Research on the evaluation method of cooperative jamming effectiveness based on IPSO-ELM

Cooperative jamming effectiveness evaluation is a key component in completing the cooperative jamming OODA loop. For the problem of evaluating the effectiveness of cooperative jamming to group network radar by formation aircraft, a cooperative jamming effectiveness evaluation method based on Improve...

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Main Authors: A. Tianjian Yang, B. Xing Wang, C. Siyi Cheng, D. You Chen, E. Xi Zhang
Format: Article
Language:English
Published: AIP Publishing LLC 2025-01-01
Series:AIP Advances
Online Access:http://dx.doi.org/10.1063/5.0237796
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author A. Tianjian Yang
B. Xing Wang
C. Siyi Cheng
D. You Chen
E. Xi Zhang
author_facet A. Tianjian Yang
B. Xing Wang
C. Siyi Cheng
D. You Chen
E. Xi Zhang
author_sort A. Tianjian Yang
collection DOAJ
description Cooperative jamming effectiveness evaluation is a key component in completing the cooperative jamming OODA loop. For the problem of evaluating the effectiveness of cooperative jamming to group network radar by formation aircraft, a cooperative jamming effectiveness evaluation method based on Improved Particle Swarm Optimization–Extreme Learning Machine (IPSO-ELM) is proposed. First, based on the working parameters of the group network radar and the information fusion rules, the cooperative jamming effectiveness evaluation function is established. On this basis, the cooperative jamming decision schemes and their corresponding cooperative jamming effectiveness values are solved at different locations in the target space, and the results are detected as outliers using box plots, thus constructing sample data for cooperative jamming effectiveness evaluation. Subsequently, a neural network based on the extreme learning machine methodology is developed, with its initial weights and biases fine-tuned through an improved particle swarm optimization, which is termed IPSO-ELM. This optimization aims to boost the model’s predictive precision. Finally, the IPSO-ELM algorithm is subjected to rigorous assessment via simulation, confirming its performance of accuracy and efficiency. From the simulation results, the advanced performance of the IPSO-ELM algorithm, specifically in the context of assessing the effectiveness of cooperative jamming, is verified.
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institution Kabale University
issn 2158-3226
language English
publishDate 2025-01-01
publisher AIP Publishing LLC
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series AIP Advances
spelling doaj-art-82552f936e5148898b787b787d35aca32025-02-03T16:40:42ZengAIP Publishing LLCAIP Advances2158-32262025-01-01151015303015303-1110.1063/5.0237796Research on the evaluation method of cooperative jamming effectiveness based on IPSO-ELMA. Tianjian Yang0B. Xing Wang1C. Siyi Cheng2D. You Chen3E. Xi Zhang4Aviation Engineering School, Air Force Engineering University, Xi’an 710038, ChinaAviation Engineering School, Air Force Engineering University, Xi’an 710038, ChinaAviation Engineering School, Air Force Engineering University, Xi’an 710038, ChinaAviation Engineering School, Air Force Engineering University, Xi’an 710038, ChinaAviation Engineering School, Air Force Engineering University, Xi’an 710038, ChinaCooperative jamming effectiveness evaluation is a key component in completing the cooperative jamming OODA loop. For the problem of evaluating the effectiveness of cooperative jamming to group network radar by formation aircraft, a cooperative jamming effectiveness evaluation method based on Improved Particle Swarm Optimization–Extreme Learning Machine (IPSO-ELM) is proposed. First, based on the working parameters of the group network radar and the information fusion rules, the cooperative jamming effectiveness evaluation function is established. On this basis, the cooperative jamming decision schemes and their corresponding cooperative jamming effectiveness values are solved at different locations in the target space, and the results are detected as outliers using box plots, thus constructing sample data for cooperative jamming effectiveness evaluation. Subsequently, a neural network based on the extreme learning machine methodology is developed, with its initial weights and biases fine-tuned through an improved particle swarm optimization, which is termed IPSO-ELM. This optimization aims to boost the model’s predictive precision. Finally, the IPSO-ELM algorithm is subjected to rigorous assessment via simulation, confirming its performance of accuracy and efficiency. From the simulation results, the advanced performance of the IPSO-ELM algorithm, specifically in the context of assessing the effectiveness of cooperative jamming, is verified.http://dx.doi.org/10.1063/5.0237796
spellingShingle A. Tianjian Yang
B. Xing Wang
C. Siyi Cheng
D. You Chen
E. Xi Zhang
Research on the evaluation method of cooperative jamming effectiveness based on IPSO-ELM
AIP Advances
title Research on the evaluation method of cooperative jamming effectiveness based on IPSO-ELM
title_full Research on the evaluation method of cooperative jamming effectiveness based on IPSO-ELM
title_fullStr Research on the evaluation method of cooperative jamming effectiveness based on IPSO-ELM
title_full_unstemmed Research on the evaluation method of cooperative jamming effectiveness based on IPSO-ELM
title_short Research on the evaluation method of cooperative jamming effectiveness based on IPSO-ELM
title_sort research on the evaluation method of cooperative jamming effectiveness based on ipso elm
url http://dx.doi.org/10.1063/5.0237796
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