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Wind power prediction method

A technology of wind power forecasting and forecasting value, applied in forecasting, instruments, biological neural network models, etc., can solve problems such as inability to accurately formulate system scheduling plans, unsound wind power forecasting system, and difficulty in accurately forecasting wind power

Active Publication Date: 2015-05-20
CHINA AGRI UNIV
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Problems solved by technology

[0003] Due to the imperfection of my country's current wind power forecasting system, the lack of some basic data, and the lack of accuracy, it is very difficult to accurately predict wind power power. Therefore, it is impossible to accurately formulate a system scheduling plan after wind power is connected to the grid, and it is also impossible to arrange a reasonable operation mode.

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Embodiment

[0131] Example: Figure 4 A kind of wind power prediction method that is a preferred embodiment of the present invention;

[0132] Factors affecting wind power mainly include wind speed, wind direction, air pressure, humidity, temperature, etc. For newly-built wind farms that lack basic data, historical wind speed and historical wind power can also be used for research. Collect the historical data of the actual wind farm, correct and normalize the data. After the data is processed, the BP neural network model can be established and the neural network model can be initialized. The neural network has a strong nonlinear mapping ability, and is especially suitable for processing wind power data with randomness and nonlinear characteristics. According to the environmental influence factors of the actual wind farm and its own data base, the basic input parameters of the model are determined, including the selection of the input amount, the number of nodes in each layer, the maximu...

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Abstract

The invention discloses a wind power prediction method. The method comprises the following steps: collecting sample data and processing; establishing a BP (Back Propagation) neural network model by using the processed sample data, and training the BP neural network model to obtain a final weight, a threshold value and a relative error sequence of a prediction value relative to a sample value; solving an initial prediction value of output power according to the weight and the threshold value after the training is completed; calculating a calculation relative error state corresponding to the initial prediction value of the output power by using a markov chain error correction model; combining the initial prediction value of the output power with the corresponding calculation relative error state to calculate corrected power. According to the method, the accuracy of wind power prediction is further improved, and an accurate wind power prediction value is provided for daily power generation scheduling and secure economic dispatch of a wind power generation power grid.

Description

technical field [0001] The present invention relates to the field of power forecasting, and more specifically relates to a wind power forecasting method. Background technique [0002] Due to the increasingly serious problems of environmental pollution and energy shortage, wind power has attracted widespread attention due to its advantages such as abundant resources, clean and pollution-free, small actual land occupation, and renewability. However, as an unstable energy source, wind energy is random, intermittent and uncontrollable. With the development of wind power, the penetrating power of wind farms continues to increase, and grid-connected wind power increases the difficulty of formulating power system dispatching plans. [0003] Due to the imperfection of my country's current wind power forecasting system, the lack of some basic data, and the lack of accuracy, it is very difficult to accurately predict wind power power. Therefore, it is impossible to accurately formula...

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06Q10/04G06Q50/06G06N3/02
CPCY04S10/50
Inventor 薛蕙陈娟万蓉
Owner CHINA AGRI UNIV
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