论文标题
互联网拥塞控制:从随机到动态模型
Internet congestion control: from stochastic to dynamical models
论文作者
论文摘要
自成立以来,对互联网上的数据充血的控制一直基于随机模型。这样的第一个模型之一是随机早期检测。后来,该模型被重新构成一个动力系统,路由器缓冲液的平均队列大小为州。最近,动态模型已被普遍以提高全球稳定性。在本文中,我们以两个目标进行了两倍的目标,回顾了原始的随机模型和两个随机早期检测的非线性模型:(i)说明如何通过数据聚合将随机模型“平滑”到确定性的模型中,以及(ii)这种翻译如何将照明转移到诸如Internet数据流量之类的复杂过程中。此外,本文包含有关混乱,分叉图,Lyapunov指数以及有关控制参数的全球稳定性的新材料。预计此处审查和报告的结果将有助于在实际条件下设计主动队列管理算法,也就是说,当诸如用户数量和数据包的往返时间之类的系统参数随时间变化时。该主题还说明了一种理论方法,实用的直觉和工程数值模拟的急需协同作用。
Since its inception, control of data congestion on the Internet has been based on stochastic models. One of the first such models was Random Early Detection. Later, this model was reformulated as a dynamical system, with the average queue sizes at a router's buffer being the states. Recently, the dynamical model has been generalized to improve global stability. In this paper we review the original stochastic model and both nonlinear models of Random Early Detection with a two-fold objective: (i) illustrate how a random model can be "smoothed out" to a deterministic one through data aggregation, and (ii) how this translation can shed light into complex processes such as the Internet data traffic. Furthermore, this paper contains new materials concerning the occurrence of chaos, bifurcation diagrams, Lyapunov exponents and global stability robustness with respect to control parameters. The results reviewed and reported here are expected to help design an active queue management algorithm in real conditions, that is, when system parameters such as the number of users and the round-trip time of the data packets change over time. The topic also illustrates the much-needed synergy of a theoretical approach, practical intuition and numerical simulations in engineering.