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Network traffic forecasting model based on long-term intuitionistic fuzzy time series

机译:基于长期直觉模糊时间序列的网络流量预测模型

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In this paper, a network traffic forecasting model based on long-term intuitionistic fuzzy time series (LT-IFTS) is proposed. It describes the fuzziness and uncertainty of network flow and improves the traffic forecasting performance. The multi-input multi-output (MIMO) intuitionistic fuzzy time series forecasting model, namely, (p-q) IFTS is defined. An intuitionistic fuzzy time series vectors clustering algorithm based on vector variation pattern is given. The cluster centroid in the proposed model is quite different from the traditional method. As a kind of typical time series data, the network flow forecasting system is constructed particularly. Characteristic intuitionistic fuzzy is a practical method to manage the fuzziness and uncertainty of network traffic data. The network traffic data is intuitionistic fuzzified and vector quantized. The time series vectors are gathered based on the improved intuitionistic fuzzy c-means clustering and matched with centroids by coordinate translation. Compared with other traditional forecasting models, the improved FCM clustering algorithm increases discrimination of time series segments. In addition, the long-term scheme improves forecasting efficiency and reduces computational complexity than other single-output models. In experiments, the proposed model and relevant models are implemented on four different scales network traffic dataset from MAWI. The experiment result indicates that the proposed model is with better generalization performance. (C) 2019 Elsevier Inc. All rights reserved.
机译:本文提出了一种基于长期直觉模糊时间序列(LT-IFTS)的网络流量预测模型。它描述了网络流的模糊和不确定性,并提高了交通预测性能。定义了多输入多输出(MIMO)直觉模糊时间序列预测模型,即(P-Q)IFTS。给出了基于向量变形模式的直觉模糊时间序列矢量聚类算法。所提出的模型中的集群质心与传统方法完全不同。作为一种典型的时间序列数据,特别是网络流量预测系统。特征直觉模糊是管理网络流量数据的模糊和不确定性的实用方法。网络流量数据是直观的模糊和矢量量化。时间序列向量基于改进的直觉模糊C型聚类,并通过坐标翻译与质心匹配。与其他传统预测模型相比,改进的FCM聚类算法增加了时间序列段的辨别。此外,长期方案提高了预测效率并降低了比其他单输出模型的计算复杂性。在实验中,所提出的模型和相关模型在来自MAWI的四个不同的尺度网络流量数据集中实现。实验结果表明,所提出的模型具有更好的泛化性能。 (c)2019 Elsevier Inc.保留所有权利。

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