From Bray-Curtis ordination to Markov Chain Monte Carlo simulation| assessing anthropogenically-induced and/or climatically-induced changes in arboreal ecosystems

<p> Mapping forest resources is useful for identifying threat patterns and monitoring changes associated with landscapes. Remote Sensing and Geographic Information Science techniques are effective tools used to identify and forecast forest resource threats such as exotic plant invasion, vulner...

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Main Author: Madurapperuma, Buddhika Dilhan
Language:EN
Published: North Dakota State University 2013
Subjects:
Online Access:http://pqdtopen.proquest.com/#viewpdf?dispub=3589285
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spelling ndltd-PROQUEST-oai-pqdtoai.proquest.com-35892852013-11-07T15:57:46Z From Bray-Curtis ordination to Markov Chain Monte Carlo simulation| assessing anthropogenically-induced and/or climatically-induced changes in arboreal ecosystems Madurapperuma, Buddhika Dilhan Geodesy|Environmental Sciences|Remote Sensing <p> Mapping forest resources is useful for identifying threat patterns and monitoring changes associated with landscapes. Remote Sensing and Geographic Information Science techniques are effective tools used to identify and forecast forest resource threats such as exotic plant invasion, vulnerability to climate change, and land-use/cover change. This research focused on mapping abundance and distribution of Russian-olive using soil and land-use/cover data, evaluating historic land-use/cover change using mappable water-related indices addressing the primary loss of riparian arboreal ecosystems, and detecting year-to-year land-cover changes on forest conversion processes. Digital image processing techniques were used to detect the changes of arboreal ecosystems using ArcGIS ArcInfo&reg; 9.3, ENVI&reg;, and ENVI&reg; EX platforms.</p><p> Research results showed that Russian-olive at the inundated habitats of the Missouri River is abundant compared to terrestrial habitats in the Bismarck-Mandan Wildland Urban Interface. This could be a consequence of habitat quality of the floodplain, such as its silt loam and silty clay soil type, which favors Russian-olive regeneration. Russian-olive has close assemblage with cottonwood (<i>Populus deltoides</i>) and buffaloberry (<i>Shepherdia argentea</i>) trees at the lower elevations. In addition, the Russian-olive-cottonwood association correlated with low nitrogen, low pH, and high Fe, while Russian-olive- buffaloberry association occurred in highly eroded areas.</p><p> The Devils Lake sub-watershed was selected to demonstrate how both land-use/cover modification and climatic variability have caused the vulnerability of arboreal ecosystems on the fringe to such changes. Land-cover change showed that the forest acreage declined from 9% to 1%, water extent increased from 13% to 25%, and cropland extent increased from 34% to 39% between 1992 and 2006. In addition, stochastic modeling was adapted to simulate how land-use/cover change influenced forest conversion to non-forested lands at the urban-wildland fringes in Cass County. The analysis yielded two distinct statistical groups of transition probabilities for forest to non-forest, with high transition probability of unchanged forest (0.54&le; Pff &le; 0.68) from 2006 to 2011. Generally, the land-uses, such as row crops, showed an increasing trend, while grains, hay, seeds, and other crops showed a declining trend. This information is vital to forest managers for implementing restoration and conservation practices in arboreal ecosystems.</p> North Dakota State University 2013-09-20 00:00:00.0 thesis http://pqdtopen.proquest.com/#viewpdf?dispub=3589285 EN
collection NDLTD
language EN
sources NDLTD
topic Geodesy|Environmental Sciences|Remote Sensing
spellingShingle Geodesy|Environmental Sciences|Remote Sensing
Madurapperuma, Buddhika Dilhan
From Bray-Curtis ordination to Markov Chain Monte Carlo simulation| assessing anthropogenically-induced and/or climatically-induced changes in arboreal ecosystems
description <p> Mapping forest resources is useful for identifying threat patterns and monitoring changes associated with landscapes. Remote Sensing and Geographic Information Science techniques are effective tools used to identify and forecast forest resource threats such as exotic plant invasion, vulnerability to climate change, and land-use/cover change. This research focused on mapping abundance and distribution of Russian-olive using soil and land-use/cover data, evaluating historic land-use/cover change using mappable water-related indices addressing the primary loss of riparian arboreal ecosystems, and detecting year-to-year land-cover changes on forest conversion processes. Digital image processing techniques were used to detect the changes of arboreal ecosystems using ArcGIS ArcInfo&reg; 9.3, ENVI&reg;, and ENVI&reg; EX platforms.</p><p> Research results showed that Russian-olive at the inundated habitats of the Missouri River is abundant compared to terrestrial habitats in the Bismarck-Mandan Wildland Urban Interface. This could be a consequence of habitat quality of the floodplain, such as its silt loam and silty clay soil type, which favors Russian-olive regeneration. Russian-olive has close assemblage with cottonwood (<i>Populus deltoides</i>) and buffaloberry (<i>Shepherdia argentea</i>) trees at the lower elevations. In addition, the Russian-olive-cottonwood association correlated with low nitrogen, low pH, and high Fe, while Russian-olive- buffaloberry association occurred in highly eroded areas.</p><p> The Devils Lake sub-watershed was selected to demonstrate how both land-use/cover modification and climatic variability have caused the vulnerability of arboreal ecosystems on the fringe to such changes. Land-cover change showed that the forest acreage declined from 9% to 1%, water extent increased from 13% to 25%, and cropland extent increased from 34% to 39% between 1992 and 2006. In addition, stochastic modeling was adapted to simulate how land-use/cover change influenced forest conversion to non-forested lands at the urban-wildland fringes in Cass County. The analysis yielded two distinct statistical groups of transition probabilities for forest to non-forest, with high transition probability of unchanged forest (0.54&le; Pff &le; 0.68) from 2006 to 2011. Generally, the land-uses, such as row crops, showed an increasing trend, while grains, hay, seeds, and other crops showed a declining trend. This information is vital to forest managers for implementing restoration and conservation practices in arboreal ecosystems.</p>
author Madurapperuma, Buddhika Dilhan
author_facet Madurapperuma, Buddhika Dilhan
author_sort Madurapperuma, Buddhika Dilhan
title From Bray-Curtis ordination to Markov Chain Monte Carlo simulation| assessing anthropogenically-induced and/or climatically-induced changes in arboreal ecosystems
title_short From Bray-Curtis ordination to Markov Chain Monte Carlo simulation| assessing anthropogenically-induced and/or climatically-induced changes in arboreal ecosystems
title_full From Bray-Curtis ordination to Markov Chain Monte Carlo simulation| assessing anthropogenically-induced and/or climatically-induced changes in arboreal ecosystems
title_fullStr From Bray-Curtis ordination to Markov Chain Monte Carlo simulation| assessing anthropogenically-induced and/or climatically-induced changes in arboreal ecosystems
title_full_unstemmed From Bray-Curtis ordination to Markov Chain Monte Carlo simulation| assessing anthropogenically-induced and/or climatically-induced changes in arboreal ecosystems
title_sort from bray-curtis ordination to markov chain monte carlo simulation| assessing anthropogenically-induced and/or climatically-induced changes in arboreal ecosystems
publisher North Dakota State University
publishDate 2013
url http://pqdtopen.proquest.com/#viewpdf?dispub=3589285
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