Advanced Features Generation Algorithm for MPSK and MQAM Classification in Flat Fading Channel

I. Kadoun, H. Khaleghi Bizaki

Advanced Features Generation Algorithm for MPSK and MQAM Classification in Flat Fading Channel

Číslo: 1/2022
Periodikum: Radioengineering Journal
DOI: 10.13164/re.2022.0127

Klíčová slova: Automatic modulation classification, Feature Selection Algorithms (FSA), higher-order cumulants, Mahalanobis distance (MD)

Pro získání musíte mít účet v Citace PRO.

Přečíst po přihlášení

Anotace: The Automatic Modulation Classification (AMC) performance depends on the selected features. Conventionally, Higher-Order Cumulants (HOCs) are the well-known features due to their discrimination ability under different channel conditions. HOCs have good performance under the Additive white Gaussian noise (AWGN) channel, but their performance degrades under fading channel. This paper proposes an Advanced Features Generation Algorithm (AFGA) that generates mathematical forms of new features based on the maximum discrimination between the digital modulation types to overcome this performance limitation. These features have similar complexity to HOCs but better performance accuracy. The simulation results show that the proposed AFGA improves the performance accuracy up to 4.5% for a Signal-to-noise ratio (SNR) value of 10 dB under fading channel conditions with respect to conventional methods.