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Network Traffic Prediction Based on Multifractal MLD Model

机译:基于多重分形MLD模型的网络流量预测

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In this paper, a multifractal approach to the classification of unknown self affine signals is presented as an improvement over traditional traffic signal. The fundamental advantages of using multifractal measures include normalization and a very high compression ratio of a signature of the traffic, thereby leading to faster implementations, and the abiliiy to add new traffic classes without redesigning the traffic classifier. Mixed logical dynamical (MLD) modeling appears as an effective and realistic approach in modeling and control of hybrid systems. In this paper, the MLD framework is used for modeling of a multi-server system as a switched nonlinear system. Control of data flow in multiple servers is considered as a case study for predictive control of MLD systems. It is a good model for network traffic control and research as shown in the simulation.
机译:在本文中,提出了一种对未知自仿射信号进行分类的多重分形方法,作为对传统交通信号的一种改进。使用多重分形度量的基本优点包括归一化和流量签名的非常高的压缩率,从而导致更快的实现,并且能够在不重新设计流量分类器的情况下添加新的流量类别。在混合系统的建模和控制中,混合逻辑动力学(MLD)建模是一种有效而现实的方法。在本文中,MLD框架用于将多服务器系统建模为交换非线性系统。多服务器中数据流的控制被认为是对MLD系统进行预测控制的案例研究。如仿真所示,它是用于网络流量控制和研究的良好模型。

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