Estimating the timber value of a forest property using geographically balanced samples and unoccupied aerial vehicle data

Author:

Räty Janne1,Heikkinen Juha2,Kukkonen Mikko3,Mehtätalo Lauri1ORCID,Kangas Annika1,Packalen Petteri4ORCID

Affiliation:

1. Natural Resources Institute Finland, Bioeconomy and Environment, Forest Inventory and Planning , Yliopistokatu 6, 80100 Joensuu , Finland

2. Natural Resources Institute Finland , Natural Resources, Applied Statistical Methods, Latokartanonkaari 9, 00790 Helsinki , Finland

3. Natural Resources Institute Finland, Bioeconomy and Environment, Forest Inventory and Planning , Paavo Havaksen tie 3, 90570 Oulu , Finland

4. Natural Resources Institute Finland, Bioeconomy and Environment, Forest Inventory and Planning , Latokartanonkaari 9, 00790 Helsinki , Finland

Abstract

Abstract A common task in forestry is to determine the value of a forest property, and timber is the most valuable component of that property. Remotely sensed data collected by an unoccupied aerial vehicle (UAV) are suited for this purpose as most forest properties are of a size that permits the efficient collection of UAV data. These UAV data, when linked to a probability sample of field plots, enable the model-assisted (MA) estimation of the timber value and its associated uncertainty. Our objective was to estimate the value of timber (€/ha) in a 40-ha forest property in Finland. We used a systematic sample of field plots (n = 160) and 3D image point cloud data collected by an UAV. First, we studied the effects of spatial autocorrelation on the variance estimates associated with the timber value estimates produced using a field data-based simple expansion (EXP) estimator. The variance estimators compared were simple random sampling, Matérn, and a variant of the Grafström–Schelin estimator. Second, we compared the efficiencies of the EXP and MA estimators under different sampling intensities. The sampling intensity was varied by subsampling the systematic sample of 160 field plots. In the case of the EXP estimator, the simple random sampling variance estimator produced the largest variance estimates, whereas the Matérn estimator produced smaller variance estimates than the Grafström–Schelin estimator. The MA estimator was more efficient than the EXP estimator, which suggested that the reduction of sampling intensity from 160 to 60 plots is possible without deterioration in precision. The results suggest that the use of UAV data improves the precision of timber value estimates compared to the use of field data only. In practice, the proposed application improves the cost-efficiency of the design-based appraisal of a forest property because expensive field workload can be reduced by means of UAV data.

Funder

Research Council of Finland

Finnish Flagship Programme for the Forest-Human-Machine Interplay—Building Resilience

Redefining Value Networks and Enabling Meaningful Experiences

Unmanned Aerial Vehicles in Forest Remote Sensing

Asynchronous Datasets in Large-Area Forest Inventories by Remote Sensing

Publisher

Oxford University Press (OUP)

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