A Comparison of Two Machine Learning Classification Methods for Remote Sensing Predictive Modeling of the Forest Fire in the North-Eastern Siberia

The problem of forest fires in Yakutia is not as well studied as in other countries. Two methods of machine learning classifications were implemented to determine the risk of fire: MaxENT and random forest. The initial materials to define fire risk factors were satellite images and their products of...

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Published in:Remote Sensing
Main Authors: Piotr Janiec, Sébastien Gadal
Format: Text
Language:English
Published: Multidisciplinary Digital Publishing Institute 2020
Subjects:
GIS
Online Access:https://doi.org/10.3390/rs12244157
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spelling ftmdpi:oai:mdpi.com:/2072-4292/12/24/4157/ 2023-08-20T04:09:27+02:00 A Comparison of Two Machine Learning Classification Methods for Remote Sensing Predictive Modeling of the Forest Fire in the North-Eastern Siberia Piotr Janiec Sébastien Gadal agris 2020-12-18 application/pdf https://doi.org/10.3390/rs12244157 EN eng Multidisciplinary Digital Publishing Institute Forest Remote Sensing https://dx.doi.org/10.3390/rs12244157 https://creativecommons.org/licenses/by/4.0/ Remote Sensing; Volume 12; Issue 24; Pages: 4157 wildfires MaxENT random forest risk modeling GIS multi-scale analysis Yakutia Artic Siberia Text 2020 ftmdpi https://doi.org/10.3390/rs12244157 2023-08-01T00:41:47Z The problem of forest fires in Yakutia is not as well studied as in other countries. Two methods of machine learning classifications were implemented to determine the risk of fire: MaxENT and random forest. The initial materials to define fire risk factors were satellite images and their products of various spatial and spectral resolution (Landsat TM, Modis TERRA, GMTED2010, VIIRS), vector data (OSM), and bioclimatic variables (WORLDCLIM). The results of the research showed a strong human influence on the risk in this region, despite the low population density. Anthropogenic factors showed a high correlation with the occurrence of wildfires, more than climatic or topographical factors. Other factors affect the risk of fires at the macroscale and microscale, which should be considered when modeling. The random forest method showed better results in the macroscale, however, the maximum entropy model was better in the microscale. The exclusion of variables that do not show a high correlation, does not always improve the modeling results. The random forest presence prediction model is a more accurate method and significantly reduces the risk territory. The reverse is the method of maximum entropy, which is not as accurate and classifies very large areas as endangered. Further study of this topic requires a clearer and conceptually developed approach to the application of remote sensing data. Therefore, this work makes sense to lay the foundations of the future, which is a completely automated fire risk assessment application in the Republic of Sakha. The results can be used in fire prophylactics and planning fire prevention. In the future, to determine the risk well, it is necessary to combine the obtained maps with the seasonal risk determined using indices (for example, the Nesterov index 1949) and the periodic dynamics of forest fires, which Isaev and Utkin studied in 1963. Such actions can help to build an application, with which it will be possible to determine the risk of wildfire and the spread of fire during ... Text Republic of Sakha Sakha Yakutia Siberia MDPI Open Access Publishing Sakha Remote Sensing 12 24 4157
institution Open Polar
collection MDPI Open Access Publishing
op_collection_id ftmdpi
language English
topic wildfires
MaxENT
random forest
risk modeling
GIS
multi-scale analysis
Yakutia
Artic
Siberia
spellingShingle wildfires
MaxENT
random forest
risk modeling
GIS
multi-scale analysis
Yakutia
Artic
Siberia
Piotr Janiec
Sébastien Gadal
A Comparison of Two Machine Learning Classification Methods for Remote Sensing Predictive Modeling of the Forest Fire in the North-Eastern Siberia
topic_facet wildfires
MaxENT
random forest
risk modeling
GIS
multi-scale analysis
Yakutia
Artic
Siberia
description The problem of forest fires in Yakutia is not as well studied as in other countries. Two methods of machine learning classifications were implemented to determine the risk of fire: MaxENT and random forest. The initial materials to define fire risk factors were satellite images and their products of various spatial and spectral resolution (Landsat TM, Modis TERRA, GMTED2010, VIIRS), vector data (OSM), and bioclimatic variables (WORLDCLIM). The results of the research showed a strong human influence on the risk in this region, despite the low population density. Anthropogenic factors showed a high correlation with the occurrence of wildfires, more than climatic or topographical factors. Other factors affect the risk of fires at the macroscale and microscale, which should be considered when modeling. The random forest method showed better results in the macroscale, however, the maximum entropy model was better in the microscale. The exclusion of variables that do not show a high correlation, does not always improve the modeling results. The random forest presence prediction model is a more accurate method and significantly reduces the risk territory. The reverse is the method of maximum entropy, which is not as accurate and classifies very large areas as endangered. Further study of this topic requires a clearer and conceptually developed approach to the application of remote sensing data. Therefore, this work makes sense to lay the foundations of the future, which is a completely automated fire risk assessment application in the Republic of Sakha. The results can be used in fire prophylactics and planning fire prevention. In the future, to determine the risk well, it is necessary to combine the obtained maps with the seasonal risk determined using indices (for example, the Nesterov index 1949) and the periodic dynamics of forest fires, which Isaev and Utkin studied in 1963. Such actions can help to build an application, with which it will be possible to determine the risk of wildfire and the spread of fire during ...
format Text
author Piotr Janiec
Sébastien Gadal
author_facet Piotr Janiec
Sébastien Gadal
author_sort Piotr Janiec
title A Comparison of Two Machine Learning Classification Methods for Remote Sensing Predictive Modeling of the Forest Fire in the North-Eastern Siberia
title_short A Comparison of Two Machine Learning Classification Methods for Remote Sensing Predictive Modeling of the Forest Fire in the North-Eastern Siberia
title_full A Comparison of Two Machine Learning Classification Methods for Remote Sensing Predictive Modeling of the Forest Fire in the North-Eastern Siberia
title_fullStr A Comparison of Two Machine Learning Classification Methods for Remote Sensing Predictive Modeling of the Forest Fire in the North-Eastern Siberia
title_full_unstemmed A Comparison of Two Machine Learning Classification Methods for Remote Sensing Predictive Modeling of the Forest Fire in the North-Eastern Siberia
title_sort comparison of two machine learning classification methods for remote sensing predictive modeling of the forest fire in the north-eastern siberia
publisher Multidisciplinary Digital Publishing Institute
publishDate 2020
url https://doi.org/10.3390/rs12244157
op_coverage agris
geographic Sakha
geographic_facet Sakha
genre Republic of Sakha
Sakha
Yakutia
Siberia
genre_facet Republic of Sakha
Sakha
Yakutia
Siberia
op_source Remote Sensing; Volume 12; Issue 24; Pages: 4157
op_relation Forest Remote Sensing
https://dx.doi.org/10.3390/rs12244157
op_rights https://creativecommons.org/licenses/by/4.0/
op_doi https://doi.org/10.3390/rs12244157
container_title Remote Sensing
container_volume 12
container_issue 24
container_start_page 4157
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