Spatial Quality Control Method for Surface Temperature Observations Based on Multiple Elements

Quality control can effectively improve the quality of surface meteorological observations. To ensure the stability and effectiveness of a quality control model under different terrain and climate conditions, it is necessary to structure a quality control model with strong generalization ability. Al...

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Main Authors: Xiaoling Ye, Xing Yang, Xiong Xiong, Shuai Yang, Yang Chen
Format: Article
Language:English
Published: Universidad Nacional de Colombia 2017-04-01
Series:Earth Sciences Research Journal
Subjects:
Online Access:https://revistas.unal.edu.co/index.php/esrj/article/view/65185
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spelling doaj-881123fbab2f49fbb0cbbb13337c53802020-11-24T22:53:21ZengUniversidad Nacional de ColombiaEarth Sciences Research Journal1794-61902339-34592017-04-0121210110710.15446/esrj.v21n2.6518546110Spatial Quality Control Method for Surface Temperature Observations Based on Multiple ElementsXiaoling Ye0Xing Yang1Xiong Xiong2Shuai Yang3Yang Chen4School of Information and Control, Nanjing University of Information Science and Technology, Nanjing 210044, ChinaSchool of Information and Control, Nanjing University of Information Science and Technology, Nanjing 210044, ChinaSchool of Information and Control, Nanjing University of Information Science and Technology, Nanjing 210044, ChinaSchool of Information and Control, Nanjing University of Information Science and Technology, Nanjing 210044, ChinaSchool of Information and Control, Nanjing University of Information Science and Technology, Nanjing 210044, ChinaQuality control can effectively improve the quality of surface meteorological observations. To ensure the stability and effectiveness of a quality control model under different terrain and climate conditions, it is necessary to structure a quality control model with strong generalization ability. Algorithms such as the Random Forest provide such generalization ability. However, machine learning algorithms are slower than traditional mathematical models. Therefore, a Random Forest quality control algorithm based on the Principal Component Analysis (PCA-RF) is proposed in this paper. Fifteen target stations under different climatic and geomorphological conditions were selected and tested using observations collected four times daily at neighboring stations from 2005-2014. The results show that using PCA to analyze the elemental composition and select elements with high correlation factors, as well as applying the Random Forest algorithm, can effectively reduce the run time and keep the accuracy of the model. The training sample dependence, model prediction accuracy and error detection rate of the PCA-RF model are superior to those of the Spatial Regression method. Therefore, the PCA-RF method is a better-quality control model for the spatial quality control of multiple elements of surface air temperature observations.https://revistas.unal.edu.co/index.php/esrj/article/view/65185Surface air temperatureQuality controlRandom ForestPrincipal component analysis
collection DOAJ
language English
format Article
sources DOAJ
author Xiaoling Ye
Xing Yang
Xiong Xiong
Shuai Yang
Yang Chen
spellingShingle Xiaoling Ye
Xing Yang
Xiong Xiong
Shuai Yang
Yang Chen
Spatial Quality Control Method for Surface Temperature Observations Based on Multiple Elements
Earth Sciences Research Journal
Surface air temperature
Quality control
Random Forest
Principal component analysis
author_facet Xiaoling Ye
Xing Yang
Xiong Xiong
Shuai Yang
Yang Chen
author_sort Xiaoling Ye
title Spatial Quality Control Method for Surface Temperature Observations Based on Multiple Elements
title_short Spatial Quality Control Method for Surface Temperature Observations Based on Multiple Elements
title_full Spatial Quality Control Method for Surface Temperature Observations Based on Multiple Elements
title_fullStr Spatial Quality Control Method for Surface Temperature Observations Based on Multiple Elements
title_full_unstemmed Spatial Quality Control Method for Surface Temperature Observations Based on Multiple Elements
title_sort spatial quality control method for surface temperature observations based on multiple elements
publisher Universidad Nacional de Colombia
series Earth Sciences Research Journal
issn 1794-6190
2339-3459
publishDate 2017-04-01
description Quality control can effectively improve the quality of surface meteorological observations. To ensure the stability and effectiveness of a quality control model under different terrain and climate conditions, it is necessary to structure a quality control model with strong generalization ability. Algorithms such as the Random Forest provide such generalization ability. However, machine learning algorithms are slower than traditional mathematical models. Therefore, a Random Forest quality control algorithm based on the Principal Component Analysis (PCA-RF) is proposed in this paper. Fifteen target stations under different climatic and geomorphological conditions were selected and tested using observations collected four times daily at neighboring stations from 2005-2014. The results show that using PCA to analyze the elemental composition and select elements with high correlation factors, as well as applying the Random Forest algorithm, can effectively reduce the run time and keep the accuracy of the model. The training sample dependence, model prediction accuracy and error detection rate of the PCA-RF model are superior to those of the Spatial Regression method. Therefore, the PCA-RF method is a better-quality control model for the spatial quality control of multiple elements of surface air temperature observations.
topic Surface air temperature
Quality control
Random Forest
Principal component analysis
url https://revistas.unal.edu.co/index.php/esrj/article/view/65185
work_keys_str_mv AT xiaolingye spatialqualitycontrolmethodforsurfacetemperatureobservationsbasedonmultipleelements
AT xingyang spatialqualitycontrolmethodforsurfacetemperatureobservationsbasedonmultipleelements
AT xiongxiong spatialqualitycontrolmethodforsurfacetemperatureobservationsbasedonmultipleelements
AT shuaiyang spatialqualitycontrolmethodforsurfacetemperatureobservationsbasedonmultipleelements
AT yangchen spatialqualitycontrolmethodforsurfacetemperatureobservationsbasedonmultipleelements
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