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Mutation grey wolf elite PSO balanced XGBoost for radar emitter individual identification based on measured signals

机译:突变灰狼精英PSO平衡XGBoost用于基于测量信号的雷达发射器个体识别

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Radar emitter individual identification plays an increasingly important role in electronic support measures (ESM) system. To cope with the problems of low accuracy and poor stability of radar emitter individual identification, a novel method, named MGWEPSO-BXGBoost (Mutation Grey Wolf Elite Particle Swarm Optimization Balanced eXtreme Gradient Boosting), is proposed. In consideration of the fact that the number of radar signals measured from the real environment is usually imbalanced, a novel balance mechanism is designed for XGBoost. MGWEPSO is further proposed to simultaneously optimize the prime parameters, whose values and combinations have a great influence on the identification results, of BXGBoost to improve the identification accuracy. To overcome the local optimal solution problem, leadership mechanism in wolves, elite rule and the idea of mutation are adopted, which is also conducive to improving the ability to find the global optimal solution. Furthermore, experiments based on signals measured in the real environment are carried out to demonstrate the effectiveness of the proposed method. The results verify that MGWEPSO-BXGBoost has high accuracy and strong stability even when the sample size of each individual is limited and imbalanced. (C) 2020 Elsevier Ltd. All rights reserved.
机译:雷达发射器个体识别在电子支持措施(ESM)系统中起着越来越重要的作用。为了应对低精度和雷达发射器稳定性的问题,提出了一种名为MgWepso-BXGBXGBOST的新方法(突变灰狼精英粒子群群优化平衡的极端梯度升压)。考虑到从真实环境测量的雷达信号的数量通常不平衡,设计了一种用于XGBoost的新颖平衡机制。进一步提出MgWepso同时优化素数,其值和组合对BXGBoost的识别结果产生很大影响,以提高识别准确性。为了克服当地的最佳解决问题问题,采用狼,精英规则和突变思想的领导机制,这也有利于提高找到全球最佳解决方案的能力。此外,基于实际环境中测量的信号进行实验以证明所提出的方法的有效性。结果验证了MgWepso-BXGBoost的精度高,稳定性强,即使每个单独的样本大小有限,也是有限的。 (c)2020 elestvier有限公司保留所有权利。

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