基于小细胞预测策略的能源效率和未来知识权衡

Matthieu De Mari, E. Strinati, M. Debbah
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引用次数: 3

摘要

预测小蜂窝网络和主动资源分配被认为是提高通信网络长期能源效率的关键机制之一。学习技术利用人类行为中的重复模式来预测网络的一些未来传输环境。在本文中,我们的目标是通过基于预测的策略实现资源分配的灵活性来提高容忍延迟传输的能源效率。我们从能源效率的角度研究了未来知识的几个场景的性能,从零到完美的未来背景知识,以及部分知识场景(短期预测,长期统计或部分知识)。描述了在每种情况下接近最佳策略的迭代过程。在某些情况下,可以得到要实现的最优策略的封闭形式表达式,并计算每种情况下的性能。我们的分析和数值结果评估了在容忍延迟传输的情况下利用未来知识的潜在好处,并展示了系统如何从提供的关于未来传输上下文的信息中获益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Energy-efficiency and future knowledge tradeoff in small cells prediction-based strategies
Predictive small cells networks and proactive resource allocation are considered as one of the key mechanisms for increasing the long-term energy-efficiency of communication networks. Learning techniques exploit repetitive patterns in human behavior to predict some future transmission contexts of the network. In this paper, we target to improve the energy efficiency of delay-tolerant transmissions by enabling flexibility in resource allocation with prediction-based strategies. We study the performance, in terms of energy efficiency of several scenarios of future knowledge ranging from zero to perfect knowledge of the future context, but also partial knowledge scenarios (short-term predictions, long-term statistics or partial knowledge). An iterative process, approaching the optimal strategies in each scenario, is described. In some cases, closed-form expressions of the optimal strategies to be implemented can be obtained and the performance in each scenario is computed. Our analytical and numerical results assess the potential benefit of exploiting the knowledge of the future in the case of a delay-tolerant transmission and show how the system may benefit from a provided piece of information about the future transmission context.
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