Risk-Averse Importance Sampling of Tree Attributes in High-Risk Forested Areas

Author:

Roesch Francis A1,Schroeder Todd A2,McCollum Joseph M2

Affiliation:

1. USDA Forest Service, Southern Research Station, Forest Inventory and Analysis , 200 W.T. Weaver Blvd., Asheville, NC 28804 , USA

2. USDA Forest Service, Southern Research Station, Forest Inventory and Analysis , 4700 Old Kingston Pike, Knoxville, TN 37919-5206 , USA

Abstract

Abstract This study develops the theory of risk-averse importance sampling and explains its potential application to forest inventory estimation through the use of a heuristic simulation. When the risk-producing elements of the landscape are known, a risk-averse sampling strategy can be created that results in fewer samples in high-risk areas. Our simulation shows that for certain high-risk populations, risk-averse importance sampling can be highly effective at reducing both risk to field crew members (requiring only 10% of the plot visits in the riskiest category) and sample variance relative to simple random sampling. The method is shown to be especially helpful when a population of values of interest decreases with increasing risk, with a reduction in mean square error (MSE) of 84% to 99% in these cases. The simulation also showed the opposite effect on MSE can be expected when values of interest increase with increasing risk. By increasing field crew safety, risk-averse importance sampling should also improve the frequency and accuracy of field observations, potentially leading to even bigger gains in estimate precision. We recommend risk-averse importance sampling any time hazardous conditions can result in a high number of missing observations and reasonably accurate characterizations of landscape risks can be developed.

Funder

USDA Forest Service

Southern Research Station

Forest Inventory and Analysis Program

Publisher

Oxford University Press (OUP)

Subject

Ecological Modeling,Ecology,Forestry

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4. APPLICATIONS OF MONTE CARLO

5. Impact of Mangrove Planting on Forest Biomass Carbon and Other Structural Attributes in the Rufiji Delta, Tanzania;Monga;Global Ecology and Conservation,2022

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