Heuristic approach for forecast scheduling

Hind Zaaraoui, Z. Altman, S. B. Jemaa, E. Altman, T. Jiménez
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引用次数: 2

Abstract

Forecast Scheduling (FS) is a scheduling concept that utilizes rate prediction along the users' trajectories in order to optimize the scheduler allocation. The rate prediction is based on Signal to Interference plus Noise Ratio (SINR) or rate maps provided by a Radio Environment Map (REM). The FS has been formulated as a convex optimization problem namely the maximization of an α-fair utility function of the cumulated rates of the users along their trajectories [1]. This paper proposes a fast heuristic for the FS problem based on two FS users' scheduling. Furthermore, it is shown that in the case of two users, the FS problem can be solved analytically, making the heuristic computationally very efficient. Numerical results illustrate the throughput gain brought about by the scheduling solution.a
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预测调度的启发式方法
预测调度(FS)是一种调度概念,它利用沿用户轨迹的速率预测来优化调度程序的分配。速率预测是基于信号干扰加噪声比(SINR)或无线电环境图(REM)提供的速率图。FS已被表述为一个凸优化问题,即用户沿其轨迹累积率的α-公平效用函数的最大化[1]。本文提出了一种基于两个FS用户调度的快速启发式算法。此外,在两个用户的情况下,FS问题可以解析解决,使得启发式计算非常高效。数值结果说明了该调度方案所带来的吞吐量增益
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