2023
DOI: 10.3390/app13085145
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A Lightweight Deep Learning Model for Automatic Modulation Classification Using Residual Learning and Squeeze–Excitation Blocks

Abstract: Automatic modulation classification (AMC) is a vital process in wireless communication systems that is fundamentally a classification problem. It is employed to automatically determine the type of modulation of a received signal. Deep learning (DL) methods have gained popularity in addressing the problem of modulation classification, as they automatically learn the features without needing technical expertise. However, their efficacy depends on the complexity of the algorithm, which can be characterized by the… Show more

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Cited by 5 publications
(2 citation statements)
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“…This process facilitates the autoencoder in discovering a robust representation of the input signal, thereby enabling the identification of optimal encoding and decoding strategies for stochastic channels. Notably, the autoencoder can achieve a solution that surpasses the performance of existing modulation and encoding methods [160,161]. Moreover, the autoencoder approach operates without making any assumptions about the channel and, in theory, can comprehend the dynamics of the PLC channel without relying on its current manifestation as a linear periodic timevariable system [67,160].…”
Section: Aa Machine Learning-based Channel Estimation Methods For Veh...mentioning
confidence: 99%
“…This process facilitates the autoencoder in discovering a robust representation of the input signal, thereby enabling the identification of optimal encoding and decoding strategies for stochastic channels. Notably, the autoencoder can achieve a solution that surpasses the performance of existing modulation and encoding methods [160,161]. Moreover, the autoencoder approach operates without making any assumptions about the channel and, in theory, can comprehend the dynamics of the PLC channel without relying on its current manifestation as a linear periodic timevariable system [67,160].…”
Section: Aa Machine Learning-based Channel Estimation Methods For Veh...mentioning
confidence: 99%
“…One way to apply RL for THz in ns-3 is to optimize the parameters of a THz communication system, such as transmit power, modulation [186], and beamforming, based on the current channel conditions. For example, the RL algorithm can learn from past interactions with the simulated environment and adjust the system parameters to maximize a particular performance metric, such as data rate or capacity.…”
Section: Reinforcement Learningmentioning
confidence: 99%