Highly Accurate and Reliable Wireless Network Slicing in 5th Generation Networks: A Hybrid Deep Learning Approach

被引:0
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作者
Sulaiman Khan
Suleman Khan
Yasir Ali
Muhammad Khalid
Zahid Ullah
Shahid Mumtaz
机构
[1] University of Swabi,Department of Computer Science
[2] University of Central Lancashire,Department of Psychology and Computer Science
[3] University of Hull,Department of Computer Science and Technology
[4] Institute of Management Sciences,Department of Computer Science
[5] Instituto De Telecomunicaces,undefined
关键词
Network slicing; 5G network; Hybrid deep learning model; Machine learning-based reconfigurable wireless network; LSTM;
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摘要
In current era, the next generation networks like 5th generation (5G) and 6th generation (6G) networks requires high security, low latency with a high reliable standards and capacity. In these networks, reconfigurable wireless network slicing is considered as one of the key element for 5G and 6G networks. A reconfigurable slicing allows the operators to run various instances of the network using a single infrastructure for better quality of services (QoS). The QoS can be achieved by reconfiguring and optimizing these networks using Artificial intelligence and machine learning algorithms. To develop a smart decision-making mechanism for network management and restricting network slice failures, machine learning-enabled reconfigurable wireless network solutions are required. In this paper, we propose a hybrid deep learning model that consists of convolution neural network (CNN) and long short term memory (LSTM). The CNN performs resource allocation, network reconfiguration, and slice selection while the LSTM is used for statistical information (load balancing, error rate etc.) regarding network slices. The applicability of the proposed model is validated by using multiple unknown devices, slice failure, and overloading conditions. An overall accuracy of 95.17% is achieved by the proposed model that reflects its applicability.
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