Remote Sensing (Nov 2022)

Comparison of Model-Assisted Endogenous Poststratification Methods for Estimation of Above-Ground Biomass Change in Oregon, USA

  • Francisco Mauro,
  • Vicente J. Monleon,
  • Andrew N. Gray,
  • Olaf Kuegler,
  • Hailemariam Temesgen,
  • Andrew T. Hudak,
  • Patrick A. Fekety,
  • Zhiqiang Yang

DOI
https://doi.org/10.3390/rs14236024
Journal volume & issue
Vol. 14, no. 23
p. 6024

Abstract

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Quantifying above-ground biomass changes, ΔAGB, is key for understanding carbon dynamics. National Forest Inventories, NFIs, aims at providing precise estimates of ΔAGB relying on model-assisted estimators that incorporate auxiliary information to reduce uncertainty. Poststratification estimators, PS, are commonly used for this task. Recently proposed endogenous poststratification, EPS, methods have the potential to improve the precision of PS estimates of ΔAGB. Using the state of Oregon, USA, as a testing area, we developed a formal comparison between three EPS methods, traditional PS estimators used in the region, and the Horvitz-Thompson, HT, estimator. Results showed that gains in performance with respect to the HT estimator were 9.71% to 19.22% larger for EPS than for PS. Furthermore, EPS methods easily accommodated a large number of auxiliary variables, and the inclusion of independent predictions of ΔAGB as an additional auxiliary variable resulted in further gains in performance.

Keywords