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Smart Congestion Control in 5G/6G Networks Using Hybrid Deep Learning Techniques

Author

Listed:
  • Saif E. A. Alnawayseh
  • Waleed T. Al-Sit
  • Taher M. Ghazal

Abstract

With the mobility and ease of connection, wireless sensor networks have played a significant role in communication over the last few years, making them a significant data carrier across networks. Additional security, lower latency, and dependable standards and communication capability are required for future‐generation systems such as millimeter‐wave LANs, broadband wireless access schemes, and 5G/6G networks, among other things. Effectual congestion control is regarded as of the essential aspects of 5G/6G technology. It permits operators to run many network illustrations on a single organization while maintaining higher service quality. A sophisticated decision‐making system for arriving network traffic is necessary to confirm load balancing, limit network slice letdown, and supply alternative slices in slice letdown or congestion. Because of the massive amount of data being generated, artificial intelligence (AI) and machine learning (ML) play a vital role in reconfiguring and improving a 5G/6G wireless network. In this research work, a hybrid deep learning method is being applied to forecast optimal congestion improvement in the wireless sensors of 5G/6G IoT networks. This proposed model is applied to a training dataset to govern the congestion in a 5G/6G network. The proposed approach provided promising results, with 0.933 accuracy, and 0.067 miss rate.

Suggested Citation

Handle: RePEc:wly:complx:v:2022:y:2022:i:1:n:1781952
DOI: 10.1155/2022/1781952
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