Vartika Agarwal
Deep learning techniques to improve radio resource management in vehicular communication network
- Authors Details :
- Vartika Agarwal,
- Sachin Sharma
Journal title : Lecture Notes in Electrical Engineering
Publisher : Springer Singapore
Online ISSN : 1876-1119
Page Number : 161-171
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This paper investigates the deep learning techniques to improve radio resource management (RRM) in vehicular communication network (VCN). In this paper, the deep learning algorithms are highlighted which are used for RRM. Deep learning technique in RRM is basically used to train the model using various algorithms of resource management including network data. Various machine learning tools will be helpful to get best solutions for resource allocation in a large cellular network.
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DOI : https://doi.org/10.1007/978-981-16-9012-9_14
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