123 research outputs found
Mapping forest age using National Forest Inventory, airborne laser scanning, and Sentinel-2 data
The age of forest stands is critical information for many aspects of forest
management and conservation but area-wide information about forest stand age
often does not exist. In this study, we developed regression models for
large-scale area-wide prediction of age in Norwegian forests. For model
development we used more than 4800 plots of the Norwegian National Forest
Inventory (NFI) distributed over Norway between 58{\deg} and 65{\deg} northern
latitude in a 181,773 km2 study area. Predictor variables were based on
airborne laser scanning (ALS), Sentinel-2, and existing public map data. We
performed model validation on an independent data set consisting of 63 spruce
stands with known age. The best modelling strategy was to fit independent
linear regression models to each observed site index (SI) level and using a SI
prediction map in the application of the models. The most important predictor
variable was an upper percentile of the ALS heights, and
root-mean-squared-errors (RMSE) ranged between 3 and 31 years (6% to 26%) for
SI-specific models, and 21 years (25%) on average. Mean deviance (MD) ranged
between -1 and 3 years. The models improved with increasing SI and the RMSE
were largest for low SI stands older than 100 years. Using a mapped SI, which
is required for practical applications, RMSE and MD on plot-level ranged from
19 to 56 years (29% to 53%), and 5 to 37 years (5% to 31%), respectively. For
the validation stands, the RMSE and MD were 12 (22%) and 2 years (3%). Tree
height estimated from airborne laser scanning and predicted site index were the
most important variables in the models describing age. Overall, we obtained
good results, especially for stands with high SI, that could be considered for
practical applications but see considerable potential for improvements, if
better SI maps were available
Prediction and model-assisted estimation of diameter distributions using Norwegian national forest inventory and airborne laser scanning data
Diameter at breast height (DBH) distributions offer valuable information for
operational and strategic forest management decisions. We predicted DBH
distributions using Norwegian national forest inventory and airborne laser
scanning data and compared the predictive performances of linear mixed-effects
(PPM), generalized linear-mixed (GLM) and k nearest neighbor (NN) models. While
GLM resulted in smaller prediction errors than PPM, both were clearly
outperformed by NN. We therefore studied the ability of the NN model to improve
the precision of stem frequency estimates by DBH classes in the 8.7 Mha study
area using a model-assisted (MA) estimator suitable for systematic sampling. MA
estimates yielded greater than or approximately equal efficiencies as direct
estimates using field data only. The relative efficiencies (REs) associated
with the MA estimates ranged between 0.95-1.47 and 0.96-1.67 for 2 and 6 cm DBH
class widths, respectively, when dominant tree species were assumed to be
known. The use of a predicted tree species map, instead of the observed
information, decreased the REs by up to 10%.Comment: Accepted preprint; Canadian Journal of Forest Researc
Interferometric SAR DEMs for Forest Change in Uganda 2000–2012
Monitoring changes in forest height, biomass and carbon stock is important for understanding the drivers of forest change, clarifying the geography and magnitude of the fluxes of the global carbon budget and for providing input data to REDD+. The objective of this study was to investigate the feasibility of covering these monitoring needs using InSAR DEM changes over time and associated estimates of forest biomass change and corresponding net CO2 emissions. A wall-to-wall map of net forest change for Uganda with its tropical forests was derived from two Digital Elevation Model (DEM) datasets, namely the SRTM acquired in 2000 and TanDEM-X acquired around 2012 based on Interferometric SAR (InSAR) and based on the height of the phase center. Errors in the form of bias, as well as parallel lines and belts having a certain height shift in the SRTM DEM were removed, and the penetration difference between X- and C-band SAR into the forest canopy was corrected. On average, we estimated X-band InSAR height to decrease by 7 cm during the period 2000–2012, corresponding to an estimated annual CO2 emission of 5 Mt for the entirety of Uganda. The uncertainty of this estimate given as a 95% confidence interval was 2.9–7.1 Mt. The presented method has a number of issues that require further research, including the particular SRTM biases and artifact errors; the penetration difference between the X- and C-band; the final height adjustment; and the validity of a linear conversion from InSAR height change to AGB change. However, the results corresponded well to other datasets on forest change and AGB stocks, concerning both their geographical variation and their aggregated values.publishedVersio
