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Network traffic prediction method based on discrete wavelet transform and FA-ELM

A technology of discrete wavelet transform and FA-ELM, which is applied in the direction of data exchange network, complex mathematical operations, calculation models, etc., can solve the problems of reduced prediction accuracy and insufficient stability, so as to overcome poor stability, realize real-time perception, simulate Good combination ability and generalization ability

Active Publication Date: 2021-09-17
国网宁夏电力有限公司信息通信公司 +1
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AI Technical Summary

Problems solved by technology

[0005] The present invention provides a network traffic forecasting method based on discrete wavelet transform and FA-ELM. long-term dependency problems

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  • Network traffic prediction method based on discrete wavelet transform and FA-ELM
  • Network traffic prediction method based on discrete wavelet transform and FA-ELM
  • Network traffic prediction method based on discrete wavelet transform and FA-ELM

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Embodiment Construction

[0075] In order to make the technical problems, technical solutions and advantages to be solved by the present invention clearer, the following will describe in detail with reference to the drawings and specific embodiments.

[0076] The present invention aims at the problems of the existing time series prediction that the prediction accuracy will be significantly reduced with the prolongation of the prediction time, the stability is insufficient, and the problem of long-term dependence exists, and a network based on discrete wavelet transform and FA-ELM is provided traffic forecasting method.

[0077] Such as Figure 1 to Figure 10 As shown, the embodiment of the present invention provides a network traffic prediction method based on discrete wavelet transform and FA-ELM, comprising: Step 1, constructing a DWAFE model, setting a data administrator and a model administrator in the DWAFE model; Step 2: Obtain a plurality of network traffic data and send the network traffic dat...

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Abstract

The invention provides a network traffic prediction method based on discrete wavelet transform and FA-ELM, the method comprising the following steps: step 1, constructing a DWAFE model, and setting a data administrator and a model administrator in the DWAFE model; and step 2, obtaining multiple pieces of network traffic data and sending the network traffic data to the data administrator, and carrying out data preprocessing on the network traffic data by the data administrator to obtain the network traffic data after data preprocessing. An FA-ELM model optimized by a firefly algorithm overcomes the defect of poor ELM stability, is high in accuracy of nonlinear data prediction, can be stably and reliably applied to research in various fields, and has great practical significance. The DWAFE model provided by the invention combines the respective advantages of an ARIMA model and the FA-ELM model, makes accurate network traffic prediction, and calculates a dynamic threshold interval under a specified confidence coefficient according to a prediction result, thereby realizing real-time sensing of an equipment operation state, and providing powerful support for equipment fault early warning.

Description

technical field [0001] The invention relates to the technical field of network traffic forecasting, in particular to a network traffic forecasting method based on discrete wavelet transform and FA-ELM. Background technique [0002] Autoregressive Integrated Moving Average model (ARIMA, Autoregressive Integrated Moving Average model), one of the most important and widely used models in time series forecasting, is suitable for dealing with time series with linear structure, but the forecast for nonlinear data is not satisfactory. In addition, insufficient generalization ability is one of its shortcomings, and its prediction accuracy will be significantly reduced as the prediction time prolongs, so it is only suitable for short-term prediction. [0003] Extreme Learning Machine (ELM, Extreme Learning Machine) has good fitting effect and high prediction accuracy for nonlinear data, but its robustness is not as good as ARIMA for linear data that is relatively easy to fit. Insuff...

Claims

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Application Information

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IPC IPC(8): H04L12/24H04L12/26G06N3/00G06F17/18G06F17/14
CPCH04L41/147H04L41/145H04L41/142H04L43/0876G06F17/148G06F17/18G06N3/006
Inventor 王堃谭源张立中郑晨张军陈志刚李斌夏琨徐悦
Owner 国网宁夏电力有限公司信息通信公司
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