Runoff probability prediction method and system based on deep learning

A technology of probabilistic forecasting and deep learning, applied in forecasting, complex mathematical operations, data processing applications, etc., can solve problems such as difficult to quantify forecast uncertainty, limited literature, limited forecasting accuracy, etc.

Pending Publication Date: 2020-04-07
国家能源集团湖南巫水水电开发有限公司 +1
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AI Technical Summary

Problems solved by technology

[0006] (1) The basic data collected by the process-driven runoff prediction method is too complex, and its model solution is very time-consuming
[0007] (2) In the data-driven runoff prediction method, the traditional machine learning method has limited prediction accuracy due to the complex characteristics of runoff
[0008] (3) Previou...

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  • Runoff probability prediction method and system based on deep learning
  • Runoff probability prediction method and system based on deep learning
  • Runoff probability prediction method and system based on deep learning

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Embodiment

[0160] In the present invention, four hydrological stations in China are used as objects to construct four data sets, and the time spans of the data sets are respectively 2000-2004, 2007-2011, 2004-2010 and 2001-2007. Taking 1 day as a period, the first 60% of the data set is used as the training set, and the last 40% of the data set is used as the verification set.

[0161] The runoff in the historical period is selected as a factor that may affect the runoff, and the maximum information coefficient (MIC) between it and the runoff is calculated, as shown in Table 1. Factors greater than 0.85 in the table are filled in gray. where y i-4 Indicates the runoff of the previous 4 days, y i-2*Tyear Indicates the runoff on this day 2 years ago, and so on. Therefore, the feature input for dataset 1 is [y i-Tyear ,y i-2*Tyear ,y i-1 ,y i-2 ,...,y i-5 ], and the feature inputs of other data sets can be obtained in the same way.

[0162] Table 1 MIC value of related factors

[...

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Abstract

The invention belongs to the technical field of runoff prediction, and discloses a runoff probability prediction method and system based on deep learning, and the method comprises the steps: employinga maximum information coefficient to analyze the linear and nonlinear correlation between variables, so as to screen a runoff correlation factor; building an extreme gradient boosting tree model on the basis of correlation analysis, and inputting runoff correlation factors into a trained XGB model to complete runoff point prediction; inputting a point prediction result obtained by the XGB model into a GPR model, and performing secondary prediction to obtain a runoff probability prediction result; selecting confidence and acquiring a runoff interval prediction result under the corresponding confidence through Gaussian distribution; and optimizing hyper-parameters in the XGB model and the GPR model by adopting a Bayesian optimization algorithm. A high-precision runoff point prediction result, an appropriate runoff prediction interval and reliable runoff probability prediction distribution can be obtained, and the prediction method plays a crucial role in utilization of water resourcesand reservoir scheduling.

Description

technical field [0001] The invention belongs to the technical field of runoff prediction, and in particular relates to a runoff probability prediction method and system based on deep learning. Background technique [0002] Currently, the closest prior art: [0003] Hydropower energy is clean, cheap and renewable green energy. The biggest influencing factor of reservoir operation is runoff. Therefore, realizing high-precision and reliable runoff probability forecast is of great significance for reservoir dispatching to achieve comprehensive benefits such as flood control, power generation, water supply and shipping. However, the formation process of rainfall runoff is affected by many natural factors such as hydrology, topography, and meteorology, and presents highly nonlinear, random, and uncertain characteristics, which makes the accuracy of traditional machine learning methods for predicting runoff limited. In recent years, deep learning methods have been widely used in ...

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Application Information

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IPC IPC(8): G06Q10/04G06Q50/26G06F17/18
CPCG06Q10/04G06Q50/26G06F17/18
Inventor 柳昶明李德富布斌李冠军李冰柏海骏覃晖张振东卢桂源
Owner 国家能源集团湖南巫水水电开发有限公司
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