Radar Signal Sorting Based on Adaptive SOFM and Coyote optimization

In modern electronic warfare, the radar signal sorting method plays an important role in the electronic support measurement system. However, most of the traditional methods based on unsupervised clustering require prior information, such as the initial category centers and numbers, which has limitat...

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Vydáno v:2022 7th International Conference on Signal and Image Processing (ICSIP) s. 157 - 161
Hlavní autoři: Cui, Zongding, Fu, Xiongjun, Lang, Ping, Dong, Jian, Wu, Fei, Gao, Haodong
Médium: Konferenční příspěvek
Jazyk:angličtina
Vydáno: IEEE 20.07.2022
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Abstract In modern electronic warfare, the radar signal sorting method plays an important role in the electronic support measurement system. However, most of the traditional methods based on unsupervised clustering require prior information, such as the initial category centers and numbers, which has limitations in practical applications. To solve the problems mentioned above, a two-stage radar signal sorting method is proposed, which combines an improved self-organizing feature map (SOFM) network and coyote optimization algorithm, (i.e., SOCOA). In the first stage, the improved SOFM network is used to roughly sort the radar signals, and obtains the approximate number of categories and cluster center position of the input data. In the second stage, the coyote optimization algorithm is used to finely optimize the sorting process to obtain optimal results with the prior knowledge of the first stage. Experimental results show that our proposed method can improve the sorting performance without any prior information.
AbstractList In modern electronic warfare, the radar signal sorting method plays an important role in the electronic support measurement system. However, most of the traditional methods based on unsupervised clustering require prior information, such as the initial category centers and numbers, which has limitations in practical applications. To solve the problems mentioned above, a two-stage radar signal sorting method is proposed, which combines an improved self-organizing feature map (SOFM) network and coyote optimization algorithm, (i.e., SOCOA). In the first stage, the improved SOFM network is used to roughly sort the radar signals, and obtains the approximate number of categories and cluster center position of the input data. In the second stage, the coyote optimization algorithm is used to finely optimize the sorting process to obtain optimal results with the prior knowledge of the first stage. Experimental results show that our proposed method can improve the sorting performance without any prior information.
Author Lang, Ping
Dong, Jian
Wu, Fei
Fu, Xiongjun
Cui, Zongding
Gao, Haodong
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  givenname: Haodong
  surname: Gao
  fullname: Gao, Haodong
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  organization: School of Integrated Circuits and Electronics, Beijing Institute of Technology,Beijing,China
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Snippet In modern electronic warfare, the radar signal sorting method plays an important role in the electronic support measurement system. However, most of the...
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StartPage 157
SubjectTerms Clustering algorithms
coyote optimization algorithm clustering
Image processing
Neurons
Radar
Radar imaging
Radar measurements
self-organizing feature map
Self-organizing feature maps
signal sorting
Title Radar Signal Sorting Based on Adaptive SOFM and Coyote optimization
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