Wavelet Analysis Using Hilbert Transform and Matching Algorithm for Radar Receiver System

Radar receivers are integral in signal generation, signal detection, and signal tracking. An analysis of the radar's credibility can be performed by noting the accuracy of the detected signals. This paper proposes a system capable of creating random signals, identifying the signals, and displaying the pulse descriptor words (PDWs). The design of this system can be achieved by using techniques such as Wavelet decomposition, Hilbert transform, filtering, and fast Fourier transformation (FFT). In addition to these techniques, two deterministic deinterleaving methods will be compared to see how each benefit when used in conjunction with the Hilbert transform and Wavelet decomposition. These methods include the pulse frequency and amplitude matching methods to find which method works best with grouped signals.

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