Design of radar pulse deinterleaving scheme using deep learning
As an important part of modern electronic countermeasure technology, radar reconnaissance is the basis of electronic jamming and electronic defence. Radar signal deinterleaving, as a key step of radar reconnaissance, is the premise and guarantee of information processing and analysis of reconnais...
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Format: | Thesis-Master by Coursework |
Language: | English |
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Nanyang Technological University
2024
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Online Access: | https://hdl.handle.net/10356/173767 |
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Institution: | Nanyang Technological University |
Language: | English |
Summary: | As an important part of modern electronic countermeasure technology, radar reconnaissance
is the basis of electronic jamming and electronic defence. Radar
signal deinterleaving, as a key step of radar reconnaissance, is the premise and
guarantee of information processing and analysis of reconnaissance system. With
the progress of technology, the electromagnetic environment in which the reconnaissance
system is located is becoming more and more complex, how to effectively
and efficiently sort radar signals in the interference and noise has become
a matter of great concern.
This dissertation investigates the traditional signal deinterleaving method and
deep learning algorithm, and draws on the processing methods of image and
speech in deep learning, which reduces the number of parameters to be set
in the traditional signal deinterleaving, improves the precision of signal deinterleaving,
and makes the process of signal deinterleaving more automated and
intelligent. In this dissertation, the Faster RCNN network is applied to signal
deinterleaving, and the pulse width (PW) and radio frequency (RF) parameters
of the radiation source contained in the received signals are estimated by simulating
the pulse stream of the receiver for training, so as to achieve the deinterleaving
of radar signals. The main work of this dissertation is as follows.
This dissertation firstly studies the traditional radar signal deinterleaving algorithm,
and analyses the histogram method in the main signal deinterleaving,
discusses the deinterleaving of two signals intertwined, and compares and analyses
the performance of the cumulative difference histogram (CDIF) algorithm
and the sequence difference histogram (SDIF) algorithm on the deinterleaving of multiple signals intertwined.
This dissertation introduces some ideas of clustering algorithms that have been
applied to signal deinterleaving and then introduces some basic techniques of
Convolutional Neural Networks, with a focus on CNN networks, and further
introduces the basic structure of the Faster RCNN and its suitability in signal
deinterleaving.
Aiming at the shortcomings of the traditional signal deinterleaving and predeinterleaving
clustering algorithm, this dissertation proposes a pre-deinterleaving
algorithm based on the FasterRCNN network, which detects the PW and RF
parameters of the radiation sources in the received pulses through the network.
The algorithm achieves good results in both matching known radar pulses from
the radar source library and deinterleaving unknown radars, and achieves the
purpose of blind source deinterleaving. |
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