May 23, 2025
 Home  中文
Air & Space Defense  2020, Vol. 3 Issue (2): 59-64    DOI:
Integrated Electronic Countermeasures and Information Technology Current Issue | Archive | Adv Search |
Selection of SVM Adaptive Interference Mode Based on Genetic Algorithm 
DAI Shaohuai, WANG Lei, LI Min, YU Ke, LUO Chen
Shanghai Electro-Mechanical Engineering Institute, Shanghai 201109, China
Download: PDF (4703 KB)   (1 KB) 
Export: BibTeX | EndNote (RIS)       Supporting Info
Guide   
Abstract  
In order to solve the problem of low real-time and low matching accuracy of interference mode in adaptive interference decision making, this paper presents a SVM based on IGA for interference mode adaptive selection. The penalty parameters and kernel function parameters of SVM were optimized by IGA to enhance the learning ability and generalization ability of the model and improve the real-time and accuracy of interference decision making. IGA-SVM is compared with SVM based on GS method in terms of the accuracy and real-time of interference decision. The simulation results show that, in adaptive interference decision making, the real-time performance and interference mode matching accuracy of IGA-SVM are improved compared to traditional GS-SVM.
Received: 09 November 2019      Published: 21 June 2020
ZTFLH:  TN974  
Fund: 
Service
E-mail this article
Add to my bookshelf
Add to citation manager
E-mail Alert
RSS
Articles by authors
Cite this article:   
URL:  
https://www.qk.sjtu.edu.cn/ktfy/EN/     OR     https://www.qk.sjtu.edu.cn/ktfy/EN/Y2020/V3/I2/59
Copyright © 2015 Air & Space Defense, All Rights Reserved.
Powered by Beijing Magtech Co. Ltd