Detection and Monitoring of Forest Fires Using Himawari-8 Geostationary Satellite Data in South Korea
Geostationary satellite remote sensing systems are a useful tool for forest fire detection and monitoring because of their high temporal resolution over large areas. In this study, we propose a combined 3-step forest fire detection algorithm (i.e., thresholding, machine learning-based modeling, and...
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doaj-6fed2072e55e43cb99e9a3abf89ccf4a2020-11-25T01:06:05ZengMDPI AGRemote Sensing2072-42922019-01-0111327110.3390/rs11030271rs11030271Detection and Monitoring of Forest Fires Using Himawari-8 Geostationary Satellite Data in South KoreaEunna Jang0Yoojin Kang1Jungho Im2Dong-Won Lee3Jongmin Yoon4Sang-Kyun Kim5School of Urban and Environmental Engineering, Ulsan National Institute of Science and Technology (UNIST), Ulsan 44919, KoreaSchool of Urban and Environmental Engineering, Ulsan National Institute of Science and Technology (UNIST), Ulsan 44919, KoreaSchool of Urban and Environmental Engineering, Ulsan National Institute of Science and Technology (UNIST), Ulsan 44919, KoreaEnvironmental Satellite Centre, Climate and Air Quality Research Department, National Institute of Environmental Research, Incheon 22689, KoreaEnvironmental Satellite Centre, Climate and Air Quality Research Department, National Institute of Environmental Research, Incheon 22689, KoreaEnvironmental Satellite Centre, Climate and Air Quality Research Department, National Institute of Environmental Research, Incheon 22689, KoreaGeostationary satellite remote sensing systems are a useful tool for forest fire detection and monitoring because of their high temporal resolution over large areas. In this study, we propose a combined 3-step forest fire detection algorithm (i.e., thresholding, machine learning-based modeling, and post processing) using Himawari-8 geostationary satellite data over South Korea. This threshold-based algorithm filtered the forest fire candidate pixels using adaptive threshold values considering the diurnal cycle and seasonality of forest fires while allowing a high rate of false alarms. The random forest (RF) machine learning model then effectively removed the false alarms from the results of the threshold-based algorithm (overall accuracy ~99.16%, probability of detection (POD) ~93.08%, probability of false detection (POFD) ~0.07%, and 96% reduction of the false alarmed pixels for validation), and the remaining false alarms were removed through post-processing using the forest map. The proposed algorithm was compared to the two existing methods. The proposed algorithm (POD ~ 93%) successfully detected most forest fires, while the others missed many small-scale forest fires (POD ~ 50⁻60%). More than half of the detected forest fires were detected within 10 min, which is a promising result when the operational real-time monitoring of forest fires using more advanced geostationary satellite sensor data (i.e., with higher spatial and temporal resolutions) is used for rapid response and management of forest fires.https://www.mdpi.com/2072-4292/11/3/271forest fireHimawari-8threshold-based algorithmmachine learning |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Eunna Jang Yoojin Kang Jungho Im Dong-Won Lee Jongmin Yoon Sang-Kyun Kim |
spellingShingle |
Eunna Jang Yoojin Kang Jungho Im Dong-Won Lee Jongmin Yoon Sang-Kyun Kim Detection and Monitoring of Forest Fires Using Himawari-8 Geostationary Satellite Data in South Korea Remote Sensing forest fire Himawari-8 threshold-based algorithm machine learning |
author_facet |
Eunna Jang Yoojin Kang Jungho Im Dong-Won Lee Jongmin Yoon Sang-Kyun Kim |
author_sort |
Eunna Jang |
title |
Detection and Monitoring of Forest Fires Using Himawari-8 Geostationary Satellite Data in South Korea |
title_short |
Detection and Monitoring of Forest Fires Using Himawari-8 Geostationary Satellite Data in South Korea |
title_full |
Detection and Monitoring of Forest Fires Using Himawari-8 Geostationary Satellite Data in South Korea |
title_fullStr |
Detection and Monitoring of Forest Fires Using Himawari-8 Geostationary Satellite Data in South Korea |
title_full_unstemmed |
Detection and Monitoring of Forest Fires Using Himawari-8 Geostationary Satellite Data in South Korea |
title_sort |
detection and monitoring of forest fires using himawari-8 geostationary satellite data in south korea |
publisher |
MDPI AG |
series |
Remote Sensing |
issn |
2072-4292 |
publishDate |
2019-01-01 |
description |
Geostationary satellite remote sensing systems are a useful tool for forest fire detection and monitoring because of their high temporal resolution over large areas. In this study, we propose a combined 3-step forest fire detection algorithm (i.e., thresholding, machine learning-based modeling, and post processing) using Himawari-8 geostationary satellite data over South Korea. This threshold-based algorithm filtered the forest fire candidate pixels using adaptive threshold values considering the diurnal cycle and seasonality of forest fires while allowing a high rate of false alarms. The random forest (RF) machine learning model then effectively removed the false alarms from the results of the threshold-based algorithm (overall accuracy ~99.16%, probability of detection (POD) ~93.08%, probability of false detection (POFD) ~0.07%, and 96% reduction of the false alarmed pixels for validation), and the remaining false alarms were removed through post-processing using the forest map. The proposed algorithm was compared to the two existing methods. The proposed algorithm (POD ~ 93%) successfully detected most forest fires, while the others missed many small-scale forest fires (POD ~ 50⁻60%). More than half of the detected forest fires were detected within 10 min, which is a promising result when the operational real-time monitoring of forest fires using more advanced geostationary satellite sensor data (i.e., with higher spatial and temporal resolutions) is used for rapid response and management of forest fires. |
topic |
forest fire Himawari-8 threshold-based algorithm machine learning |
url |
https://www.mdpi.com/2072-4292/11/3/271 |
work_keys_str_mv |
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