Assessing scale-dependent effects on Forest biomass productivity based on machine learning

Ecol Evol. 2022 Jul 13;12(7):e9110. doi: 10.1002/ece3.9110. eCollection 2022 Jul.

Abstract

Estimating forest above-ground biomass (AGB) productivity constitutes one of the most fundamental topics in forest ecological research. Based on a 30-ha permanent field plot in Northeastern China, we modeled AGB productivity as output, and topography, species diversity, stand structure, and a stand density variable as input across a series of area scales using the Random Forest (RF) algorithm. As the grain size increased from 10 to 200 m, we found that the relative importance of explanatory variables that drove the variation of biomass productivity varied a lot, and the model accuracy was gradually improved. The minimum sampling area for biomass productivity modeling in this region was 140 × 140 m. Our study shows that the relationship of topography, species diversity, stand structure, and stand density variables with biomass productivity modeled using the RF algorithm changes when moving from scales typical of forest surveys (10 m) to larger scales (200 m) within a controlled methodology. These results should be of considerable interest to scientists concerned with forest assessment.

Keywords: above‐ground biomass; productivity; random Forest algorithm; random spatial sampling; scale dependence.

Associated data

  • figshare/10.6084/m9.figshare.20151827