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Age Minimization of Multiple Flows using Reinforcement Learning

机译:使用强化学习使多重流的年龄最小化

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Age of Information (AoI) is a recently proposed performance metric measuring the freshness of data at the receiving side of a flow. This metric is particularly suited to status-update type information flows, like those occurring in machine-type communication (MTC), remote monitoring and similar applications. In this paper, we consider the problem of AoI-optimal scheduling of multiple flows served by a single server. The performance of scheduling algorithms proposed in previous literature has been shown under limited assumptions, due to the analytical intractability of the problem. The goal of this paper is to apply reinforcement learning methods to achieve scheduling decisions that are resilient to network conditions and packet arrival processes. Specifically, Policy Gradients and Deep Q-Learning methods are employed. These can adapt to the network without a priori knowledge of its parameters. We study the resulting performance relative to a benchmark, the MAF algorithm, which is known to be optimal under certain conditions.
机译:信息时代(AoI)是最近提出的一种性能指标,用于测量流接收端数据的新鲜度。此度量标准特别适合于状态更新类型的信息流,例如机器类型通信(MTC),远程监视和类似应用程序中发生的那些信息流。在本文中,我们考虑了由单个服务器服务的多个流的AoI最优调度问题。由于问题的分析难点性,在有限的假设下已显示了先前文献中提出的调度算法的性能。本文的目的是应用强化学习方法来实现对网络条件和数据包到达过程具有弹性的调度决策。具体而言,采用了“策略梯度”和“深度Q学习”方法。这些可以适应网络而无需先验参数。我们研究了相对于基准MAF算法的结果性能,该算法在某些条件下是最佳的。

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