Network Traffic Prediction with Reduced Power Consumption towards Green Cellular Networks

Q1 Mathematics
Nilakshee Rajule, Mithra Venkatesan, Radhika Menon, Anju V. Kulkarni
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引用次数: 0

Abstract

The increased number of cellular network subscribers is giving rise to the network densification in next generation networks further increasing the greenhouse gas emission and the operational cost of network. Such issues have ignited a keen interest in the deployment of energy-efficient communication technologies rather than modifying the infrastructure of cellular networks. In cellular network largest portion of the power is consumed at the Base stations (BSs). Hence application of energy saving techniques at the BS will help reduce the power consumption of the cellular network further enhancing the energy efficiency (EE) of the network. As a result, BS sleep/wake-up techniques may significantly enhance cellular networks' energy efficiency. In the proposed work traffic and interference aware BS sleeping technique is proposed with an aim of reducing the power consumption of network while offering the desired Quality of Service (QoS) to the users. To implement the BS sleep modes in an efficient manner the prediction of network traffic load is carried out for future time slots. The Long Short term Memory model is used for prediction of network traffic load. Simulation results show that the proposed system provides significant reduction in power consumption as compared with the existing techniques while assuring the QoS requirements. With the proposed system the power saving is enhanced by approximately 2% when compared with the existing techniques. His proposed system will help in establishing green communication networks with reduced energy and power consumption.
降低功耗的网络流量预测,实现绿色蜂窝网络
随着蜂窝网络用户数量的增加,下一代网络的网络密度进一步增加,温室气体的排放和网络的运营成本也随之增加。这些问题引发了人们对部署节能通信技术的浓厚兴趣,而不是修改蜂窝网络的基础设施。在蜂窝网络中,最大部分的电力消耗在基站(BSs)上。因此,在无线基站应用节能技术,将有助于减少蜂窝网络的耗电量,进一步提高网络的能源效率。因此,BS睡眠/唤醒技术可以显著提高蜂窝网络的能量效率。在提出的工作流量和干扰感知技术中,提出了在降低网络功耗的同时为用户提供理想的服务质量(QoS)的BS睡眠技术。为了有效地实现BS睡眠模式,对未来时间段的网络流量负载进行了预测。长短期记忆模型用于预测网络流量负荷。仿真结果表明,与现有技术相比,该系统在保证QoS要求的同时显著降低了功耗。与现有技术相比,该系统的节能性能提高了约2%。他提出的系统将有助于建立绿色通信网络,减少能源和电力消耗。
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来源期刊
CiteScore
4.10
自引率
0.00%
发文量
33
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