Abstract

Target threat assessment technology is one of the key technologies of intelligent tactical aid decision-making system. Aiming at the problem that traditional beyond-visual-range air combat threat assessment algorithms are susceptible to complex factors, there are correlations between assessment indicators, and accurate and objective assessment results cannot be obtained. A target threat assessment algorithm based on linear discriminant analysis (LDA) and improved glowworm swarm optimization (IGSO) algorithm to optimize extreme learning machine (ELM) is proposed in this paper. Firstly, the linear discriminant analysis method is used to classify the threat assessment indicators, eliminate the correlation between the assessment indicators, and achieve dimensionality reduction of the assessment indicators. Secondly, a prediction model with multiple parallel extreme learning machines as the core is constructed, and the input weights and thresholds of extreme learning machines are optimized by the improved glowworm swarm optimization algorithm, and the weighted integration is carried out according to the training level of the kernel. Then, the threat assessment index functions of angle, speed, distance, altitude, and air combat capability are constructed, respectively, and the sample data of air combat target threat assessment are obtained by combining the structure entropy weight method. Finally, the air combat data is selected from the air combat maneuvering instrument (ACMI), and the accuracy and real-time performance of the LDA-IGSO-ELM algorithm are verified through simulation. The results show that the algorithm can quickly and accurately assess target threats.

Highlights

  • With the continuous development of airborne radar technology and the increasing lethality of air-to-air missiles, the beyond-visual-range air combat has gradually developed into one of the main combat methods of modern air combat [1]

  • Aiming at the above shortcomings, an air combat target threat assessment model based on the linear discriminant analysis method and improved glowworm swarm optimization algorithm to optimize extreme learning machine combined with threat index method is constructed in this paper

  • From the linear discriminant analysis (LDA)-improved glowworm swarm optimization (IGSO)-extreme learning machine (ELM) target threat assessment flow chart, it can be seen that the threat assessment model constructed in this paper can be used to train and evaluate midrange and long-range beyond-visual-range air combat in groups based on the characteristics of modern beyondvisual-range air combat

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Summary

Introduction

With the continuous development of airborne radar technology and the increasing lethality of air-to-air missiles, the beyond-visual-range air combat has gradually developed into one of the main combat methods of modern air combat [1]. In order to improve the accuracy and real-time performance of target threat assessment, an air combat target threat assessment model based on improved glowworm swarm optimization algorithm to optimize ELM neural network is proposed in this paper. The main contributions of this paper are as follows: (1) linear discriminant analysis can effectively reduce and classify the training sample data, improve the quality of data, and eliminate the correlation between parameters; (2) an ELM neural network using IGSO optimizes the weights and thresholds between the input layer and the hidden layer; results are presented to demonstrate its performance, effectiveness, and faster adaptation capability and accuracy; and (3) the hypersphere multitask learning algorithm is used to carry out the weighted integration of the independent parallel training ELM neural network, and the experiment shows that the method can effectively improve the prediction speed and accuracy of IGSO-ELM.

Linear Discriminant Analysis Method
Improve Glowworm Swarm Optimization Algorithm
ELM Neural Network
Target Threat Assessment Model Based on IGSO-ELM
Objective weighting method weighting method
Experimental Simulation and Verification
Conclusions
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