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Congestion Control in Autonomous Decentralized Networks Based on the Lotka-Volterra Competition Model

机译:基于Lotka-Volterra竞争模型的自主分散网络拥塞控制

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Next generation communication networks are moving towards autonomous infrastructures that are capable of working unattended under dynamically changing conditions. The new network architecture involves interactions among unsophisticated entities which may be characterized by constrained resources. From this mass of interactions collective unpredictable behavior emerges in terms of traffic load variations and link capacity fluctuations, leading to congestion. Biological processes found in nature exhibit desirable properties e.g. self-adaptability and robustness, thus providing a desirable basis for such computing environments. This study focuses on streaming applications in sensor networks and on how congestion can be prevented by regulating the rate of each traffic flow based on the Lotka-Volterra population model. Our strategy involves minimal exchange of information and computation burden and is simple to implement at the individual node. Performance evaluations reveal that our approach achieves adaptability to changing traffic loads, scalability and fairness among flows, while providing graceful performance degradation as the offered load increases.
机译:下一代通信网络正朝着能够在动态变化的条件下无人值守工作的自治基础架构发展。新的网络体系结构涉及复杂的实体之间的交互,这些交互可能以资源受限为特征。从这种大量的交互作用中,出现了无法预测的集体行为,涉及到流量负载变化和链路容量波动,从而导致拥塞。在自然界中发现的生物过程表现出期望的性质,例如。自适应性和鲁棒性,因此为此类计算环境提供了理想的基础。这项研究的重点是传感器网络中的流传输应用,以及如何通过基于Lotka-Volterra人口模型调节每个流量的速率来防止拥塞。我们的策略涉及最少的信息交换和计算负担,并且在单个节点上易于实现。性能评估表明,我们的方法能够适应不断变化的流量负载,流之间的可伸缩性和公平性,同时随着所提供的负载增加,性能会适度下降。

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