models with both fixed architectures and predefined connections, the proposed TENN employs an evolutionary algorithm to automatically optimize the network topology. Starting from a minimal structure, the model progressively evolves into an efficient architecture with a specifically designed training strat egy. The proposed TENN incorporates two key mechanisms. First, mutation mechanisms are utilized to explore the optimal backbone structure of the model. Second, a tailored training strategy is introduced to progressively establish internal con nections according to their importance, enabling the TENN to adaptively refine its representational capability while main taining low complexity. Experimental results demonstrate that the proposed TENN achieves superior linearization performance compared with several state-of-the-art NN-based and classic linear-in-parameter DPD models, while requiring much lower computational complexity.

第一作者:Junsen Wang (王俊森)

合写作者:Chengye Jiang,Renlong Han,Hao Chang,Qianqian Zhang

论文类型:期刊论文

通讯作者:Kang Zhou,Falin Liu

论文编号:10.1109/TMTT.2026.3710476

学科门类:工学

文献类型:J

卷号:Online

期号:Online

页面范围:1-14

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发表时间:2026-06-28