Medium and long term runoff ensemble forecasting method based on multi-model combination

An ensemble forecast, medium and long-term technology, applied in computational models, biological models, neural learning methods, etc. The effect of improving accuracy and reference value

Active Publication Date: 2020-07-28
CHINA INST OF WATER RESOURCES & HYDROPOWER RES
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  • Application Information

AI Technical Summary

Problems solved by technology

The traditional runoff forecasting method is affected by the forecasting model and data, and it is often difficult to solve the problem that the single deterministic forecasting is seriously limited due to the highly nonlinear forecasting model and the chaotic nature of the runoff process. There are still some deficiencies

Method used

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  • Medium and long term runoff ensemble forecasting method based on multi-model combination
  • Medium and long term runoff ensemble forecasting method based on multi-model combination
  • Medium and long term runoff ensemble forecasting method based on multi-model combination

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Embodiment

[0047] This embodiment provides a method for ensemble forecasting of medium and long-term runoff based on multi-model combination, including the following steps:

[0048] S1, climate system index-runoff correlation analysis: Select multiple climate system index historical data and historical runoff data of the watershed to be forecasted, and use the correlation analysis method to calculate the correlation coefficient between runoff and climate system index; select the correlation coefficient The top 20 items with the largest absolute value are used as primary selection factors to form a primary selection factor matrix;

[0049] S2, extract key influencing factors: further perform dimension reduction processing on the primary factor matrix obtained in step S1, extract key influencing factors affecting the runoff process, and generate a key influencing factor matrix;

[0050] S3. Construction of impact factor-runoff data set: normalize the key impact factor matrix obtained in st...

specific Embodiment

[0081] This example proposes a medium- and long-term runoff ensemble forecasting method based on multi-model combination, such as figure 1 As shown, firstly, the correlation relationship between 130 climate system indices and historical runoff is analyzed, and the primary factor matrix is ​​extracted from it, and then the dimensionality of the primary factor matrix is ​​reduced by the principal component analysis method to obtain the key influencing factor matrix. Then it is zero-mean normalized, and then combined with historical runoff data to construct a sample model data set. Divide the sample model data set into two categories, one is the training set and the other is the test set, and use the training set to train the sample models based on SVR, KNN and BP neural network respectively. The training process of the three sample models is as follows:

[0082] The process of training the SVR model is as follows figure 2 As shown, the particle swarm optimization algorithm is ...

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Abstract

The invention discloses a medium and long term runoff ensemble forecasting method based on multi-model combination, and relates to the technical field of hydrological prediction. According to the method, multiple machine learning algorithms are adopted to construct a medium-and-long-term runoff forecasting model, the medium-and-long-term runoff forecasting model is used as a weak learner, and an integrated model construction method based on multi-model combination is provided on the basis. Meanwhile, equivalent forecast is searched through parameter disturbance to construct a forecast set, andensemble forecast is carried out. Compared with an existing common deterministic forecasting method, the method has the advantages that part of defects existing in the method are improved, and the precision and generalization capacity of medium-and-long-term forecasting are improved. Meanwhile, the uncertainty of forecasting is quantitatively described through probability forecasting, and the accuracy and reference value of forecasting are improved.

Description

technical field [0001] The invention relates to the technical field of hydrological forecasting, in particular to a medium- and long-term runoff ensemble forecasting method based on multi-model combination. Background technique [0002] Affected by climate, meteorology, underlying surface, human activities and many other factors, the mid- and long-term runoff forecasting process has certain temporal and spatial uncertainties. Traditional mid- and long-term runoff forecasting methods such as physical genesis method, mathematical statistics method, regression analysis method and modern emerging forecasting methods such as fuzzy analysis method, gray system method, neural network and other methods often use meteorological factors as alternative factors, from which specific The watershed selects the appropriate predictors to learn the relationship between the predictors and the runoff of the watershed. The traditional runoff forecasting method is affected by the forecasting mod...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06Q10/04G06N3/08G06N3/04G06N3/00G06N20/00
CPCG06Q10/04G06N3/084G06N3/006G06N20/00G06N3/045
Inventor 杨明祥林锋赵勇蒋云钟王浩肖伟华唐颖复
Owner CHINA INST OF WATER RESOURCES & HYDROPOWER RES
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