Modeling Conditions Appropriate for Wildfire in South East China – A Machine Learning Approach
Wildfire is one of the most common natural hazards in the world. Fire risk estimation for the purposes of risk reduction is an important aspect in disaster studies around the world. The aim of this research was to develop a machine learning workflow process for South East China to monitor fire risks...
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2021-06-01
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doaj-bdbf9fd33b8f46daad31ef92ab51c6b52021-06-09T04:37:16ZengFrontiers Media S.A.Frontiers in Earth Science2296-64632021-06-01910.3389/feart.2021.622307622307Modeling Conditions Appropriate for Wildfire in South East China – A Machine Learning ApproachZeeshan Shirazi0Lei Wang1Valery G. Bondur2Key Laboratory of Digital Earth Science, Aerospace Information Research Institute, Chinese Academy of Sciences, Beijing, ChinaState Key Laboratory of Remote Sensing Science, Aerospace Information Research Institute, Chinese Academy of Sciences, Beijing, ChinaInstitute for Scientific Research of Aerospace Monitoring “AEROCOSMOS”, Moscow, RussiaWildfire is one of the most common natural hazards in the world. Fire risk estimation for the purposes of risk reduction is an important aspect in disaster studies around the world. The aim of this research was to develop a machine learning workflow process for South East China to monitor fire risks over a large region by learning from a grid file database containing a time series of several of the important environmental parameters largely extracted from remote sensing data products, and highlight areas as fire risk or non-fire risk over a couple of weeks in the future. The study employed fire threshold and the transductive PU learning method to identify reliable non-fire/negative training samples from the grid file database using fire/positive training samples, labeled using the MODIS MCD14ML fire location product. Different models were trained for the three natural vegetation land covers, namely evergreen broadleaf forest, mixed forest, and woody savannas in the study area. On the test dataset, the three models exhibited high sensitivity (>80%) by identifying the majority of fires in the test dataset for all land covers. The use of the reliable negatives identified though the fire threshold and PU learning process resulted in low precision and accuracy. During the model verification process, the model for the mixed forest land cover performed the best with 70% of verification fires falling within the classified fire zone. It was found that the better representation of mixed forest in the training samples made this model perform more reliably as compared to others. Improving the individual models constructed for different land covers and combining them can provide fire classification for a larger region. There is room to improve the spatial precision of fire cell classification. Introducing finer scale features that have higher correlation with fire activity and exhibit high spatial variability seems a viable way forward.https://www.frontiersin.org/articles/10.3389/feart.2021.622307/fullnatural hazardsfireremote sensingmachine learningsupport vector machinePU-learning |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Zeeshan Shirazi Lei Wang Valery G. Bondur |
spellingShingle |
Zeeshan Shirazi Lei Wang Valery G. Bondur Modeling Conditions Appropriate for Wildfire in South East China – A Machine Learning Approach Frontiers in Earth Science natural hazards fire remote sensing machine learning support vector machine PU-learning |
author_facet |
Zeeshan Shirazi Lei Wang Valery G. Bondur |
author_sort |
Zeeshan Shirazi |
title |
Modeling Conditions Appropriate for Wildfire in South East China – A Machine Learning Approach |
title_short |
Modeling Conditions Appropriate for Wildfire in South East China – A Machine Learning Approach |
title_full |
Modeling Conditions Appropriate for Wildfire in South East China – A Machine Learning Approach |
title_fullStr |
Modeling Conditions Appropriate for Wildfire in South East China – A Machine Learning Approach |
title_full_unstemmed |
Modeling Conditions Appropriate for Wildfire in South East China – A Machine Learning Approach |
title_sort |
modeling conditions appropriate for wildfire in south east china – a machine learning approach |
publisher |
Frontiers Media S.A. |
series |
Frontiers in Earth Science |
issn |
2296-6463 |
publishDate |
2021-06-01 |
description |
Wildfire is one of the most common natural hazards in the world. Fire risk estimation for the purposes of risk reduction is an important aspect in disaster studies around the world. The aim of this research was to develop a machine learning workflow process for South East China to monitor fire risks over a large region by learning from a grid file database containing a time series of several of the important environmental parameters largely extracted from remote sensing data products, and highlight areas as fire risk or non-fire risk over a couple of weeks in the future. The study employed fire threshold and the transductive PU learning method to identify reliable non-fire/negative training samples from the grid file database using fire/positive training samples, labeled using the MODIS MCD14ML fire location product. Different models were trained for the three natural vegetation land covers, namely evergreen broadleaf forest, mixed forest, and woody savannas in the study area. On the test dataset, the three models exhibited high sensitivity (>80%) by identifying the majority of fires in the test dataset for all land covers. The use of the reliable negatives identified though the fire threshold and PU learning process resulted in low precision and accuracy. During the model verification process, the model for the mixed forest land cover performed the best with 70% of verification fires falling within the classified fire zone. It was found that the better representation of mixed forest in the training samples made this model perform more reliably as compared to others. Improving the individual models constructed for different land covers and combining them can provide fire classification for a larger region. There is room to improve the spatial precision of fire cell classification. Introducing finer scale features that have higher correlation with fire activity and exhibit high spatial variability seems a viable way forward. |
topic |
natural hazards fire remote sensing machine learning support vector machine PU-learning |
url |
https://www.frontiersin.org/articles/10.3389/feart.2021.622307/full |
work_keys_str_mv |
AT zeeshanshirazi modelingconditionsappropriateforwildfireinsoutheastchinaamachinelearningapproach AT leiwang modelingconditionsappropriateforwildfireinsoutheastchinaamachinelearningapproach AT valerygbondur modelingconditionsappropriateforwildfireinsoutheastchinaamachinelearningapproach |
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