Data-driven small watershed real-time flood forecast method

A data-driven, small watershed technology, applied in data processing applications, forecasting, instruments, etc., can solve the problems of difficult nonlinear relationship, high computational complexity, long model calculation time, etc., to avoid misjudgment, improve forecast accuracy, Easy to adjust effects

Active Publication Date: 2016-07-06
NANJING HYDRAULIC RES INST +1
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  • Abstract
  • Description
  • Claims
  • Application Information

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Problems solved by technology

Due to the above characteristics, it is difficult to directly calculate the parameters of conceptual models and physical models from the physical properties of small watersheds, and it is impossible to accurately obtain the boundary conditions and initial conditions of small watershed floods, resulting in high computational complexity and low accuracy of flood forecasting
The traditional empirical model is difficult to deal with the nonlinear relationship between rainfall and runoff in small watershed floods, resulting in long calculation time and unstable calculation results

Method used

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Embodiment

[0042] Embodiment: a kind of small watershed flood online real-time forecasting method of the present invention, its modeling process and the calculation flowchart of forecasting process are as follows figure 1 , the calculation flow chart of the real-time forecasting process is as follows figure 2 , proceed as follows.

[0043] (1) Data collation and time series calculation

[0044] (1-1) Data collation

[0045] The rainfall and river flow data collected in small watersheds are regarded as time series data, the collection period is m days, m>1000 days, and the rainfall is the accumulated rainfall value collected once a day, in mm, n rainfall The rainfall at the station is denoted as R 1 , R 2 , R 3 ,...R i ,...R n , the river flow is collected once a day, the unit is 10,000 cubic meters per second, expressed as Q, and the rainfall at the i-th rainfall station is R i ={r i1 ,r i2 ,r i3 ,...,r im}, the river flow is Q={q 1 ,q 2 ,q 3 ,...,q m}.

[0046] (1-2) D...

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Abstract

The invention discloses a data-driven small watershed real-time flood forecast method comprising the following steps: (1) constructing a delay time sequence and a mean time sequence based on rainfall and river flow data; (2) calculating the grey relevance between the time sequences, and selecting the higher-correlation time sequence as modeling sample data; (3) modeling input-output data by use of a machine learning algorithm to get forecast models and a fitting value; (4) calculating the weight of each forecast model based on the information entropy theory; and (5) forecasting the river flow by use of the forecasting models, and performing weighted calculation on single-model forecast results to get a forecasted value of river flow. According to the invention, the complex nonlinear mapping relationship of small watershed flood is simulated by making full use of rainfall and river flow data, the information in the data is mined, and therefore, the accuracy of real-time small watershed flood forecast is improved.

Description

technical field [0001] The invention relates to a flood forecasting method, in particular to a data-driven real-time flood forecasting method for small watersheds. Background technique [0002] Small watersheds have high mountains and steep slopes, dense streams, steep rises and falls in water levels, and fierce onslaughts, often causing disasters in a short period of time, and may cause secondary disasters such as landslides, landslides, avalanches, and mud-rock flows, causing huge losses of life and property of people along the river. Therefore, forecasting techniques for small watershed floods are of great value. At present, most flood forecasting models belong to the category of deterministic hydrological models, and can be further divided into three categories: conceptual models, physical models and empirical models. The conceptual model, also known as the "grey box" model, divides the flow-confluence process of the watershed into multiple calculation units, and descri...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06Q10/04G06K9/62
CPCG06Q10/04G06F18/2411Y02A10/40
Inventor 杨阳何勇军范光亚徐海峰李卓徐天放曾睿杰
Owner NANJING HYDRAULIC RES INST
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