Predictive Modeling of Black Spruce (Picea mariana (Mill.) B.S.P.) Wood Density Using Stand Structure Variables Derived from Airborne LiDAR Data in Boreal Forests of Ontario

Our objective was to model the average wood density in black spruce trees in representative stands across a boreal forest landscape based on relationships with predictor variables extracted from airborne light detection and ranging (LiDAR) point cloud data. Increment core samples were collected from...

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Main Authors: Bharat Pokharel, Art Groot, Douglas G. Pitt, Murray Woods, Jeffery P. Dech
Format: Article
Language:English
Published: MDPI AG 2016-12-01
Series:Forests
Subjects:
Online Access:http://www.mdpi.com/1999-4907/7/12/311
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spelling doaj-5289ad0d7a614e168f015b52c39e92ff2020-11-25T00:37:38ZengMDPI AGForests1999-49072016-12-0171231110.3390/f7120311f7120311Predictive Modeling of Black Spruce (Picea mariana (Mill.) B.S.P.) Wood Density Using Stand Structure Variables Derived from Airborne LiDAR Data in Boreal Forests of OntarioBharat Pokharel0Art Groot1Douglas G. Pitt2Murray Woods3Jeffery P. Dech4Department of Agricultural and Environmental Sciences, Tennessee State University, Nashville, TN 37209-1561, USANatural Resources Canada, Canadian Forest Service, Canadian Wood Fibre Centre, 1219 Queen St. E., Sault Ste. Marie, ON P6A 2E5, CanadaNatural Resources Canada, Canadian Forest Service, Canadian Wood Fibre Centre, 1219 Queen St. E., Sault Ste. Marie, ON P6A 2E5, CanadaOntario Ministry of Natural Resources and Forestry, FRI Unit, 3301 Trout Lake Rd., North Bay, ON P1A 4L7, CanadaDepartment of Biology and Chemistry, Nipissing University, North Bay, ON P1B 8L7, CanadaOur objective was to model the average wood density in black spruce trees in representative stands across a boreal forest landscape based on relationships with predictor variables extracted from airborne light detection and ranging (LiDAR) point cloud data. Increment core samples were collected from dominant or co-dominant black spruce trees in a network of 400 m2 plots distributed among forest stands representing the full range of species composition and stand development across a 1,231,707 ha forest management unit in northeastern Ontario, Canada. Wood quality data were generated from optical microscopy, image analysis, X-ray densitometry and diffractometry as employed in SilviScan™. Each increment core was associated with a set of field measurements at the plot level as well as a suite of LiDAR-derived variables calculated on a 20 × 20 m raster from a wall-to-wall coverage at a resolution of ~1 point m−2. We used a multiple linear regression approach to identify important predictor variables and describe relationships between stand structure and wood density for average black spruce trees in the stands we observed. A hierarchical classification model was then fitted using random forests to make spatial predictions of mean wood density for average trees in black spruce stands. The model explained 39 percent of the variance in the response variable, with an estimated root mean square error of 38.8 (kg·m−3). Among the predictor variables, P20 (second decile LiDAR height in m) and quadratic mean diameter were most important. Other predictors describing canopy depth and cover were of secondary importance and differed according to the modeling approach. LiDAR-derived variables appear to capture differences in stand structure that reflect different constraints on growth rates, determining the proportion of thin-walled earlywood cells in black spruce stems, and ultimately influencing the pattern of variation in important wood quality attributes such as wood density. A spatial characterization of variation in a desirable wood quality attribute, such as density, enhances the possibility for value chain optimization, which could allow the forest industry to be more competitive through efficient planning for black spruce management by including an indication of suitability for specific products as a modeled variable derived from standard inventory data.http://www.mdpi.com/1999-4907/7/12/311LiDARwood qualitywood densityrandom forestswood quality mappingblack spruce
collection DOAJ
language English
format Article
