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Modeling of self-similar network traffic using artificial neural networks

机译:使用人工神经网络对自相似网络流量进行建模

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Self-similarity is a phenomenon which has come into computer networks literatures during last two decades and plays a significant role in modeling of computer network traffics. It is generally accepted that computer network traffics are self-similar and they are dissimilar to Poisson-based traffics. Computer network models exert a considerable influence on improving quality of service. Therefore, self-similarity should be considered in traffic models in order to acquire more appropriate QoS. In this paper, we propose a novel model for generating self-similar traffic. Our model includes a multi-layer perceptron neural network and a random error generator. This model has two phases: Firstly, the model is trained with real network traffic. Secondly, with the assistance of the random error generator, it generates traffic which is as self-similar as the real traffic. The implementation and the results validate this model through drawing a comparison between the Hurst parameter of the generated traffic and the real traffic.
机译:自相似性是近二十年来在计算机网络文献中出现的一种现象,在计算机网络流量的建模中起着重要作用。公认的是,计算机网络流量是自相似的,并且与基于Poisson的流量不同。计算机网络模型对提高服务质量有很大影响。因此,在流量模型中应考虑自相似性,以获得更合适的QoS。在本文中,我们提出了一种用于生成自相似流量的新颖模型。我们的模型包括多层感知器神经网络和随机误差生成器。该模型分为两个阶段:首先,使用实际的网络流量对模型进行训练。其次,在随机误差发生器的帮助下,它产生与真实流量一样自相似的流量。该实现和结果通过在生成的流量的Hurst参数与实际流量之间进行比较来验证该模型。

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