Remote Sensing Applications for Mapping Large Wildfires Based on Machine Learning and Time Series in Northwestern Portugal

被引:9
|
作者
dos Santos, Sarah Moura Batista [1 ]
Duverger, Soltan Galano [2 ]
Bento-Goncalves, Antonio [1 ]
Franca-Rocha, Washington [3 ]
Vieira, Antonio [1 ]
Teixeira, Georgia [4 ]
机构
[1] Univ Minho, Ctr Estudos Comunicacao & Soc, Dept Geog, UMinho, P-4800058 Guimaraes, Portugal
[2] Univ Fed Bahia, Doutorado Multiinst Multidisciplinar Difusao Conh, BR-40110909 Salvador, Brazil
[3] Univ Estadual Feira De Santana, Dept Ciencias Exatas, Programa Posgrad Ciencias Terra & Ambiente, PPGM,UEFS, BR-44036900 Feira De Santana, Brazil
[4] Univ Fed Uberlandia, Inst Geog, UFU, BR-38408100 Uberlandia, Brazil
来源
FIRE-SWITZERLAND | 2023年 / 6卷 / 02期
关键词
burnt area; spectral index; Google Earth Engine; landsat time series; random forest; LARGE FOREST-FIRES; BURNED AREA; LANDSAT DATA; VEGETATION; SEVERITY; ACCURACY; PATTERNS; HISTORY; PERFORMANCE; DIFFERENCE;
D O I
10.3390/fire6020043
中图分类号
Q14 [生态学(生物生态学)];
学科分类号
071012 ; 0713 ;
摘要
Mapping large wildfires (LW) is essential for environmental applications and enhances the understanding of the dynamics of affected areas. Remote sensing techniques supported by machine learning and time series have been increasingly used in studies addressing this issue and have shown potential for this type of analysis. The main aim of this article is to develop a methodology for mapping LW in northwestern Portugal using a machine learning algorithm and time series from Landsat images. For the burnt area classification, we initially used the Fourier harmonic model to define outliers in the time series that represented pixels of possible burnt areas and, then, we applied the random forest classifier for the LW classification. The results indicate that the harmonic analysis provided estimates with the actual observed values of the NBR index; thus, the pixels classified by random forest were only those that were masked, collaborated in the processing, and reduced possible spectral confusion between targets with similar behaviour. The burnt area maps revealed that similar to 23.5% of the territory was burnt at least once from 2001 to 2020. The temporal variability of the burnt area indicated that, on average, 6.504 hectares were affected by LW within the 20 years. The annual burnt area varied over the years, with the minimum annual area detected in 2014 (679.5 hectares) and the maximum mapped area detected in 2005 (73,025.1 hectares). We concluded that the process of defining the mask with the outliers considerably reduced the universe of pixels to be classified within each image, which leaves the training of the classifier focused on separating the set of pixels into two groups with very similar spectral characteristics, thus contributing so that the separation of groups with similar spectral behaviour was performed automatically and without great sampling effort. The method showed satisfactory accuracy results with little omission for burnt areas.
引用
收藏
页数:25
相关论文
共 50 条
  • [1] A MACHINE LEARNING SOLUTION FOR OPERATIONAL REMOTE SENSING OF ACTIVE WILDFIRES
    McCarthy, Nicholas F.
    Tohidi, Ali
    Valero, M. Miguel
    Dennie, Matt
    Aziz, Yawar
    Hu, Nicole
    IGARSS 2020 - 2020 IEEE INTERNATIONAL GEOSCIENCE AND REMOTE SENSING SYMPOSIUM, 2020, : 6802 - 6805
  • [2] Time-series processing of large scale remote sensing data with extreme learning machine
    Chen, Jiaoyan
    Zheng, Guozhou
    Fang, Cong
    Zhang, Ningyu
    Chen, Huajun
    Wu, Zhaohui
    NEUROCOMPUTING, 2014, 128 : 199 - 206
  • [3] Dust source susceptibility mapping based on remote sensing and machine learning techniques
    Jafari, Reza
    Amiri, Mohadeseh
    Asgari, Fatemeh
    Tarkesh, Mostafa
    ECOLOGICAL INFORMATICS, 2022, 72
  • [4] Cotton yield estimation model based on machine learning using time series UAV remote sensing data
    Xu, Weicheng
    Chen, Pengchao
    Zhan, Yilong
    Chen, Shengde
    Zhang, Lei
    Lan, Yubin
    INTERNATIONAL JOURNAL OF APPLIED EARTH OBSERVATION AND GEOINFORMATION, 2021, 104
  • [5] Cotton Fiber Quality Estimation Based on Machine Learning Using Time Series UAV Remote Sensing Data
    Xu, Weicheng
    Yang, Weiguang
    Chen, Pengchao
    Zhan, Yilong
    Zhang, Lei
    Lan, Yubin
    REMOTE SENSING, 2023, 15 (03)
  • [6] Machine Learning Methods for Remote Sensing Applications: An Overview
    Schulz, Karsten
    Haensch, Ronny
    Soergel, Uwe
    EARTH RESOURCES AND ENVIRONMENTAL REMOTE SENSING/GIS APPLICATIONS IX, 2018, 10790
  • [7] Landslide Susceptibility Mapping: Machine and Ensemble Learning Based on Remote Sensing Big Data
    Kalantar, Bahareh
    Ueda, Naonori
    Saeidi, Vahideh
    Ahmadi, Kourosh
    Halin, Alfian Abdul
    Shabani, Farzin
    REMOTE SENSING, 2020, 12 (11)
  • [8] Space-time mapping of soil organic carbon through remote sensing and machine learning
    Bartsch, Bruno dos Anjos
    Rosin, Nicolas Augusto
    Rosas, Jorge Tadeu Fim
    Poppiel, Raul Roberto
    Makino, Fernando Yutaro
    Vogel, Leticia Guadagnin
    Novais, Jean Jesus Macedo
    Falcioni, Renan
    Alves, Marcelo Rodrigo
    Dematte, Jose A. M.
    SOIL & TILLAGE RESEARCH, 2025, 248
  • [9] ONLINE PREDICTION OF DERIVED REMOTE SENSING IMAGE TIME SERIES: AN AUTONOMOUS MACHINE LEARNING APPROACH
    Das, Monidipa
    IGARSS 2020 - 2020 IEEE INTERNATIONAL GEOSCIENCE AND REMOTE SENSING SYMPOSIUM, 2020, : 1496 - 1499
  • [10] Editorial for the Special Issue "Advanced Machine Learning for Time Series Remote Sensing Data Analysis"
    Jeon, Gwanggil
    Bellandi, Valerio
    Chehri, Abdellah
    REMOTE SENSING, 2020, 12 (17) : 1 - 5