4.7 Article

Relationships between Burn Severity and Environmental Drivers in the Temperate Coniferous Forest of Northern China

Journal

REMOTE SENSING
Volume 13, Issue 24, Pages -

Publisher

MDPI
DOI: 10.3390/rs13245127

Keywords

burn severity; wildfires; environmental drivers; random forest; live fuel moisture content; northern China

Funding

  1. Sichuan Science and Technology Program [2020YFG0048]
  2. Scientific Research Starting Foundation from Yangtze Delta Region Institute (Huzhou), University of Electronic Science and Technology of China [U03210022]
  3. Fundamental Research Funds for the Central Universities [ZYGX2019J070]

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The burn severity in northern Chinese temperate coniferous forests is mainly influenced by flammable live fuels and LFMC, with elevation being the most important topographic driver. Meteorological variables have minimal effect on burn severity. Adjusting landscape planning to include fire-resistant plants with higher LFMC could help reduce burn severity caused by wildfires in the region.
Burn severity is a key component of fire regimes and is critical for quantifying fires' impacts on key ecological processes. The spatial and temporal distribution characteristics of forest burn severity are closely related to its environmental drivers prior to the fire occurrence. The temperate coniferous forest of northern China is an important part of China's forest resources and has suffered frequent forest fires in recent years. However, the understanding of environmental drivers controlling burn severity in this fire-prone region is still limited. To fill the gap, spatial pattern metrics including pre-fire fuel variables (tree canopy cover (TCC), normalized difference vegetation index (NDVI), and live fuel moisture content (LFMC)), topographic variables (elevation, slope, and topographic radiation aspect index (TRASP)), and weather variables (relative humidity, maximum air temperature, cumulative precipitation, and maximum wind speed) were correlated with a remote sensing-derived burn severity index, the composite burn index (CBI). A random forest (RF) machine learning algorithm was applied to reveal the relative importance of the environmental drivers mentioned above to burn severity for a fire. The model achieved CBI prediction accuracy with a correlation coefficient (R) equal to 0.76, root mean square error (RMSE) equal to 0.16, and fitting line slope equal to 0.64. The results showed that burn severity was mostly influenced by flammable live fuels and LFMC. The elevation was the most important topographic driver, and meteorological variables had no obvious effect on burn severity. Our findings suggest that in addition to conducting strategic fuel reduction management activities, planning the landscapes with fire-resistant plants with higher LFMC when possible (e.g., Green firebreaks) is also indispensable for lowering the burn severity caused by wildfires in the temperate coniferous forests of northern China.

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