New energy photovoltaic power generation power prediction method

A technology of photovoltaic power generation and forecasting method, which is applied in the electric power field, can solve the problems of difficult unexpected weather power prediction, poor sensitivity to sudden weather changes, and difficulty in providing sudden weather data, etc., to make up for the lack of unexpected weather sample data, good Photovoltaic power generation and the effect of improving the sensitivity to sudden changes in weather

Pending Publication Date: 2022-02-08
ELECTRIC POWER RES INST STATE GRID SHANXI ELECTRIC POWER
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Problems solved by technology

The reason is that cloud cover, wind speed, wind direction, air temperature, air pressure, humidity and other reference quantities at a specific time are usually used for ultra-short-term power forecasting, which is less sensitive to sudden changes in weather.
Moreover, when using prediction methods such as neural networks for sample training, it is difficult for the samples to provide more data on sudden weather, which makes it difficult for the trained neural network to predict the power under sudden weather.

Method used

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  • New energy photovoltaic power generation power prediction method
  • New energy photovoltaic power generation power prediction method
  • New energy photovoltaic power generation power prediction method

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Embodiment Construction

[0049] like figure 1 As shown, a new energy photovoltaic power generation power prediction method. Includes the following steps:

[0050] S1: Select the photovoltaic power plant historical data sample containing weather mutation sensitive factors as basic training sample A n (n = 1, 2, ..., n), then the basic training sample A.

[0051] Specifically, step S1 is basically trained sample A n (n = 1, 2, ..., n) is as follows:

[0052] A n = {Pressure change rate N, solar radiation intensity N, cloud amount N, wind speed N, wind direction N, temperature N, air pressure N, humidity N, power N}, (n = 1, 2, ...., n) Where, n is the number of substantially training samples, and is natural number;

[0053] Further, the composition of the basic training sample A in step S1 is as follows:

[0054] A = {a 1 , A 2 , ... a N }.

[0055] S2: For the basic training sample set of step S1, the variant basic sample DEFORMABLE is filtered. m (m = 1, 2, ....., M), and the screened M group deformable b...

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Abstract

The invention belongs to the technical field of electric power, and particularly relates to a new energy photovoltaic power generation power prediction method. The method comprises the following steps: S1, obtaining photovoltaic power station historical data containing weather mutation sensitive factors as a basic training sample set A; S2, according to the basic training sample set A, screening deformable basic samples to form a deformable basic sample set Deformable; S3, selecting a deformed seed Seedm (m = 1, 2,..., M) according to the deformable basic sample set Deformable, and generating a deformed seed data set Seed by the M groups of deformed seeds; S4, sequentially performing deformation according to the first (M-1) groups of data Seedm (m = 1, 2,..., M-1) of the deformation seed data set Seed, generating (M-1) groups of virtual deformation samples Virtualm (m = 1, 2,..., M-1), and forming a virtual deformation sample set Virtual; S5, performing dual neural network training according to samples in the basic training sample set A and the virtual deformation sample set Virtual; S6, performing ultra-short-term power prediction by using the trained neural network; according to the invention, the stability of the power grid is improved while the power prediction accuracy under the severe weather condition is improved.

Description

Technical field [0001] The present invention belongs to the technical field of power, particularly relates to a new energy photovoltaic power prediction method. Background technique [0002] In recent years, the proportion of new energy power generation is increasing year by year, photovoltaic and wind power generation is steadily developing and advancing. But no matter photovoltaic power generation or wind power generation due to the characteristics of randomness and instability, its power into the grid would endanger the stability of the grid. So the need for new energy generation ahead power forecasting, scheduling, planning in advance in order to guarantee grid stability. Currently, the neural network forecasting method, we can make a good prediction of the ultra-short-term power. But the basic is better predict when or mild sunny weather, predict when sudden storms or other severe weather effects are often larger error. The reason is usually used when predicting a particular...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06F30/27G06K9/62G06F113/04G06F119/06
CPCG06F30/27G06F2113/04G06F2119/06G06F18/214
Inventor 郝丽花唐震周策付文华王利峰张屹峰白志刚高义斌张光炜张振宇尹旭佳闫俊白东海张邯平刘众元王进
Owner ELECTRIC POWER RES INST STATE GRID SHANXI ELECTRIC POWER
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