sources DOAJ
author Bharat Pokharel
Art Groot
Douglas G. Pitt
Murray Woods
Jeffery P. Dech
spellingShingle Bharat Pokharel
Art Groot
Douglas G. Pitt
Murray Woods
Jeffery P. Dech
Predictive Modeling of Black Spruce (Picea mariana (Mill.) B.S.P.) Wood Density Using Stand Structure Variables Derived from Airborne LiDAR Data in Boreal Forests of Ontario
Forests
LiDAR
wood quality
wood density
random forests
wood quality mapping
black spruce
author_facet Bharat Pokharel
Art Groot
Douglas G. Pitt
Murray Woods
Jeffery P. Dech
author_sort Bharat Pokharel
title Predictive Modeling of Black Spruce (Picea mariana (Mill.) B.S.P.) Wood Density Using Stand Structure Variables Derived from Airborne LiDAR Data in Boreal Forests of Ontario
title_short Predictive Modeling of Black Spruce (Picea mariana (Mill.) B.S.P.) Wood Density Using Stand Structure Variables Derived from Airborne LiDAR Data in Boreal Forests of Ontario
title_full Predictive Modeling of Black Spruce (Picea mariana (Mill.) B.S.P.) Wood Density Using Stand Structure Variables Derived from Airborne LiDAR Data in Boreal Forests of Ontario
title_fullStr Predictive Modeling of Black Spruce (Picea mariana (Mill.) B.S.P.) Wood Density Using Stand Structure Variables Derived from Airborne LiDAR Data in Boreal Forests of Ontario
title_full_unstemmed Predictive Modeling of Black Spruce (Picea mariana (Mill.) B.S.P.) Wood Density Using Stand Structure Variables Derived from Airborne LiDAR Data in Boreal Forests of Ontario
title_sort predictive modeling of black spruce (picea mariana (mill.) b.s.p.) wood density using stand structure variables derived from airborne lidar data in boreal forests of ontario
publisher MDPI AG
series Forests
issn 1999-4907
publishDate 2016-12-01
description Our objective was to model the average wood density in black spruce trees in representative stands across a boreal forest landscape based on relationships with predictor variables extracted from airborne light detection and ranging (LiDAR) point cloud data. Increment core samples were collected from dominant or co-dominant black spruce trees in a network of 400 m2 plots distributed among forest stands representing the full range of species composition and stand development across a 1,231,707 ha forest management unit in northeastern Ontario, Canada. Wood quality data were generated from optical microscopy, image analysis, X-ray densitometry and diffractometry as employed in SilviScan™. Each increment core was associated with a set of field measurements at the plot level as well as a suite of LiDAR-derived variables calculated on a 20 × 20 m raster from a wall-to-wall coverage at a resolution of ~1 point m−2. We used a multiple linear regression approach to identify important predictor variables and describe relationships between stand structure and wood density for average black spruce trees in the stands we observed. A hierarchical classification model was then fitted using random forests to make spatial predictions of mean wood density for average trees in black spruce stands. The model explained 39 percent of the variance in the response variable, with an estimated root mean square error of 38.8 (kg·m−3). Among the predictor variables, P20 (second decile LiDAR height in m) and quadratic mean diameter were most important. Other predictors describing canopy depth and cover were of secondary importance and differed according to the modeling approach. LiDAR-derived variables appear to capture differences in stand structure that reflect different constraints on growth rates, determining the proportion of thin-walled earlywood cells in black spruce stems, and ultimately influencing the pattern of variation in important wood quality attributes such as wood density. A spatial characterization of variation in a desirable wood quality attribute, such as density, enhances the possibility for value chain optimization, which could allow the forest industry to be more competitive through efficient planning for black spruce management by including an indication of suitability for specific products as a modeled variable derived from standard inventory data.
topic LiDAR
wood quality
wood density
random forests
wood quality mapping
black spruce
url http://www.mdpi.com/1999-4907/7/12/311
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