ALS-based wood volume models of forest stands and comparison with forest inventory data

Author:

Arumäe Tauri12,Lang Mait13

Affiliation:

1. Institute of Forestry and Rural Engineering, Estonian University of Life Sciences, Kreutzwaldi 5, 51014 Tartu, Estonia

2. State Forest Management Centre, 10149, Toompuiestee 24, Tallinn

3. Tartu Observatory, 61602 Tõravere, Tartumaa, Estonia

Abstract

Abstract Airborne laser scanning (ALS) based standing wood volume models were analysed in two contrasting test sites with different forest types in Estonia. In Aegviidu test site main tree species are Scots pine and Norway spruce and Laeva test site is mainly dominated by deciduous species. ALS data measurements were carried out for Aegviidu in 2008 and for Laeva in 2013. Approximately 450 sample plots were established additionally to the forest inventory dataset in both test sites. Exclusive to the sample plots, 46 stands were measured in 2012 in Aegviidu for stand level model. The sample plot-based model standard error in Aegviidu was Se = 59.8 m3/ha (22%) and in Laeva Se = 69.2 m3/ha (29%). The stand-level model based on 46 measured stands from Aegviidu had Se = 38.4 m3/ha. Based on the models a cross-validation between the two test sites was carried out and systematic differences between the two test sites were found. The reasons are related to differences in optical properties of trees, crown shapes, flight configuration and canopy cover even though the sample plot based models included ALS-based canopy cover variable. The ALS-based wood volume estimate was also compared to forest inventory (FI) data and systematically larger estimates compared to FI dataset in both test sites were found. This average systematic error increased substantially (by 100 m3/ha) for stands with volume over 250 m3/ha. It was also detected that a model developed on small point clouds drawn for sample plots may produce systematic errors when applied to stand-level point clouds.

Publisher

Walter de Gruyter GmbH

Subject

Forestry

Reference33 articles.

1. Adermann, V. 2010. Estonia (National forest inventory report). – Tomppo, E., Gschwantner, T., Lawrence, M., McRoberts, R.E. (eds.). National forest inventories: pathways for common reporting (NFI reports section). Heidelberg, Springer, 171–184.

2. Anniste, J., Viilup, Ü. 2011. Determination of forest characteristics with the laser scanning. (Metsa takseertunnuste määramisest laserskanneerimise abil). – Artiklid ja uurimused. Luua Metsanduskool, 10, 38–53. (In Estonian).

3. Arumäe, T., Lang, M. 2013. A simple model to estimate forest canopy base height from airborne lidar data. (Puistu esimese rinde võrastiku alguse kõrguse hindamine lennukilidari mõõdistusandmete järgi). – Forestry Studies / Metsanduslikud Uurimused, 58, 46–56.

4. Arumäe, T., Lang, M. 2016. A validation of coarse scale global vegetation height map for biomass estimation in hemiboreal forests in Estonia. – Baltic Forestry, 22(2). (In press).

5. Bouvier, M., Durrieu, S., Fournier, R.A., Renaud, J.P. 2015. Generalizing predictive models of forest inventory attributes using an area-based approach with airborne LiDAR data. – Remote Sensing of Environment, 156, 322–334.

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