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Wind and photovoltaic generation power prediction system with multiple prediction modes

A photovoltaic power generation and prediction model technology, applied in the direction of prediction, instrumentation, data processing applications, etc., can solve the problems of long training time, long training time, slow network convergence speed, etc., and achieve simple modeling process and high prediction accuracy , the effect of fast model calculation

Inactive Publication Date: 2014-04-02
GUODIAN NANJING AUTOMATION
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AI Technical Summary

Problems solved by technology

Therefore, within a period of time after being put into operation, power prediction cannot be realized through artificial intelligence algorithms
[0004] However, in actual operation, it is found that various artificial intelligence algorithms have certain limitations. For example, the adaptive logic network ALN has high requirements for the integrity of historical data, and few wind farms or photovoltaic power stations in my country have Complete historical data; the disadvantage of BP neural network is that the learning rate is fixed, so the convergence speed of the network is slow and requires a long training time
For some complex problems, the training time required by the BP neural network algorithm may be very long

Method used

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  • Wind and photovoltaic generation power prediction system with multiple prediction modes
  • Wind and photovoltaic generation power prediction system with multiple prediction modes
  • Wind and photovoltaic generation power prediction system with multiple prediction modes

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Embodiment Construction

[0021] The prediction system of the present invention includes the following functional modules:

[0022] Numerical Weather Forecast (NWP) data collection module: Input numerical weather forecast data as the basic data of the prediction algorithm;

[0023] Prediction mode selection module: used to select a suitable prediction algorithm to predict the power of wind farms or photovoltaic farms;

[0024] Prediction algorithm module: used to predict the power of wind farms or photovoltaic farms, including physical models, adaptive logic network algorithm models, and BP neural network models;

[0025] Prediction result storage module: store the result data predicted by the prediction algorithm module.

[0026] The prediction mode selection module first checks whether the artificial intelligence algorithm model file exists, and if it does not exist, the physical model is used to predict the power; if the artificial intelligence algorithm model file exists, the numerical weather forecast data ...

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Abstract

The invention discloses a wind and photovoltaic generation power prediction system with multiple prediction modes. The system is characterized by comprising a numerical value weather prediction data acquisition module for inputting numerical value weather forecast data serving as basic data of a prediction algorithm, a prediction mode selection module used for selecting a proper prediction algorithm to predict the power of a wind power plant or a photovoltaic power plant, a prediction algorithm module used for predicting the power of the wind power plant or the photovoltaic power plant and comprising a physical model, an adaptive logic network algorithm model and a BP neural network model, and a prediction result storage module for storing result data predicted by the prediction algorithm module. According to the method, the numerical value weather forecast data is used as input data of the prediction algorithm, the most proper prediction method is selected through the mode selection module, and a power prediction result is obtained.

Description

Technical field [0001] The invention relates to wind power prediction, photovoltaic power prediction, and microgrid power prediction. The invention particularly relates to a multi-prediction mode wind power photovoltaic integrated power generation power prediction system, which belongs to the technical field of wind power photovoltaic power generation. Background technique [0002] The wind power photovoltaic integrated power generation prediction system analyzes the influence of wind speed, wind direction, temperature, humidity and other factors on the output power of wind farms, as well as the influence of solar radiation, temperature, cloud cover, wind speed and other factors on the output power of photovoltaic power plants, combined with numerical weather The forecast data is analyzed and calculated; according to the actual operating conditions and topographic characteristics, a wind power prediction model is established for each wind farm, and a photovoltaic power prediction ...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06Q10/04G06Q50/06
Inventor 赖晓路肖碧涛王峰朱晓琳胡文辉李金波刘亮白云球王永
Owner GUODIAN NANJING AUTOMATION
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