A Novel Nonlinear Algorithm for Area-Wide Near Surface Air Temperature Retrieval

This paper reports a novel nonlinear algorithm for retrieving near surface air temperature over a large area using support vector machines with satellite remote sensing and other types of data. The steps include the following. 1) Establish the 1st sub model learning dataset and validation dataset, t...

Full description

Bibliographic Details
Main Authors: Jiang-Lin Qin, Xiu-Hao Yang, He Fu, Xiu-Feng Lei
Format: Article
Language:English
Published: IEEE 2016-01-01
Series:IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing
Subjects:
Online Access:https://ieeexplore.ieee.org/document/7442757/
id doaj-cc6bc25b717e4411858acfd3c00cb3bc
record_format Article
spelling doaj-cc6bc25b717e4411858acfd3c00cb3bc2021-06-02T23:04:39ZengIEEEIEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing2151-15352016-01-01973283329610.1109/JSTARS.2016.25367457442757A Novel Nonlinear Algorithm for Area-Wide Near Surface Air Temperature RetrievalJiang-Lin Qin0Xiu-Hao Yang1He Fu2Xiu-Feng Lei3Guangxi Institute of Meteorological Disaster-Reducing Research, Nanning, ChinaDepartment of Guangxi Forestry Pest Management, Bureau of Guangxi Forestry Pest Management, Nanning, ChinaGuangxi Institute of Meteorological Disaster-Reducing Research, Nanning, ChinaGuangxi Nanning Forest Pest Management Station, Nanning, ChinaThis paper reports a novel nonlinear algorithm for retrieving near surface air temperature over a large area using support vector machines with satellite remote sensing and other types of data. The steps include the following. 1) Establish the 1st sub model learning dataset and validation dataset, then obtain the 2nd tofth sub model learning datasets and validation datasets, using unmanned weather station data and predefined influential variables. 2) Retrieve Ta of the target area. 3) Correct the generated Ta images based on prediction errors using the inverse distance weighting interpolation. The novelty of this algorithm is to apply multiple sources of remote sensing data combined with data of unmanned weather stations, topography, ground cover, DEM, and astronomy and calendar rules. The results indicated that the model has high accuracy, reliability, and generalization ability. Factors such as cloudiness, ground vegetation, and water vapor show little interference, so the model seems suitable for large area retrieving under natural conditions. The required high-performance computation was achieved by a CPU + GPU isomery and synergy parallel computation system that improved computing speed by more than 1000-fold, with easily extendable computing capability. We found that the current algorithm is superior to seven major split-window algorithms and their best combined algorithms based on prediction errors, root-meansquare errors, and the percentage of data points with <;3°C absolute error. Our SVM approach overcomes shortcomings of classical temperature remote sensing technologies, and is the first report of such application.https://ieeexplore.ieee.org/document/7442757/Area-wide retrievingdigital elevation model (DEM)GIS spatial analysishigh-performance computation (HPC)moderate-resolution imaging spectroradiometer (MODIS)multivariable analysis
collection DOAJ
language English
format Article
sources DOAJ
author Jiang-Lin Qin
Xiu-Hao Yang
He Fu
Xiu-Feng Lei
spellingShingle Jiang-Lin Qin
Xiu-Hao Yang
He Fu
Xiu-Feng Lei
A Novel Nonlinear Algorithm for Area-Wide Near Surface Air Temperature Retrieval
IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing
Area-wide retrieving
digital elevation model (DEM)
GIS spatial analysis
high-performance computation (HPC)
moderate-resolution imaging spectroradiometer (MODIS)
multivariable analysis
author_facet Jiang-Lin Qin
Xiu-Hao Yang
He Fu
Xiu-Feng Lei
author_sort Jiang-Lin Qin
title A Novel Nonlinear Algorithm for Area-Wide Near Surface Air Temperature Retrieval
title_short A Novel Nonlinear Algorithm for Area-Wide Near Surface Air Temperature Retrieval
title_full A Novel Nonlinear Algorithm for Area-Wide Near Surface Air Temperature Retrieval
title_fullStr A Novel Nonlinear Algorithm for Area-Wide Near Surface Air Temperature Retrieval
title_full_unstemmed A Novel Nonlinear Algorithm for Area-Wide Near Surface Air Temperature Retrieval
title_sort novel nonlinear algorithm for area-wide near surface air temperature retrieval
publisher IEEE
series IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing
issn 2151-1535
publishDate 2016-01-01
description This paper reports a novel nonlinear algorithm for retrieving near surface air temperature over a large area using support vector machines with satellite remote sensing and other types of data. The steps include the following. 1) Establish the 1st sub model learning dataset and validation dataset, then obtain the 2nd tofth sub model learning datasets and validation datasets, using unmanned weather station data and predefined influential variables. 2) Retrieve Ta of the target area. 3) Correct the generated Ta images based on prediction errors using the inverse distance weighting interpolation. The novelty of this algorithm is to apply multiple sources of remote sensing data combined with data of unmanned weather stations, topography, ground cover, DEM, and astronomy and calendar rules. The results indicated that the model has high accuracy, reliability, and generalization ability. Factors such as cloudiness, ground vegetation, and water vapor show little interference, so the model seems suitable for large area retrieving under natural conditions. The required high-performance computation was achieved by a CPU + GPU isomery and synergy parallel computation system that improved computing speed by more than 1000-fold, with easily extendable computing capability. We found that the current algorithm is superior to seven major split-window algorithms and their best combined algorithms based on prediction errors, root-meansquare errors, and the percentage of data points with <;3°C absolute error. Our SVM approach overcomes shortcomings of classical temperature remote sensing technologies, and is the first report of such application.
topic Area-wide retrieving
digital elevation model (DEM)
GIS spatial analysis
high-performance computation (HPC)
moderate-resolution imaging spectroradiometer (MODIS)
multivariable analysis
url https://ieeexplore.ieee.org/document/7442757/
work_keys_str_mv AT jianglinqin anovelnonlinearalgorithmforareawidenearsurfaceairtemperatureretrieval
AT xiuhaoyang anovelnonlinearalgorithmforareawidenearsurfaceairtemperatureretrieval
AT hefu anovelnonlinearalgorithmforareawidenearsurfaceairtemperatureretrieval
AT xiufenglei anovelnonlinearalgorithmforareawidenearsurfaceairtemperatureretrieval
AT jianglinqin novelnonlinearalgorithmforareawidenearsurfaceairtemperatureretrieval
AT xiuhaoyang novelnonlinearalgorithmforareawidenearsurfaceairtemperatureretrieval
AT hefu novelnonlinearalgorithmforareawidenearsurfaceairtemperatureretrieval
AT xiufenglei novelnonlinearalgorithmforareawidenearsurfaceairtemperatureretrieval
_version_ 1721400259000664064