DEEP LEARNING BASED METHOD FOR ADAPTIVE NETWORK SLICING IN 5G
نویسندگان
چکیده
منابع مشابه
End-to-end Network Slicing for 5G Mobile Networks
The research and development (R&D) and the standardization of the 5th Generation (5G) mobile networking technologies are proceeding at a rapid pace all around the world. In this paper, we introduce the emerging concept of network slicing that is considered one of the most significant technology challenges for 5G mobile networking infrastructure, summarize our preliminary research efforts to ena...
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As mobile data traffic increases, and the number of services provided by the mobile network increases, service load flows as well, which requires changing in the principles, models, and strategies for media transmission streams serving to guarantee the given nature of giving a wide scope of services in Flexible and cost-effective. Right now, the fundamental question remains what number of netwo...
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5G mobile network is expected to serve flexible requirements hence dynamically allocate network resources according to the demands. Network slicing, where network resources are packaged and assigned in an isolated manner to set of users according to their specific requirements, is considered as a key paradigm to fulfil diversity of requirements. There will clearly be conflicting demands in allo...
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Networks will continue to become increasingly heterogeneous as we move toward 5G. Meanwhile, the intelligent programming of the core network makes the available radio resource be more changeable rather than static. In such a dynamic and heterogeneous network environment, how to help terminal users select optimal networks to access is challenging. Prior implementations of network selection are u...
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ژورنال
عنوان ژورنال: Scientific notes of Taurida National V.I. Vernadsky University. Series: Technical Sciences
سال: 2020
ISSN: 2663-5941
DOI: 10.32838/2663-5941/2020.5/07