Browsing by Author "Catherall, Aled"
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Item Open Access Multistatic dual-channel detection of drones: effects of PNT errors(IEEE, 2023-12-28) Griffin, Benjamin; Balleri, Alessio; Catherall, AledA radar network solution to detect drones is presented that consists of low-cost low-size dual-channel moving receivers, which can be deployed on UASs and operate within the coverage of an existing cooperative or non-cooperative monostatic staring radar. The receivers exploit the use of a dual-channel design and therefore use a reference and a surveillance channel to operate coherently without the requirement of a shared synchronisation reference signal between the network nodes, which is one of the key limitations of other traditional multistatic radar network solutions. Drone detection and parameter estimation is achieved by fusing the information collected at the network receivers and rely on accurate Position, Navigation and Timing (PNT) information. In this paper, we investigate the effects of PNT errors on estimation performance for such a radar network.Item Open Access Statistical analysis of in-flight drone signatures(Institution of Engineering and Technology (IET), 2022-08-16) Markow, John; Balleri, Alessio; Catherall, AledDrone-monitoring radars typically integrate many pulses in order to improve signal to noise ratio and enable high detection performance. Over the course of this coherent processing interval (CPI), many components of the drone signature change and the signature's amplitude and Doppler modulations may hinder coherent integration performance, even in the absence of range-Doppler cell migrations. A statistical characterisation of these fluctuations aides radar designers in selecting optimal CPI lengths. This paper presents a statistical analysis of experimental data of nine flying drones, collected with a frequency modulated continuous wave Ku-band radar, and examines the statistical features of the amplitude fluctuations of the drone body and blades as well as the signature decorrelation time. The method of moments is used to estimate the probability density function parameters of different drone spectral components with the aim of informing the development of improved theory for predicting drone signatures and ultimately increasing detection performance. Results show that, on average, the Weibull distribution provided the best mean square error fit to the data for most drone spectral components and drone types, with the Rayleigh distribution being the next best match. These results were further corroborated by a study of detection performance for a fluctuating target. Whilst decorrelation times of the various signatures varied significantly, even for the same drone, results show that an approximate inverse relationship between drone spectral component bandwidth and decorrelation time held, with individual spectral lines decorrelating after tens to hundreds of msec.