删除或更新信息,请邮件至freekaoyan#163.com(#换成@)

相参处理间隔较短条件下基于稀疏重构及形态成分分析的航管雷达风电场杂波抑制

本站小编 Free考研考试/2022-01-03

何炜琨,,
毕峰华,
王晓亮,
张莹
中国民航大学天津市智能信号与图像处理重点实验室 天津 300300
基金项目:国家自然科学基金委员会与民航局联合资助项目(U1533110),中央高校基本科研业务费项目中国民航大学专项资助(3122018D011),天津市自然科学基金(19JCQNJC01000)

详细信息
作者简介:何炜琨:女,1977年生,教授,研究方向为雷达信号处理、风电场杂波抑制
毕峰华:男,1995年生,硕士生,研究方向为风电场杂波抑制
王晓亮:男,1982年生,副教授,研究方向为雷达信号处理、图像处理与识别
张莹:女,1996年生,硕士生,研究方向为机载雷达风电场杂波抑制
通讯作者:何炜琨 hwkcauc@126.com
中图分类号:TN958.3

计量

文章访问数:352
HTML全文浏览量:118
PDF下载量:34
被引次数:0
出版历程

收稿日期:2020-06-12
修回日期:2020-12-06
网络出版日期:2020-12-14
刊出日期:2021-07-10

Clutter Suppression of Wind Farm Based on Sparse Reconstruction and Morphological Component Analysis for ATC Radar under Short Coherent Processing Interval Condition

Weikun HE,,
Fenghua BI,
Xiaoliang WANG,
Ying ZHANG
Tianjin Key Lab for Advanced Signal Processing, Civil Aviation University of China, Tianjin 300300, China
Funds:The National Natural Science Foundation of China and the Civil Aviation Administration of China (U1533110), The Special Funding from the Civil Aviation University of China for the Basic Research Business Fee Project of Central Universities (3122018D011), The Natural Science Foundation of Tianjin (19JCQNJC01000)


摘要
摘要:近些年来,世界各国越来越重视风力发电的发展。风电场的存在可能对航管监视雷达性能产生负面影响,因此风电场杂波抑制技术的研究对于提升航管监视雷达工作性能、保障空中交通安全具有重大意义。形态成分分析(MCA)算法根据信号稀疏特征的不同应用于风电场杂波抑制时,计算量较低且性能较好。但是针对实际雷达参数中相参处理间隔(CPI)较短造成的谱分辨率降低及信号特征不明显时,MCA算法的杂波抑制性能受到影响,因此选择将稀疏重构算法与MCA算法结合用于短CPI情况下的风电场杂波抑制。该文认为短CPI接收回波数据为较长CPI雷达回波数据基础上发生尾部数据缺省,继而利用稀疏重构算法对缺省数据进行恢复,再利用MCA算法抑制风电场杂波。实验结果验证了该方法的有效性。
关键词:风电场/
形态成分分析/
稀疏重构/
杂波抑制
Abstract:In recent years, countries around the world have paid more and more attention to the development of wind power. The existence of wind farms may have a negative impact on the performance of air traffic control surveillance radars. Therefore, the research on the clutter suppression technology of wind farms is of great significance to improve the work performance of air traffic control surveillance radars and ensure the safety of air traffic. When the Morphological Component Analysis(MCA)algorithm is applied to the wind farm clutter suppression based on the difference of sparse characteristics for the signals, the calculation burden is lower and the performance is better. However, the clutter suppression performance of the MCA algorithm is affected when the spectral resolution is reduced due to the short Coherent Processing Interval(CPI)and the signal characteristics are not obvious. Therefore, the sparse reconstruction algorithm and the MCA algorithm are combined to suppress the clutter in the wind farm with a small number of coherent pulses. It is considered that the short CPI received echo data is the default of tail data on the basis of the longer CPI radar echo data, and then the sparse reconstruction algorithm is used to recover the default data, and the MCA algorithm is used to suppress wind farm clutter. The experimental results verify the effectiveness of the proposed method.
Key words:Wind farm/
Morphological Component Analysis(MCA)/
Sparse reconstruction/
Clutter suppression



PDF全文下载地址:

https://jeit.ac.cn/article/exportPdf?id=f14eb2c9-31a4-4cf4-8250-6d25c42b0028
相关话题/数据 信号 中国民航大学 计算 中央