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Drone Detection with Chirp‐Pulse Radar Based on Target Fluctuation Models

机译:基于目标涨落模型的Chi脉冲雷达无人机检测

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This paper presents a pulse radar system to detect drones based on a target fluctuation model, specifically the Swerling target model. Because drones are small atypical objects and are mainly composed of non‐conducting materials, their radar cross‐section value is low and fluctuating. Therefore, determining the target fluctuation model and applying a proper integration method are important. The proposed system is herein experimentally verified and the results are discussed. A prototype design of the pulse radar system is based on radar equations. It adopts three different pulse modes and a coherent pulse integration to ensure a high signal‐to‐noise ratio. Outdoor measurements are performed with a prototype radar system to detect Doppler frequencies from both the drone frame and blades. The results indicate that the drone frame and blades are detected within an instrumental maximum range. Additionally, the results show that the drone's frame and blades are close to the Swerling 3 and 4 target models, respectively. By the analysis of the Swerling target models, proper integration methods for detecting drones are verified and can thus contribute to increasing in detectability.
机译:本文提出了一种基于目标波动模型(特别是Swerling目标模型)的无人机探测脉冲雷达系统。由于无人机是非典型的小型物体,并且主要由非导电材料组成,因此它们的雷达横截面值较低且会波动。因此,确定目标波动模型并应用适当的积分方法非常重要。本文对提出的系统进行了实验验证,并讨论了结果。脉冲雷达系统的原型设计基于雷达方程。它采用三种不同的脉冲模式和相干脉冲积分,以确保较高的信噪比。使用原型雷达系统执行户外测量,以检测无人机机架和叶片的多普勒频率。结果表明,在仪器最大范围内检测到了无人机框架和叶片。此外,结果表明,无人机的框架和叶片分别接近Swerling 3和4目标模型。通过对Swerling目标模型的分析,验证了用于检测无人机的正确集成方法,从而有助于提高可检测性。

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