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A network traffic measurement method based on rbf neural network

A technology of network traffic and neural network, applied in the field of network traffic measurement based on RBF neural network, can solve the problem of high computational complexity of traffic model training time, achieve high practical value, high prediction accuracy, and strong generalization ability

Active Publication Date: 2017-03-01
HUZHOU TEACHERS COLLEGE
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Problems solved by technology

[0009] The purpose of the present invention is to solve the problems in the prior art, and propose a network flow measurement method based on RBF neural network, which has fast calculation speed and good real-time performance, and has higher approximation ability and good performance compared with traditional linear flow models. Adaptive, and can overcome the shortcomings of long training time and high computational complexity of traffic model based on BP neural network

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  • A network traffic measurement method based on rbf neural network

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Embodiment Construction

[0020] A kind of network traffic measurement method based on RBF neural network of the present invention comprises the following steps in turn:

[0021] a) Establish RBF neural network model: RBF neural network is a single hidden layer feedforward neural network, the input layer node transmits the input signal to the hidden layer, the hidden layer node is composed of a Gaussian kernel function with radial effect, and the output layer node is It is composed of a simple linear function. The Gaussian kernel function in the hidden layer node will locally respond to the input signal, that is, when the input signal is close to the central range of the Gaussian kernel function, the hidden layer node will generate a larger output signal. The mathematical model formula of the network is: In the formula, n c is the number of hidden layer nodes, x is the n-dimensional input vector, k i is the center of the i-th hidden node; ||·|| is the Euclidean norm; w ki is the connection weight o...

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Abstract

The invention discloses a network traffic measurement method based on an RBF neural network. The network traffic measurement method based on the RBF neural network comprises the following steps in sequence: establishment of an RBF neural network model, normalization processing of network traffic data lines, a learning algorithm of the RBF neural network model, the training algorithm of the RBF neural network model and evaluation of performance of the RBF neural network model. According to the network traffic measurement method based on the RBF neural network, the traffic measurement model based on the RBF neural network is established to give out structural design of the RBF neural network and the learning algorithm based on orthogonal least squares, the RBF method is higher in prediction accuracy relative to a BP traffic prediction model, the RBF method can describe the change rules of network traffic quite well, and has the advantages of being strong in generalization ability and good in stability, and the method has high practical value in network traffic prediction.

Description

[0001] 【Technical field】 [0002] The present invention relates to the technical field of network traffic measurement methods, in particular to the technical field of network traffic measurement methods based on RBF neural networks. [0003] 【Background technique】 [0004] Traffic measurement is the foundation of network monitoring, management and control. The Internet is a global network with hundreds of millions of computers interconnected. With the provision of more network services and the continuous increase of users, network traffic becomes larger and larger, and network behavior becomes more and more complex. Although the related networking and management technologies are constantly being improved, people still do not have a correct and complete understanding of the behavioral characteristics it reflects in the local and overall scope. Mastering the behavior of the Internet is an important prerequisite for many researches such as network planning, network management and...

Claims

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): H04L12/26
Inventor 蒋云良王智群
Owner HUZHOU TEACHERS COLLEGE
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