Power prediction method of small hydropower cluster based on convolutional neural network technology

A convolutional neural network and small hydropower technology, applied in neural learning methods, biological neural network models, predictions, etc., can solve the problems of unbalanced light rain and moderate rain samples, difficult parameter setting, etc., to avoid difficult parameter setting , save input costs, and input data with rich dimensions
CN112052996BInactive Publication Date: 2022-02-25HARBIN INST OF TECH +1

Patent Information

Authority / Receiving Office
CN · China
Patent Type
Patents(China)
Current Assignee / Owner
HARBIN INST OF TECH
Publication Date
2022-02-25
Estimated Expiration
Not applicable · inactive patent

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Abstract

The invention provides a small hydropower cluster power prediction method based on convolutional neural network technology. The steps include: preprocessing of rainfall and runoff data; using random oversampling and SMOTE technology to balance the data set; building a convolutional neural network suitable for runoff prediction; converting the runoff prediction results into corresponding small hydropower output. Compared with traditional neural network technology, the method proposed in this patent adopts convolutional neural network input, takes planar space precipitation information as input, and has more abundant input data dimensions. The method of combining random oversampling and SMOTE is used to randomly generate moderate rain samples, and the invention effectively solves the problem of imbalance between light rain and moderate rain samples in the sample set. The convolutional neural network can effectively establish the mapping relationship between precipitation information and runoff information in planar space, avoiding the problem of difficult parameter setting in runoff forecasting model forecasting methods, and is suitable for online small hydropower output forecasting by power grid dispatching departments.
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Description

technical field

[0001] The invention relates to a small hydropower cluster power prediction method based on convolutional neural network technology. Background technique

[0002] The day-ahead forecasting of power grid load is the basis for ensuring the safe and stable operation of the power system. Small hydropower is an uncontrollable power source, which is generally regarded as a "negative" load by grid dispatchers. Some mountainous areas in the southeastern coastal provinces of my country are rich in water resources, and the installed capacity of local run-of-the-river small hydropower accounts for a large proportion. These small hydropower stations under the management of prefecture-level power supply units, when there is a lot of incoming water, the hydropower stations will run at full capacity, and the discarded water will be released downstream; rather than being used. Therefore, the run-of-river hydropower station is basically in a state of generating water when ...

Claims

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