A Hybrid Network Traffic Prediction Model Based on Optimized Neural Network

Hui Tian, Xiaoping Zhou, Jingtian Liu
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引用次数: 7

Abstract

With growth of networks, it’s demanding to predict the development of network traffic. In this paper, we analyze the network traffic based on the hybrid neural network model. The chaotic property of traffic data is verified by analyzing the chaos characteristics of the data. Based on the study of artificial neural network, wavelet transform theory and quantum genetic algorithm, we propose a neural network optimization method based on efficient global search capability of quantum genetic algorithm. The proposed quantum genetic artificial neural network model can predict the network traffic more accurately. The prediction results can be used to monitor the network anomaly in network security field, and improve the quality of service. The results will also benefit to search efficient network optimization solutions by predicting network behavior.
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基于优化神经网络的混合网络流量预测模型
随着网络的发展,对网络流量的发展提出了预测的要求。本文基于混合神经网络模型对网络流量进行了分析。通过分析交通数据的混沌特性,验证了交通数据的混沌性。在研究人工神经网络、小波变换理论和量子遗传算法的基础上,提出了一种基于量子遗传算法高效全局搜索能力的神经网络优化方法。提出的量子遗传人工神经网络模型可以更准确地预测网络流量。预测结果可用于网络安全领域的网络异常监测,提高服务质量。研究结果还有助于通过预测网络行为来搜索有效的网络优化方案。
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