主管:中华人民共和国应急管理部
主办:应急管理部天津消防研究所
ISSN 1009-0029  CN 12-1311/TU

消防科学与技术 ›› 2026, Vol. 45 ›› Issue (6): 122-127.DOI: 10.20168/j.1009-0029.2026.06.0122.06

• • 上一篇    下一篇

基于卫星监测热点的云南省林火分布及预报模型

张昱臣, 何诚   

  1. (南京警察学院,江苏 南京 210023)
  • 收稿日期:2025-03-10 修回日期:2025-06-10 出版日期:2026-06-15 发布日期:2026-06-15
  • 作者简介:张昱臣,南京警察学院本科生,主要从事无人机技术与森林火灾预防及应急响应机制研究,江苏省南京市栖霞区文澜路28号,210023。
  • 基金资助:
    国家重点研发计划项目(2023YFD2202003);国家自然科学基金项目(32371891)

Forest fire distribution and forecasting model in Yunnan Province based on satellite monitoring hotspots

Zhang Yuchen, He Cheng   

  1. (Nanjing Police College, Nanjing Jiangsu 210023, China)
  • Received:2025-03-10 Revised:2025-06-10 Online:2026-06-15 Published:2026-06-15

摘要: 本研究基于2001—2024年多源卫星热点数据主ERA5-Land气象数据,通过GIS空间分析提取热点的时空分布特征,采用多元线性回归(MLR)与自回归滑动平均模型(ARMA)解析气象因子驱动机制,经AIC准则优化模型参数,最终构建了省域-局地双层预测框架,旨在突破传统监测方法的局限。在预报模型中,多元线性回归分析结果显示,气候因子对区域环境变化具有显著驱动作用。年平均气温(β=0.38, p<0.001)与因变量呈强正相关;湿润系数(β=-0.29, p=0.005)则呈显著抑制作用;年平均风速(β=0.18, p=0.006)虽增幅平缓,但仍具有统计学显著性,证实了其对环境变化的持续推动作用。研究表明,2015-2024年林火热点呈波动下降趋势,主要分布在滇西南与滇东南地区;省域多元线性回归模型和昆明市局地模型的预测效果均较为有效。但未来仍需融合机器学习方法及地形数据,以提升模型复杂区域的适用性。本研究为西南地区森林火灾防控提供了理论支撑与技术参考,对保障生态安全、降低经济损失具有重要意义。

关键词: 森林火灾, 卫星监测, 林火热点, 回归模型

Abstract: This study is based on multi-source satellite hotspot data and ERA5-Land meteorological data from 2001 to 2024. The spatiotemporal distribution characteristics of hotspots were extracted using GIS spatial analysis. Multiple linear regression(MLR) and autoregressive moving average(ARMA) models were employed to analyze the driving mechanisms of meteorological factors, with model parameters optimized using the Akaike Information Criterion(AIC). On this basis, a provincial local dual-layer prediction framework was constructed to overcome the limitations of traditional monitoring methods. Multiple linear regression analysis revealed that climatic factors exert a significant driving effect on regional environmental changes, the annual mean temperature (β = 0.38, p < 0.001) shows a strong positive correlation with the dependent variable; The moisture coefficient (β =-0.29, p = 0.005) exhibits a significant inhibitory effect; and the annual mean wind speed (β = 0.18, p = 0.006), despite a relatively modest increment, remains statistically significant, indicating its sustained contribution to environmental change. The results further show that forest fire hotspots during from 2015 to 2024 exhibit a fluctuating downward trend, mainly concentrated in southwestern and southeastern Yunnan; both the provincial multiple linear regression model and the local model for Kunming demonstrate satisfactory predictive performance. Nevertheless, future work should integrate machine learning methods and terrain data to enhance model applicability in topographically complex regions. This study provides theoretical support and technical reference for forest fire prevention and control in southwestern China, and is of significant value for safeguarding ecological security and reducing economic losses.

Key words: forest fire, satellite monitoring, forest fire hotspots, regression model