Novel Deep Learning Approach to Support Optimal Resource Allocation in 5G Environment

Raja Varma Pamba, Rahul Bhandari, A. Asha, Rahul Neware, A. Bist
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Abstract

In recent times, the advancement in network devices has focused entirely on the miniaturisation of services that should ensure better connectivity between them via fifth generation (5G) technology. The 5G network communication aims to improve Quality of Service (QoS). However, the allocation of resources is a core problem that increases the complexity of packet scheduling. In this paper, we develop a resource allocation model using a novel deep learning algorithm for optimal resource allocation. The novel deep learning is formulated using the constraints associated with optimal radio resource allocation. The objective function design aims at reducing the system delay. The study predicts the traffic in a complex environment and allocates resources accordingly. The simulation was conducted to test the scheduling efficacy and the results showed an improved rate of allocation than the other methods.
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支持5G环境下资源优化分配的新型深度学习方法
最近,网络设备的进步完全集中在服务的小型化上,通过第五代(5G)技术确保它们之间更好的连接。5G网络通信旨在提高服务质量(QoS)。然而,资源的分配是一个核心问题,增加了数据包调度的复杂性。在本文中,我们开发了一个资源分配模型,使用一种新的深度学习算法进行最优资源分配。这种新颖的深度学习是使用与最佳无线电资源分配相关的约束来制定的。目标函数设计的目的是减少系统的延迟。该研究对复杂环境下的流量进行预测,并据此分配资源。通过仿真验证了该方法的调度效率,结果表明该方法的分配率比其他方法有所提高。
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