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Limitations of artificial neural networks for traffic prediction in broadband networks

机译:人工神经网络在宽带网络中进行流量预测的局限性

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摘要

B-ISDN is expected to support a variety of services, each with its own traffic characteristics and quality-of-service requirements. Such diversity, however, has created new congestion control problems, some of which could be alleviated by a traffic prediction scheme. The paper investigates the applicability of artificial neural networks for traffic prediction in broadband networks. Recent work has indicated that such prediction is possible, as the neural networks are able to learn a complex mapping between past and future arrivals. Such work, however, has been based on the use of artificially generated traffic, and by definition the past and future arrivals are related. Real traffic is considered and it is shown that prediction is possible for certain traffic types but not for others. It is demonstrated that simple linear regression prediction techniques perform equally as well as do neural networks.
机译:B-ISDN有望支持多种服务,每种服务都有其自己的流量特征和服务质量要求。然而,这种多样性造成了新的拥塞控制问题,其中一些可以通过流量预测方案来缓解。本文研究了人工神经网络在宽带网络流量预测中的适用性。最近的工作表明,这种预测是可能的,因为神经网络能够学习过去和将来到达之间的复杂映射。但是,这种工作是基于人为产生的流量的使用,并且根据定义,过去和将来的到达是相关的。考虑了实际流量,并且表明对某些流量类型可以进行预测,而对于其他流量类型则无法进行预测。事实证明,简单的线性回归预测技术与神经网络的性能相同。

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