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Machine learning assisted prediction of land surface temperature (LST) based on major air pollutants over the Annamayya District of India
被引:2
|作者:
Mogaraju, Jagadish Kumar
[1
]
机构:
[1] Int Union Conservat Nat Commiss Ecosyst Management, Agroecosyst, Gurgaon, India
来源:
INTERNATIONAL JOURNAL OF ENGINEERING AND GEOSCIENCES
|
2024年
/
9卷
/
02期
关键词:
Machine learning;
Geographic information systems;
Sentinel-5-P;
MODIS;
Land surface temperature;
COVER CHANGE;
QUALITY;
IMPACTS;
D O I:
10.26833/ijeg.1394111
中图分类号:
P5 [地质学];
学科分类号:
0709 ;
081803 ;
摘要:
Remote sensing (RS), Geographic information systems (GIS), and Machine learning can be integrated to predict land surface temperatures (LST) based on the data related to carbon monoxide (CO), Formaldehyde (HCHO), Nitrogen dioxide (NO2), Sulphur dioxide (SO2), absorbing aerosol index (AAI), and Aerosol optical depth (AOD). In this study, LST was predicted using machine learning classifiers, i.e., Extra trees classifier (ET), Logistic regressors (LR), and Random Forests (RF). The accuracy of the LR classifier (0.89 or 89%) is higher than ET (82%) and RF (82%) classifiers. Evaluation metrics for each classifier are presented in the form of accuracy, Area under the curve (AUC), Recall, Precision, F1 score, Kappa, and MCC (Matthew's correlation coefficient). Based on the relative performance of the ML classifiers, it was concluded that the LR classifier performed better. Geographic information systems and RS tools were used to extract the data across spatial and temporal scales (2019 to 2022). In order to evaluate the model graphically, ROC (Receiver operating importance plot, and t- SNE (t-distributed stochastic neighbour embedding) plot were used. On validation of each ML classifier, it was observed that the RF classifier returned model complexity due to limited data availability and other factors yet to be studied post data availability. Sentinel-5-P and MODIS data are used in this study.
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页码:233 / 246
页数:14
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