An Integrated Grassland Fire-Danger-Assessment System for a Mountainous National Park Using Geospatial Modelling Techniques

被引:0
|
作者
Mofokeng, Olga D. [1 ]
Adelabu, Samuel A. [1 ]
Jackson, Colbert M. [1 ]
机构
[1] Univ Free State, Fac Nat & Agr Sci, Dept Geog, ZA-9300 Bloemfontein, South Africa
来源
FIRE-SWITZERLAND | 2024年 / 7卷 / 02期
关键词
grassland fire; remote sensing; geographic information systems; machine learning; statistical methods; MaxEnt; Golden Gate Highlands National Park; FUEL MOISTURE-CONTENT; HUMAN WILDFIRE IGNITION; REMOTE-SENSING DATA; FOREST-FIRE; SPATIAL-PATTERNS; LOGISTIC-REGRESSION; TEMPORAL VARIATION; ZAGROS MOUNTAINS; YUNNAN PROVINCE; FREQUENCY RATIO;
D O I
10.3390/fire7020061
中图分类号
Q14 [生态学(生物生态学)];
学科分类号
071012 ; 0713 ;
摘要
Grasslands are key to the Earth's system and provide crucial ecosystem services. The degradation of the grassland ecosystem in South Africa is increasing alarmingly, and fire is regarded as one of the major culprits. Globally, anthropogenic climate changes have altered fire regimes in the grassland biome. Integrated fire-risk assessment systems provide an integral approach to fire prevention and mitigate the negative impacts of fire. However, fire risk-assessment is extremely challenging, owing to the myriad of factors that influence fire ignition and behaviour. Most fire danger systems do not consider fire causes; therefore, they are inadequate in validating the estimation of fire danger. Thus, fire danger assessment models should comprise the potential causes of fire. Understanding the key drivers of fire occurrence is key to the sustainable management of South Africa's grassland ecosystems. Therefore, this study explored six statistical and machine learning models-the frequency ratio (FR), weight of evidence (WoE), logistic regression (LR), decision tree (DT), random forest (RF), and support vector machine (SVM) in Google Earth Engine (GEE) to assess fire danger in an Afromontane grassland protected area (PA). The area under the receiver operating characteristic curve results (ROC/AUC) revealed that DT showed the highest precision on model fit and success rate, while the WoE was used to record the highest prediction rate (AUC = 0.74). The WoE model showed that 53% of the study area is susceptible to fire. The land surface temperature (LST) and vegetation condition index (VCI) were the most influential factors. Corresponding analysis suggested that the fire regime of the study area is fuel-dominated. Thus, fire danger management strategies within the Golden Gate Highlands National Park (GGHNP) should include fuel management aiming at correctly weighing the effects of fuel in fire ignition and spread.
引用
收藏
页数:32
相关论文
共 42 条
  • [31] An integrated methodology using geospatial data and remote sensing techniques for sustainability indicators integration: Sustainable development assessment in the Suez Canal Zone in Egypt
    Ahmed, Samira
    ElGharbawi, Tamer
    Salah, Mahmoud
    El-Mewafi, Mahmoud
    REMOTE SENSING APPLICATIONS-SOCIETY AND ENVIRONMENT, 2024, 33
  • [32] An integrated approach for the assessment and monitoring of land degradation and desertification in semi-arid regions using physico-chemical and geospatial modeling techniques
    Badapalli, Pradeep Kumar
    Kottala, Raghu Babu
    Madiga, Rajasekhar
    Golla, Veeraswamy
    ENVIRONMENTAL SCIENCE AND POLLUTION RESEARCH, 2022, 30 (55) : 116751 - 116764
  • [33] Fire blight risk assessment during bloom in an experimental orchard using BIS (Billing's Integrated System)
    Lecomte, P
    Paulin, JP
    Billing, E
    EUROPEAN JOURNAL OF PLANT PATHOLOGY, 1998, 104 (07) : 667 - 675
  • [34] Fire blight risk assessment during bloom in an experimental orchard using BIS (Billing's Integrated System)
    Pascal Lecomte
    Jean-Pierre Paulin
    Eve Billing
    European Journal of Plant Pathology, 1998, 104 : 667 - 675
  • [35] Inland wetlands mapping and vulnerability assessment using an integrated geographic information system and remote sensing techniques
    Akumu, C. E.
    Henry, J.
    Gala, T.
    Dennis, S.
    Reddy, C.
    Teggene, F.
    Haile, S.
    Archer, R. S.
    GLOBAL JOURNAL OF ENVIRONMENTAL SCIENCE AND MANAGEMENT-GJESM, 2018, 4 (04): : 387 - 400
  • [36] Application of the Nelson model to four timelag fuel classes using Oklahoma field observations: model evaluation and comparison with National Fire Danger Rating System algorithms
    Carlson, J. D.
    Bradshaw, Larry S.
    Nelson, Ralph M., Jr.
    Bensch, Randall R.
    Jabrzemski, Rafal
    INTERNATIONAL JOURNAL OF WILDLAND FIRE, 2007, 16 (02) : 204 - 216
  • [37] Vulnerability and risk assessment mapping of Bhitarkanika national park, Odisha, India using machine-based embedded decision support system
    Mohanty, Shantakar
    Mustak, Sk.
    Singh, Dharmaveer
    Van Hoang, Thanh
    Mondal, Manishree
    Wang, Chun-Tse
    FRONTIERS IN ENVIRONMENTAL SCIENCE, 2023, 11
  • [38] Performance analysis of air conditioning system integrated with thermal energy storage using enhanced machine learning modelling coupled with fire hawk optimizer
    Irshad, Kashif
    Khan, Asif Irshad
    Zayed, Mohamed E.
    Algarni, Salem
    Alqahtani, Talal
    JOURNAL OF BUILDING ENGINEERING, 2024, 98
  • [39] Assessment and optimization of an integrated energy system with electrolysis and fuel cells for electricity, cooling and hydrogen production using various optimization techniques
    Keshavarzzadeh, Amir H.
    Ahmadi, Pouria
    Safaei, Mohammad Reza
    INTERNATIONAL JOURNAL OF HYDROGEN ENERGY, 2019, 44 (39) : 21379 - 21396
  • [40] A Multi-Criteria Forest Fire Danger Assessment System on GIS Using Literature-Based Model and Analytical Hierarchy Process Model for Mediterranean Coast of Manavgat, Türkiye
    Ersoy, Izzet
    Unsal, Emre
    Gursoy, Onder
    SUSTAINABILITY, 2025, 17 (05)