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Method and system for forecasting short-term wind speed of wind farm based on hybrid neural network

A hybrid neural network and wind speed prediction technology, applied in the direction of biological neural network models, can solve the problems of large fluctuations in the prediction error of a single model, achieve fast calculation speed, high precision, and improve the effect of prediction accuracy

Active Publication Date: 2012-05-30
THE HONG KONG POLYTECHNIC UNIV
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Problems solved by technology

[0005] The technical problem to be solved by the present invention is that, aiming at the defects of low accuracy and poor reliability of short-term wind speed prediction of wind farms in the prior art, it provides a method with fast calculation speed and high reliability, which solves the technical problem of completely relying on the physical prediction model, A short-term wind speed prediction method and system for wind farms based on a hybrid neural network that can overcome the defect of a single model with large fluctuations in prediction error

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  • Method and system for forecasting short-term wind speed of wind farm based on hybrid neural network
  • Method and system for forecasting short-term wind speed of wind farm based on hybrid neural network
  • Method and system for forecasting short-term wind speed of wind farm based on hybrid neural network

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[0029] In order to make the object, technical solution and advantages of the present invention clearer, the present invention will be further described in detail below in conjunction with the accompanying drawings and embodiments. It should be understood that the specific embodiments described here are only used to explain the present invention, not to limit the present invention.

[0030] exist figure 1 In the flow chart of the first preferred embodiment of the hybrid neural network-based wind farm short-term wind speed prediction method of the present invention shown, the wind farm short-term wind speed prediction method based on the hybrid neural network starts at step 100; after step 100 Go to step 101, determine the input variable and output variable of the hybrid neural network prediction model according to the preset prediction time interval; then, go to the next step 102, perform wind speed prediction according to the hybrid neural network prediction model, and obtain ...

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Abstract

The invention relates to a method for forecasting short-term wind speed of a wind farm based on hybrid neural network. The method comprises the following steps: S1, determining an input variable and an output variable of a hybrid neutral network forecasting model according to a preset forecasting time interval; and S2, forecasting the wind speed according to the hybrid neutral network forecasting model to obtain corresponding wind speed forecasting value. The invention also relates to a system for forecasting short-term wind speed of the wind farm based on the hybrid neural network. The system comprises a variable determination module for determining the input variable and output variable of the hybrid neutral network forecasting model according to the preset forecasting time interval; and a forecasting module for forecasting the wind speed according to the hybrid neutral network forecasting model to obtain the corresponding wind speed forecasting value. The method and the system provided by the invention have advantages of high computation speed and high reliability, solve the technical problem completely depending on a physical forecasting model and overcome the disadvantage of large forecasting error fluctuation based on a single model.

Description

technical field [0001] The invention relates to the field of wind speed forecasting of wind farms, and more specifically, to a method and system for short-term wind speed prediction of wind farms based on a hybrid neural network. Background technique [0002] Wind energy, as a clean and renewable energy, has received extensive attention from all over the world in recent years. Vigorously developing wind speed power generation is the need of my country's energy construction to implement a sustainable development strategy, and it is of great significance to speed up the development of the national economy, promote the adjustment of the power industry, reduce environmental pollution, and promote scientific and technological progress. my country's wind energy reserves are large, widely distributed, and have great potential. Therefore, under the environment of national policy support and tight energy supply, the development prospect of China's wind speed power generation industr...

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06N3/02
Inventor 董朝阳黄杰波孟科
Owner THE HONG KONG POLYTECHNIC UNIV
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