Improved Salp Swarm Optimization Algorithm: Application in Feature Weighting for Blind Modulation Identification

Archive ouverte : Article de revue

Ben Chaabane, Sarra | Belazi, Akram | Kharbech, Sofiane | Bouallegue, Ammar | Clavier, Laurent

Edité par HAL CCSD ; MDPI

International audience. In modulation identification issues, like in any other classification problem, the performance of the classification task is significantly impacted by the feature characteristics. Feature weighting boosts the performance of machine learning algorithms, particularly the class of instance-based learning algorithms such as the Minimum Distance (MD) classifier, in which the distance measure is highly sensitive to the magnitude of features. In this paper, we propose an improved version of the Salp Swarm optimization Algorithm (SSA), called ISSA, that will be applied to optimize feature weights for an MD classifier. The aim is to improve the performance of a blind digital modulation detection approach in the context of multiple-antenna systems. The improvements introduced to SSA mainly rely on the opposition-based learning technique. Computer simulations show that the ISSA outperforms the SSA as well as the algorithms that derive from it. The ISSA also exhibits the best performance once it is applied for feature weighting in the above context. . In modulation identification issues, like in any other classification problem, the performance of the classification task is significantly impacted by the feature characteristics. Feature weighting boosts the performance of machine learning algorithms, particularly the class of instance-based learning algorithms such as the Minimum Distance (MD) classifier, in which the distance measure is highly sensitive to the magnitude of features. In this paper, we propose an improved version of the Salp Swarm optimization Algorithm (SSA), called ISSA, that will be applied to optimize feature weights for an MD classifier. The aim is to improve the performance of a blind digital modulation detection approach in the context of multiple-antenna systems. The improvements introduced to SSA mainly rely on the opposition-based learning technique. Computer simulations show that the ISSA outperforms the SSA as well as the algorithms that derive from it. The ISSA also exhibits the best performance once it is applied for feature weighting in the above context.

Consulter en ligne

Suggestions

Du même auteur

EME-Net: A U-net-based Indoor EMF Exposure Map Reconstruction Method

Archive ouverte: Communication dans un congrès

Mallik, Mohammed | 2022-03-27

International audience. In wireless communication systems, in order to respond to the perception of risks related to electromagnetic field exposure and allocate radio resources, the estimation of the received power ...

Deep Learning-based Signal Detection for Uplink in LoRa-like Networks

Archive ouverte: Communication dans un congrès

Tesfay, Angesom Ataklity | 2021-09-13

International audience. The increasing number of devices together with uncoordinated transmissions result in a major challenge of scalability in the Internet of things. This paper deals with signal detection in the ...

Deep Learning-based receiver for Uplink in LoRa Networks with Sigfox Interf...

Archive ouverte: Communication dans un congrès

TESFAY, Angesom Ataklity | 2022-10-10

International audience. The Internet of Things faces a significant scaling issue due to the rapid growth of the number of devices and asynchronous communications. Different technologies in the license-free industria...

Du même sujet

Pareto-based branch and bound algorithm for multiobjective optimization of ...

Archive ouverte: Article de revue

Brisset, Stephane | 2018-03-05

International audience. The design of electromagnetic devices is mainly expressed in the literature in term of problem with continuous parameters. However, these problems are in the second part of the design process...

Evaluation of an antenna selection strategy for reduced massive MIMO comple...

Archive ouverte: Article de revue

Challita, Frédéric | 2021-05

This article also appears in: Radio Channel Modeling for 5g Millimetre Wave Communications in Built Environments. International audience. Massive Multiple-Input Multiple-Output (MIMO) is emerging as one promising te...

Essential math for data science : take control of your data with fundamenta...

Livre | Nield, Thomas. Auteur | 2022

To succeed in data science you need some math proficiency. But not just any math. This common-sense guide provides a clear, plain English survey of the math you'll need in data science, including probability, statistics, hypothesi...

MULTI-PHYSICS DESIGN RULES USING LUMPED MODELS FOR A PERMANENT MAGNET SYNCH...

Archive ouverte: Article de revue

Bracikowski, Nicolas | 2013-09

International audience. Modeling the dynamic behavior of electrical machines involves several fields of physics, such as electromagnetics, electronics, mechanics, thermodynamics and acoustics. Multi-physics lumped m...

An Investigation on Inherent Robustness of Posit Data Representation

Archive ouverte: Communication dans un congrès

Alouani, Ihsen | 2021-02-20

International audience. As the dimensions and operating voltages of computer electronics shrink to cope with consumers' demand for higher performance and lower power consumption, circuit sensitivity to soft errors i...

Keyword Spotting System using Low-complexity Feature Extraction and Quantiz...

Archive ouverte: Communication dans un congrès

Hérissé, Kévin | 2021-11-28

International audience. Long Short-Term Memory (LSTM) neural networks offer state-of-the-art results to compute sequential data and address applications like keyword spotting. Mel Frequency Cepstral Coefficients (MF...

Chargement des enrichissements...