Saarela, Svetlana
- Department of Forest Resource Management, Swedish University of Agricultural Sciences
- Norwegian Institute of Bioeconomy Research (NIBIO)
Research article2017Peer reviewedOpen access
Saarela, Svetlana; Breidenbach, Johannes; Raumonen, Pasi; Grafstrom, Anton; Stahl, Goran; Ducey, Mark J.; Astrup, Rasmus
This study presents an approach for predicting stand-level forest attributes utilizing mobile laser scanning data collected as a nonprobability sample. Firstly, recordings of stem density were made at point locations every 10th metre along a subjectively chosen mobile laser scanning track in a forest stand. Secondly, kriging was applied to predict stem density values for the centre point of all grid cells in a 5 m x 5 m lattice across the stand. Thirdly, due to nondetectability issues, a correction term was computed based on distance sampling theory. Lastly, the mean stem density at stand level was predicted as the mean of the point-level predictions multiplied with the correction factor, and the corresponding variance was estimated. Many factors contribute to the uncertainty of the stand-level prediction; in the variance estimator, we accounted for the uncertainties due to kriging prediction and due to estimating a detectability model from the laser scanning data. The results from our new approach were found to correspond fairly well to estimates obtained using field measurements from an independent set of 54 circular sample plots. The predicted number of stems in the stand based on the proposed methodology was 1366 with a 12.9% relative standard error. The corresponding estimate based on the field plots was 1677 with a 7.5% relative standard error.
covariogram; detectability function; forest management; model-based inference
Canadian Journal of Forest Research
2017, Volume: 47, number: 9, pages: 1257-1265
Publisher: CANADIAN SCIENCE PUBLISHING, NRC RESEARCH PRESS
Forest Science
DOI: https://doi.org/10.1139/cjfr-2017-0019
https://res.slu.se/id/publ/93050