RL-QN:排队系统最优控制的强化学习框架

IF 0.7 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS
Bai Liu, Qiaomin Xie, E. Modiano
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引用次数: 4

摘要

随着信息技术的快速发展,网络系统变得越来越复杂,因此潜在的系统动力学往往是未知的或难以表征的。找到一个好的网络控制策略对于实现期望的网络性能(例如,高吞吐量或低延迟)非常重要。在这项工作中,我们考虑使用基于模型的强化学习(RL)来学习排队网络的最优控制策略,以使平均作业延迟(或等效地平均队列积压)最小化。然而,RL中的传统方法无法处理网络控制问题的无界状态空间。为了克服这一困难,我们提出了一种新的算法,称为排队网络RL(RL-QN),该算法在状态空间的有限子集上应用基于模型的RL方法,同时对其余状态应用已知的稳定策略。我们建立了具有适当构造的子集的RL-QN下的平均队列积压可以任意接近最优结果。我们在动态服务器分配、路由和交换问题中评估RL-QN。仿真结果表明,RL-QN有效地最小化了平均队列积压。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
RL-QN: A Reinforcement Learning Framework for Optimal Control of Queueing Systems
With the rapid advance of information technology, network systems have become increasingly complex and hence the underlying system dynamics are often unknown or difficult to characterize. Finding a good network control policy is of significant importance to achieve desirable network performance (e.g., high throughput or low delay). In this work, we consider using model-based reinforcement learning (RL) to learn the optimal control policy for queueing networks so that the average job delay (or equivalently the average queue backlog) is minimized. Traditional approaches in RL, however, cannot handle the unbounded state spaces of the network control problem. To overcome this difficulty, we propose a new algorithm, called RL for Queueing Networks (RL-QN), which applies model-based RL methods over a finite subset of the state space while applying a known stabilizing policy for the rest of the states. We establish that the average queue backlog under RL-QN with an appropriately constructed subset can be arbitrarily close to the optimal result. We evaluate RL-QN in dynamic server allocation, routing, and switching problems. Simulation results show that RL-QN minimizes the average queue backlog effectively.
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来源期刊
CiteScore
2.10
自引率
0.00%
发文量
9
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