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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
教师拼音名称: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
Reducing Parameter Estimation Error of Behavioral Modeling and Digital Predistortion via Transfer Learning for RF Power Amplifiers
发布时间:2023-04-28    点击次数:

DOI码:10.1109/TMTT.2023.3267117

所属单位:中国科技大学电子工程与信息科学系

发表刊物:IEEE Transactions on Microwave Theory and Techniques

项目来源:国际自然科学基金

关键字:Behavioral modeling, digital predistortion (DPD), few-sample learning (FSL), power amplifiers (PA), transfer learning

摘要:Digital predistortion (DPD) has been widely used in linearizing radio frequency (RF) power amplifiers (PAs). However, model coefficients could not always be estimated accurately for a variety of reasons. Several regularization methods have been developed for parameter identification. However, the performance improvement is limited due to the missing information. Fortunately, if parameters from earlier operating conditions are available, they can be employed to enhance the accuracy of DPD in the current state. Despite the fact that many adaptive DPD methods are based on related concepts, they merely use past parameters as initialization for the target task. In this article, we proposed some novel transfer learning-based parameter estimation techniques for PAs operating in time-varying operating configurations. By effectively utilizing the structure knowledge of noncurrent parameters as a priori rather than just initializing them, the estimation error can be significantly decreased. Applying few-sample learning (FSL), for instance, can help to simplify the computational process of parameter extraction, but its robustness is poor. And the experimental results prove that the proposed method is useful for reducing the parameter estimation bias in FSL with negligible extra computational complexity.

合写作者:Chengye Jiang,Renlong Han,Jingchao Tan

第一作者:Guichen Yang (杨贵晨)

论文类型:期刊论文

通讯作者:Falin Liu

论文编号:10.1109/TMTT.2023.3267117

学科门类:工学

文献类型:J

卷号:71

期号:11

页面范围:4787-4799

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发表时间:2023-11-08

收录刊物:SCI