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Soil heat flux prediction method based on multi-source satellite remote sensing data

A technology of satellite remote sensing data and prediction methods, which is applied in measurement devices, material analysis by optical means, instruments, etc., to achieve the effect of improving the accuracy of remote sensing simulation

Active Publication Date: 2022-05-31
HOHAI UNIV
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  • Abstract
  • Description
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  • Application Information

AI Technical Summary

Problems solved by technology

However, these methods all need the measured multi-layer temperature and humidity data as the basis. Although the calculation accuracy is high, there is also the problem of scale extension.

Method used

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  • Soil heat flux prediction method based on multi-source satellite remote sensing data
  • Soil heat flux prediction method based on multi-source satellite remote sensing data
  • Soil heat flux prediction method based on multi-source satellite remote sensing data

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Experimental program
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Embodiment Construction

[0065] The present invention will be further described below in conjunction with the accompanying drawings.

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[0076] According to the solar zenith angle at local noon, an approximation of the sky scattering ratio factor is calculated as a weighting factor.

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[0097] SI=0.12*R

[0100] Aiming at the regional feature data set of the region, taking the regional feature data of the region as input, the region of the region

[0101] Based on the random forest regression model, combined with the multi-fold cross-validation method, the regional characteristic data of the region was carried out.

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[0121] Among them, Q represents the input weight of the network and the hidden layer node domain value, H represents the hidden layer output matrix, and β represents the output

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[0131] Based on the similarity of t...

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Abstract

The invention discloses a soil heat flux prediction method based on multi-source satellite remote sensing data, and the method comprises the following steps: firstly, providing a soil heat index formula, providing reference for the evaluation of the soil heat flux of a region without data, and simulating an observation station with actual measurement data by adopting a popular machine learning method, the method comprises the following steps: respectively establishing an extreme learning machine model and a Bayesian optimized random forest regression model to estimate the soil heat flux based on a model input characteristic value screened by a random forest, and finally dynamically combining an empirical index model and a machine learning model by utilizing a GBDT gradient boosting tree method to establish an optimal soil heat flux prediction model. The method is higher in calculation precision and has practical significance. The method is superior to a traditional method for calculating the result of the soil heat flux by utilizing a formula, and the accuracy of inverting evapotranspiration by utilizing an energy conservation model is improved.

Description

A prediction method of soil heat flux based on multi-source satellite remote sensing data technical field The invention belongs to the field of earth system circle layer, and is specially a kind of soil heat flux prediction based on multi-source satellite remote sensing data. measurement method. Background technique Soil heat flux, as a characteristic quantity that characterizes the energy transfer status of surface and deep soil, is the balance of surface heat. Important component, its size and positive and negative transition directly determine the soil heat budget, control the evaporation and respiration of soil water. It affects the growth and respiration of plant roots and the absorption of nutrients and water. The thermodynamic properties of the soil The exchange of matter and energy between the surface and the atmosphere has an impact on the physical processes of the Earth's atmospheric boundary layer, atmospheric circulation and regional climate Significan...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G01N21/17G06K9/62
CPCG01N21/171G01N2021/1793G06F18/24323Y02A30/60
Inventor 刘林鑫张珂晁丽君
Owner HOHAI UNIV
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