LiDAR as a tool for remote sensing of moose (Alces alces) forage biomass

Moose (Alces alces) play an ecological keystone role in the boreal forest ecosystem and increasingly so during the last decades due to the large population increase. The growing moose population has a large impact on forage plant species, including commercially important tree species. Conversely, th...

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Bibliographic Details
Main Author: Ruud, Hans-Petter
Format: Master Thesis
Language:English
Published: Norwegian University of Life Sciences, Ås 2013
Subjects:
Online Access:http://hdl.handle.net/11250/187015
Description
Summary:Moose (Alces alces) play an ecological keystone role in the boreal forest ecosystem and increasingly so during the last decades due to the large population increase. The growing moose population has a large impact on forage plant species, including commercially important tree species. Conversely, the quantity and quality of forage feedback on the body weight and condition of the moose, which is a key trait for moose managers. To improve moose management it is central to estimate and monitor “carrying capacity” over time and on realistic management scales. In forest inventory remote sensing is extensively used with different tools, such as LiDAR (Light Detection and Ranging). This study examined the potential of LiDAR as a tool for remote sensing of moose forage biomass. The study was conducted on a 735 km2 area, within the counties of Telemark and Vestfold (N 59o20.285 E 9o39.664) in the south-eastern part of Norway. The field data used in this study were collected during a moose forage study carried out in August 2007. The field data included biomass data for 640 circular (2500 m2) plots. The LiDAR data used in this study were collected in the years 2008-2010 for multipurpose. Three modeling approaches were used: One model with only field inventory variables origin from forest inventories (Forest model), one model with only LiDAR derived variables (LiDAR model) and one model combining both forest and LiDAR variables. The aim was to asses if including LiDAR derived information resulted in better models for moose forage biomass. All models were mixed effects regression models. For all combination of tree species and seasons, one or more LiDAR variables were included in the best model. In the model validation the LiDAR + Forest models (r ranging from 0.38 to 0.51) generally performed better than the pure Forest models (r ranging from 0.35 to 0.49) which again always performed better than the pure LiDAR models (r ranging from 0.21 to 0.37). Important LiDAR variables like Understory LiDAR Cover Density (ULCD) and Spacing Index (Spi) replaced forest variables such as cutting class in some of the model groups. This study concludes that LiDAR can improve the ability to predict moose forage biomass if variables from traditional forest inventory, such as site index, dominant tree species, and cutting class, are added. Still, the validation revealed that models had low generality. This study is based on field data with a relatively low spatial precision and with a temporal mismatch between LiDAR and field data sampling. Future studies should sample data simultaneously and with higher precision to investigate if large scale monitoring of moose forage with LiDAR may become an operative tool in management.