Research on Location Method of Distributed Communicational Radar

Tan Zhiguo, Shi Longfei, Yang Xiaofan, Teng Shuhua
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Abstract

To solve the transceiver separation system’s synchronization, the requirement of additional communication links, and the radio pulse chasing problems of the bistatic radar, this paper proposes a method of locating stealth targets by distributed communicational radar. Through the information-embedded waveform design, the system uses the wide-beam detection method without additional communication links, which effectively solves the beam chasing problem of the traditional bistatic radar, greatly shortens the target detection and location time and increases the probability of target acquisition. In the paper, the problems of the existing multi-static radar are analyzed, the distributed communication radar technology is introduced, and the target detection by wide radar beams is discussed. We give the basic detecting unit for target detection and location in wide beam mode. On this basis, the detection area and location performance of the basic detection unit are analyzed. The simulation experiment verifies the feasibility and effectiveness of the scheme.
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分布式通信雷达定位方法研究
针对收发分离系统的同步性、附加通信链路的需求以及双基地雷达的无线电脉冲跟踪问题,提出了一种利用分布式通信雷达定位隐身目标的方法。该系统通过信息嵌入式波形设计,采用无附加通信链路的宽波束探测方式,有效解决了传统双基地雷达的波束跟踪问题,大大缩短了目标探测和定位时间,提高了目标捕获概率。分析了现有多静态雷达存在的问题,介绍了分布式通信雷达技术,讨论了宽波束探测目标的方法。给出了在宽波束模式下进行目标探测和定位的基本检测单元。在此基础上,分析了基本探测单元的探测面积和定位性能。仿真实验验证了该方案的可行性和有效性。
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