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基于副瓣注入的多方位目标模拟方法研究

Multiple Target Simulation Method Based on Sidelobe Injection
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摘要 提出了一种解决雷达应答式射频目标模拟器多方位、多目标模拟的方法——副瓣注入方法,分析了该方法的基本原理和实现多目标模拟的基本条件,对影响模拟目标的数量和多目标之间的夹角进行了分析;依据雷达方程,在雷达指标一定的前提下,对目标模拟器的主要参数进行了分析设计,对设计结果进行了仿真计算和分析。 A solution to multi-azimuth and multi-target simulation for radar responder RF target s imulator—sidelobe injection method—is put forward.The basic principle of the method and the basic c onditions of multi-target simulation are analyzed.The number of simulated targets and the angle between multiple targets are also analyzed.Based on radar equation,the main parameters of the target simulator are analyzed and designed under the given radar specifications.The design results are calculated,simulated,and analyzed.
作者 李兴民 张良
机构地区 中国人民解放军
出处 《雷达科学与技术》 北大核心 2017年第5期500-504,共5页 Radar Science and Technology
关键词 雷达 目标模拟 副瓣 动态范围 灵敏度 增益 radar objective simulating sidelobe dynamic range sensitivity gain
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