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引用次数: 17
摘要
ad hoc网络的高度动态拓扑结构和有限的带宽使得路由任务更加困难。实际上,具有不同流量特征和服务质量要求(QoS)的各种源(如语音、视频或数据)以非常高的速率进行多路复用,导致主要由网络拥塞引起的丢包、传输延迟、延迟变化等显著的流量问题。这些问题的实时预测是相当困难的,这使得基于分析模型的“传统”协议的有效性受到质疑。我们在本文中提出了这个问题的最新技术,然后是一个基于强化学习范式的解决方案,我们发现它更适合这类问题。
A swarm intelligent scheme for routing in mobile ad hoc networks
The highly dynamic topology of ad hoc networks and their limited bandwidth made the routing task more difficult. Actually, various kinds of sources (such as voice, video, or data) with diverse traffic characteristics and quality of service requirements (QoS) are multiplexed at very high rates, leads to significant traffic problems such as packet losses, transmission delays, delay variations, etc, caused mainly by congestion in the networks. The prediction of these problems in real time is quite difficult, making the effectiveness of "traditional" protocols based on analytical models questionable. We propose in this paper a state of the art of this problem followed by a solution based on reinforcement learning paradigm that we find more adapted for this kind of problems.