Identifying wildland fire ignition factors through sensitivity analysis of a neural network

被引:0
作者
Christos Vasilakos
Kostas Kalabokidis
John Hatzopoulos
Ioannis Matsinos
机构
[1] University of the Aegean,Department of Environmental Studies
[2] University of the Aegean,Department of Geography
来源
Natural Hazards | 2009年 / 50卷
关键词
Greece; Neural networks; Partial derivatives; Risk assessment; Sensitivity analysis; Wildfire occurrence;
D O I
暂无
中图分类号
学科分类号
摘要
Artificial neural networks (ANNs) show a significant ability to discover patterns in data that are too obscure to go through standard statistical methods. Data of natural phenomena usually exhibit significantly unpredictable non-linearity, but the robust behavior of a neural network makes it perfectly adaptable to environmental models such as a wildland fire danger rating system. These systems have been adopted by many developed countries that have invested in wildland fire prevention, and thus civil protection agencies are able to identify areas with high probabilities of fire ignition and resort to necessary actions. Since one of the drawbacks of ANNs is the interpretation of the final model in terms of the importance of variables, this article presents the results of sensitivity analysis performed in a back-propagation neural network (BPN) to distinguish the influence of each variable in a fire ignition risk scheme developed for Lesvos Island in Greece. Four different methods were utilized to evaluate the three fire danger indices developed within the above scheme; three of the methods are based on network’s weights after the training procedure (i.e., the percentage of influence—PI, the weight product—WP, and the partial derivatives—PD methods), and one is based on the logistic regression (LR) model between BPN inputs and observed outputs. Results showed that the occurrence of rainfall, the 10-h fuel moisture content, and the month of the year parameter are the most significant variables of the Fire Weather, Fire Hazard, and Fire Risk Indices, respectively. Relative humidity, elevation, and day of the week have a small contribution to fire ignitions in the study area. The PD method showed the best performance in ranking variables’ importance, while performance of the rest of the methods was influenced by the number of input parameters and the magnitude of their importance. The results can be used by local forest managers and other decision makers dealing with wildland fires to take the appropriate preventive measures by emphasizing on the important factors of fire occurrence.
引用
收藏
页码:125 / 143
页数:18
相关论文
共 50 条
  • [31] On reliability of neural network sensitivity analysis applied for sensor array optimization
    Szecowka, P. M.
    Szczurek, A.
    Licznerski, B. W.
    SENSORS AND ACTUATORS B-CHEMICAL, 2011, 157 (01): : 298 - 303
  • [32] A neural network based modelling and sensitivity analysis of damage ratio coefficient
    Hadzima-Nyarko, Marijana
    Nyarko, Emmanuel Karlo
    Moric, Dragan
    EXPERT SYSTEMS WITH APPLICATIONS, 2011, 38 (10) : 13405 - 13413
  • [33] Sensitivity of Spatial Analysis Neural Network Training and Interpolation to Structural Parameters
    Ana Martinez
    Jose D. Salas
    Timothy R. Green
    Mathematical Geology, 2004, 36 : 721 - 742
  • [34] A SENSITIVITY ANALYSIS OF RIVER ENVIRONMENT FACTORS THROUGH DEEP LEARNING
    Zhang, Shengping
    Qi, Jie
    INTERNATIONAL JOURNAL OF GEOMATE, 2022, 23 (97): : 146 - 153
  • [35] Sensitivity analysis of fuzzy inference neural network and the application in band selection
    Fan, Qiang
    Hu, Dan
    Xing, Yan
    2012 IEEE/WIC/ACM INTERNATIONAL CONFERENCE ON WEB INTELLIGENCE AND INTELLIGENT AGENT TECHNOLOGY (WI-IAT 2012), VOL 1, 2012, : 688 - 693
  • [36] Application of sensitivity analysis to neural network determination of financial variable relationships
    Gillespie, ES
    Wilson, RN
    APPLIED STOCHASTIC MODELS AND DATA ANALYSIS, 1997, 13 (3-4): : 409 - 414
  • [37] Identification of Weak Buses for Proper Placement of Reactive Compensation Through Sensitivity Analysis Using a Neural Network Surrogate model
    Guevara, Isaac
    Gutierrez, Marco
    Zuniga, Pavel
    2015 IEEE INTERNATIONAL AUTUMN MEETING ON POWER, ELECTRONICS AND COMPUTING (ROPEC), 2015,
  • [38] A Hybrid Swarm Intelligent Neural Network Model for Customer Churn Prediction and Identifying the Influencing Factors
    Faris, Hossam
    INFORMATION, 2018, 9 (11)
  • [39] Physics-based pruning neural network for global sensitivity analysis
    Bai, Zhiwei
    Song, Shufang
    RELIABILITY ENGINEERING & SYSTEM SAFETY, 2025, 258
  • [40] Sensitivity of spatial analysis neural network training and interpolation to structural parameters
    Martinez, A
    Salas, JD
    Green, TR
    MATHEMATICAL GEOLOGY, 2004, 36 (06): : 721 - 742