An analysis of stand-level size distributions of decay-affected Norway spruce trees based on harvester data
We studied size distributions of decay-affected Norway spruce trees using cut-to-length harvester data. The harvester data comprised tree-level decay and decay severity recordings from 101 final felling stands, which enabled to analyze relationships between size distributions of all and decay-affected trees. Distribution matching technique was used to transfer the size distribution of all trees into the diameter at breast height (DBH) distribution of decay-affected trees.publishedVersio
Building a high-resolution site index map using boosted regression trees: The Norwegian case
Accurate estimation of site productivity is essential for forest projections and scenario modelling. We present and evaluate models to predict site index (SI) and whether a site is productive (potential total stem volume production ≥ 1 m3·ha−1·year−1) in a wall-to-wall high-resolution (16 m × 16 m) SI map for Norway. We investigate whether remotely sensed data improve predictions. We also study the advantages and disadvantages of using boosted regression trees (BRT), a machine-learning algorithm, to create high-accuracy SI maps. We use climatic and topographical data, soil parent material, a land resource map, and depth to water, together with Sentinel-2 satellite images and airborne laser scanning metrics, as predictor variables. We use the SI observed at more than 10 000 National Forest Inventory (NFI) sample plots throughout Norway to fit BRT models and validate the models using 5822 independent temporary plots from the NFI. We benchmark our results against SI estimates from forest monitoring inventories. We find that the SI from BRT has root mean squared error (RMSE) ranging from 2.3 m (hardwoods) to 3.6 m (spruce) when tested against independent validation data from the NFI temporary plots. These RMSEs are similar or marginally better than an evaluation of SI estimates from operational forest management plans where SI normally stems from manual photo interpretation.publishedVersio
A century of national forest inventories - informing past, present and future decisions
In 2019, 100 years had elapsed since the first National Forest Inventory (NFI) was established in Norway. Motivated by a fear of over-exploitation of timber resources, NFIs today enable informed policy making by providing data vital to decision support at international, national, regional, and local scales. This Collection of articles celebrates the 100th anniversary of NFIs with a description of past, present, and future research aiming at improving the monitoring of forest and other terrestrial ecosystems.Non peer reviewe
Lidar-based Norwegian tree species detection using deep learning
Background: The mapping of tree species within Norwegian forests is a
time-consuming process, involving forest associations relying on manual
labeling by experts. The process can involve both aerial imagery, personal
familiarity, or on-scene references, and remote sensing data. The
state-of-the-art methods usually use high resolution aerial imagery with
semantic segmentation methods. Methods: We present a deep learning based tree
species classification model utilizing only lidar (Light Detection And Ranging)
data. The lidar images are segmented into four classes (Norway Spruce, Scots
Pine, Birch, background) with a U-Net based network. The model is trained with
focal loss over partial weak labels. A major benefit of the approach is that
both the lidar imagery and the base map for the labels have free and open
access. Results: Our tree species classification model achieves a
macro-averaged F1 score of 0.70 on an independent validation with National
Forest Inventory (NFI) in-situ sample plots. That is close to, but below the
performance of aerial, or aerial and lidar combined models
Building a database for energy sufficiency policies
Sufficiency measures are potentially decisive for the decarbonisation of energy systems but rarely considered in energy policy and modelling. Just as efficiency and renewable energies, the diffusion of demand-side solutions to climate change also relies on policy-making. Our extensive literature review of European and national sufficiency policies fills a gap in existing databases. We present almost 300 policy instruments clustered into relevant categories and publish them as "Energy Sufficiency Policy Database". This paper provides a description of the data clustering, the set-up of the database and an analysis of the policy instruments. A key insight is that sufficiency policy includes much more than bans of products or information tools leaving the responsibility to individuals. It is a comprehensive instrument mix of all policy types, not only enabling sufficiency action, but also reducing currently existing barriers. A policy database can serve as a good starting point for policy recommendations and modelling, further research is needed on barriers and demand-reduction potentials of sufficiency policy instruments
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