This research aims to analyze the effects of different parameter estimation on the recognition performance of satellite modulation signals based on deep learning (DL) under low signal to noise ratio (SNR) or channel non-ideal conditions. In this study, first, the common characteristics of broadband satellite modulation signal and the commonly used signal feature extraction algorithm are introduced. Then, the broadband satellite modulation signal pattern recognition model based on deformable convolutional neural networks (DCNN) is built, and the broadband satellite signal simulation is conducted based on Matlab software. Next, the signal characteristics of binary phase shift keying (BPSK), quadrature phase shift keying (QPSK), 8 phase shift ...
Traditional denoising algorithms are easy to lose signal details, resulting in low recognition accur...
In wireless communications receiver plays a main role to recognize modulation techniques which were ...
In this work, the generation of a deep learning model capable of predicting about six types of modu...
This paper implements a deep learning-based modulation pattern recognition algorithm for communicati...
The recognition of modulation schemes for communication signals is an important part of communicatio...
National Aeronautics and Space Administration (NASA)'s future communication architecture is evaluati...
Recently, automatic modulation recognition has been an important research topic in wireless communic...
Since the emergence of 5G technology, the wireless communication system has had a huge data throughp...
A feature-based automatic modulation classification (FB-AMC) algorithm has been widely investigated ...
Automatic modulation recognition is a key technology in non-collaborative communication. However, it...
Automatic modulation classification (AMC), which aims to blindly identify the modulation type of an ...
The satellite-to-ground communication system is a significant part of future space communication net...
The ability to differentiate between different radio signals is important when using communication...
Deep learning architecture has been attracting increasing attention due to the successful applicatio...
With the development of artificial intelligence technology, deep learning has been applied to automa...
Traditional denoising algorithms are easy to lose signal details, resulting in low recognition accur...
In wireless communications receiver plays a main role to recognize modulation techniques which were ...
In this work, the generation of a deep learning model capable of predicting about six types of modu...
This paper implements a deep learning-based modulation pattern recognition algorithm for communicati...
The recognition of modulation schemes for communication signals is an important part of communicatio...
National Aeronautics and Space Administration (NASA)'s future communication architecture is evaluati...
Recently, automatic modulation recognition has been an important research topic in wireless communic...
Since the emergence of 5G technology, the wireless communication system has had a huge data throughp...
A feature-based automatic modulation classification (FB-AMC) algorithm has been widely investigated ...
Automatic modulation recognition is a key technology in non-collaborative communication. However, it...
Automatic modulation classification (AMC), which aims to blindly identify the modulation type of an ...
The satellite-to-ground communication system is a significant part of future space communication net...
The ability to differentiate between different radio signals is important when using communication...
Deep learning architecture has been attracting increasing attention due to the successful applicatio...
With the development of artificial intelligence technology, deep learning has been applied to automa...
Traditional denoising algorithms are easy to lose signal details, resulting in low recognition accur...
In wireless communications receiver plays a main role to recognize modulation techniques which were ...
In this work, the generation of a deep learning model capable of predicting about six types of modu...