Musa Surajo Alhaji, Raja Abdullah Raja Syamsul Azmir, Sali Aduwati, Ismail Alyani, Rashid Nur Emileen Abdul
Wireless and Photonics Networks (WIPNET), Department of Computer and Communication System Engineering University Putra Malaysia (UPM), Serdang 43400, Selangor Darul Ehsan, Malaysia.
Computer Engineering Department, Institute of Information Technology Kazaure, Kazaure 5002, Jigawa, Nigeria.
Sensors (Basel). 2019 Jul 29;19(15):3332. doi: 10.3390/s19153332.
The increase in drone misuse by civilian apart from military applications is alarming and need to be addressed. This drone is characterized as a low altitude, slow speed, and small radar cross-section (RCS) (LSS) target and is considered difficult to be detected and classified among other biological targets, such as insects and birds existing in the same surveillance volume. Although several attempts reported the successful drone detection on radio frequency-based (RF), thermal, acoustic, video imaging, and other non-technical methods, however, there are also many limitations. Thus, this paper investigated a micro-Doppler analysis from drone rotating blades for detection in a special Forward Scattering Radar (FSR) geometry. The paper leveraged the identified benefits of FSR mode over conventional radars, such as improved radar cross-section (RCS) value irrespective of radar absorbing material (RAM), direct signal perturbation, and high resolutions. To prove the concept, a received signal model for micro-Doppler analysis, a simulation work, and experimental validation are elaborated and explained in the paper. Two rotating blades aspect angle scenarios were considered, which are (i) when drone makes a turn, the blade cross-sectional area faces the receiver and (ii) when drone maneuvers normally, the cross-sectional blade faces up. The FSR system successfully detected a commercial drone and extracted the micro features of a rotating blade. It further verified the feasibility of using a parabolic dish antenna as a receiver in FSR geometry; this marked an appreciable achievement towards the FSR system performance, which in future could be implemented as either active or passive FSR system.
除军事应用外,民用无人机滥用情况的增加令人担忧,需要加以解决。这种无人机被视为低空、低速且雷达散射截面积(RCS)小的目标(LSS),在与存在于同一监测区域的其他生物目标(如昆虫和鸟类)相比时,被认为难以检测和分类。尽管有几次尝试报告了基于射频(RF)、热、声学、视频成像及其他非技术方法成功检测无人机的情况,但仍存在许多局限性。因此,本文研究了在特殊的前向散射雷达(FSR)几何结构中,通过无人机旋转叶片进行微多普勒分析以实现检测的方法。本文利用了FSR模式相对于传统雷达所具有的优势,如无论有无雷达吸波材料(RAM),其雷达散射截面积(RCS)值均有所提高、直接信号扰动以及高分辨率。为验证这一概念,本文详细阐述并解释了用于微多普勒分析的接收信号模型、模拟工作及实验验证。考虑了两种旋转叶片视角场景,即(i)无人机转弯时,叶片横截面积朝向接收器;(ii)无人机正常飞行时,叶片横截面朝上。FSR系统成功检测到一架商用无人机,并提取了旋转叶片的微特征。它进一步验证了在FSR几何结构中使用抛物面天线作为接收器的可行性;这标志着FSR系统性能取得了显著成就,未来可作为有源或无源FSR系统加以应用。