Modelling the effect of habitat composition and roads on the occurrence and number of moose damage at multiple scales

We modelled the effect of habitat composition and roads on the number and occurrence of moose (Alces alces L.) damage in Ostrobothnia and Lapland using a zero-inflated count model. Models were developed for 1 km2, 25 km2 and 100 km2 landscapes consisting of equilateral rectangular grid cells. Count...

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Main Authors: Ari Nikula, Vesa Nivala, Juho Matala, Kari Heliövaara
Format: Article
Language:English
Published: Finnish Society of Forest Science 2019-01-01
Series:Silva Fennica
Subjects:
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spelling doaj-a66a76f8c8fa4f668bc8079bc36f4c422020-11-24T22:04:45ZengFinnish Society of Forest ScienceSilva Fennica2242-40752242-40752019-01-0153110.14214/sf.9918Modelling the effect of habitat composition and roads on the occurrence and number of moose damage at multiple scalesAri Nikula0Vesa Nivala1Juho Matala2Kari Heliövaara3Natural Resources Institute Finland (Luke), Bioeconomy and Environment, Ounasjoentie 6, FI-96200 Rovaniemi, FinlandNatural Resources Institute Finland (Luke), Bioeconomy and Environment, Ounasjoentie 6, FI-96200 Rovaniemi, FinlandNatural Resources Institute Finland (Luke), Natural resources, Yliopistokatu 6, FI-80100 Joensuu, FinlandUniversity of Helsinki, Department of Forest Sciences, P.O. Box 27, FI-00014 University of Helsinki, FinlandWe modelled the effect of habitat composition and roads on the number and occurrence of moose (Alces alces L.) damage in Ostrobothnia and Lapland using a zero-inflated count model. Models were developed for 1 km2, 25 km2 and 100 km2 landscapes consisting of equilateral rectangular grid cells. Count models predict the number of damage, i.e. the number of plantations and zero models the probability of a landscape being without damage for a given habitat composition. The number of moose damage in neighboring grid cells was a significant predictor in all models. The proportion of mature forest was the most frequent significant variable, and an increasing admixture of mature forests among plantations increased the number and occurrence of damage. The amount of all types of plantations was the second most common significant variable predicting increasing damage along with increasing amount of plantations. An increase in thinning forests as an admixture also increased damage in 1 km2 landscapes in both areas, whereas an increase in pine-dominated thinning forests in Lapland reduced the number of damage in 25 km2 landscapes. An increasing amount of inhabited areas in Ostrobothnia and the length of connecting roads in Lapland reduced the number of damage in 1 and 25 km2 landscapes. Differences in model variables between areas suggest that models of moose damage risk should be adjusted according to characteristics that are specific to the study area.Alces alcesforest damageforest plantationforestrydamage probabilityhabitat selectionhabitat modellingzero-inflated negative binomial distribution
collection DOAJ
language English
format Article
sources DOAJ
author Ari Nikula
Vesa Nivala
Juho Matala
Kari Heliövaara
spellingShingle Ari Nikula
Vesa Nivala
Juho Matala
Kari Heliövaara
Modelling the effect of habitat composition and roads on the occurrence and number of moose damage at multiple scales
Silva Fennica
Alces alces
forest damage
forest plantation
forestry
damage probability
habitat selection
habitat modelling
zero-inflated negative binomial distribution
author_facet Ari Nikula
Vesa Nivala
Juho Matala
Kari Heliövaara
author_sort Ari Nikula
title Modelling the effect of habitat composition and roads on the occurrence and number of moose damage at multiple scales
title_short Modelling the effect of habitat composition and roads on the occurrence and number of moose damage at multiple scales
title_full Modelling the effect of habitat composition and roads on the occurrence and number of moose damage at multiple scales
title_fullStr Modelling the effect of habitat composition and roads on the occurrence and number of moose damage at multiple scales
title_full_unstemmed Modelling the effect of habitat composition and roads on the occurrence and number of moose damage at multiple scales
title_sort modelling the effect of habitat composition and roads on the occurrence and number of moose damage at multiple scales
publisher Finnish Society of Forest Science
series Silva Fennica
issn 2242-4075
2242-4075
publishDate 2019-01-01
description We modelled the effect of habitat composition and roads on the number and occurrence of moose (Alces alces L.) damage in Ostrobothnia and Lapland using a zero-inflated count model. Models were developed for 1 km2, 25 km2 and 100 km2 landscapes consisting of equilateral rectangular grid cells. Count models predict the number of damage, i.e. the number of plantations and zero models the probability of a landscape being without damage for a given habitat composition. The number of moose damage in neighboring grid cells was a significant predictor in all models. The proportion of mature forest was the most frequent significant variable, and an increasing admixture of mature forests among plantations increased the number and occurrence of damage. The amount of all types of plantations was the second most common significant variable predicting increasing damage along with increasing amount of plantations. An increase in thinning forests as an admixture also increased damage in 1 km2 landscapes in both areas, whereas an increase in pine-dominated thinning forests in Lapland reduced the number of damage in 25 km2 landscapes. An increasing amount of inhabited areas in Ostrobothnia and the length of connecting roads in Lapland reduced the number of damage in 1 and 25 km2 landscapes. Differences in model variables between areas suggest that models of moose damage risk should be adjusted according to characteristics that are specific to the study area.
topic Alces alces
forest damage
forest plantation
forestry
damage probability
habitat selection
habitat modelling
zero-inflated negative binomial distribution
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AT vesanivala modellingtheeffectofhabitatcompositionandroadsontheoccurrenceandnumberofmoosedamageatmultiplescales
AT juhomatala modellingtheeffectofhabitatcompositionandroadsontheoccurrenceandnumberofmoosedamageatmultiplescales
AT kariheliovaara modellingtheeffectofhabitatcompositionandroadsontheoccurrenceandnumberofmoosedamageatmultiplescales
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