24 research outputs found
Performance of hunting statistics as spatiotemporal density indices of moose (Alces alces) in Norway
Wildlife managers are often asking for reliable information of population density across larger spatial scales. In this study, we examined the spatiotemporal relationships between moose density as estimated by cohort analysis and the density indices (1) harvest density (HD; hunter kills per km2), (2) moose seen per unit effort (SPUE), seen moose density (SMD; seen moose per km2), and density of moosevehicle accidents (MVA density; e.g., traffic kills per km2) in 16 areas in Norway with 13–42 years of data. HD showed a close positive relationship with moose density both within and between regions. However, the temporal variation in HD was best explained as a delayed reflection of moose density and tended to overestimate its growth and decline. Conversely, SMD and SPUE were unable to predict the spatial variation in moose density with high precision, though both indices were relatively precise temporal reflectors of moose density. However, the SPUE tended to underestimate population growth, probably because of a decrease in searching efficiency with increasing moose density. Compared to the other indices, MVA density performed poor as an index of moose density within regions, and not at all among regions, but may, because of its independent source of data, be used to cross-check population trends suggested by other indices. Our study shows that the temporal trends in moose density can be surveyed over large areas by the use of cheap indices based on data collected by hunters and local managers, and supports the general assumption that the number of moose killed per km2 provides a precise and isometric index of the variation in moose density at the spatial scale of our study. cohort analysis; isometric index; management; monitoring; population reconstruction; precision; saturation; seen per unit effort (SPUE).Performance of hunting statistics as spatiotemporal density indices of moose (Alces alces) in NorwaypublishedVersio
A Bayesian method for estimating moose (Alces alces) population size based on hunter observations and killed at age data
Lots of wild species, fish and mammals, are heavy harvested through fishing and hunting.
Reliable population size estimates are valuable management tools for these species. In
cases where killed at age data are available, models outlined under the framework known
as ”cohort analysis” or ”virtual population analysis (VPA)” are used extensively. In fish
stock management several models using Bayesian techniques have been developed through
the last two decades.
In this study a model using a Bayesian approach for estimating moose population size
is examined. The model combines principles from discrete time series analysis, where basic
cohort analysis based on killed at age data constitutes the bulk, and analysis in continuous
time for each hunting season based on data from hunter observations. The analysis in
continuous time aims to find age- and year-specific expressions for the hunting mortality
rate. In the discrete time series analysis, the hunting yield is viewed as a binomially
distributed variable, with pre-harvest population size as ”number of trials” and mortality
rate derived from the analysis in continuous time as ”probability parameter”. All basic
principles are known from previous surveys, but the way they are assembled is, to the
authors knowledge, innovative.
The model performed very well when tested against simulated populations with known
parameter values. For real data tests are conducted through cross-validation based on
spatial subsets and by comparing results from temporal subsets. Generally the model
performed well in these test. However, an issue is revealed by comparing results from
different temporal subsets, since the hunters ability to spot moose seems to develop over
time (years) and/or depend on moose density. This issue should not terminate the practical
implementation of the model. If a satisfying solution to the issue is achieved, it might have
a possible positive impact on other methods for estimating abundance of wild species based
on effort, a very prevalent class of models.
The real data used for testing the model, and to demonstrate some practical interpretations,
are from the municipality of Ringerike in southern Norway. Killed at age data
are available from 1988 till 2012 in combination with hunter observations. The estimates show a moose population size rapidly increasing in the period from 1988 till its peak in
1993 at a posterior mean population size of approximately 3900 individuals. Thereafter,
in line with large hunting yields, reduced reproductivity rate and increased rate of natural
mortality, the population size declined rapidly till an estimated pre-harvest population size
of approximately 1700 individuals in year 2000. Thereafter the total population size has
been estimated as quite stable, but with a declining trend over the last couple of years.
Usually the natural (non harvest) mortality rate is assumed fixed and known when
cohort analysis methods are used for estimating abundance of wild species. The model
presented in this study is capable of producing reliable, and to some extent practical
beneficial, posterior distributions for the natural mortality rate based on an informative
prior distribution and an adequate amount of data. These posterior distributions for
natural mortality rates indicate surprisingly high rates for the years around 1993
Lineære multiresponsmodeller : teoretiske nyvinninger og praktiske anvendelser for svin
The main topic of this PhD–thesis is how to minimize the prediction error for multi–response linear regression models. Two different applications are analysed, (i) bivariate response with missing data and (ii) image analysis from computed tomography (ct). Both applications were initialized by practical problems in porcine.Hovedtemaet i denne PhD–avhandlingen er metodikk for å redusere prediksjonsfeil i linære regresjonsmodeller med flere responsvariabler. To ulike bruksområder, (i) bivariat respons med manglende data og (ii) 3D bildeanalyse av data fra computertomografi (ct), blir behandlet. Begge har utganspunkt i praktiske problemstillinger fra svineproduksjon
Theoretical evaluation of prediction error in linear regression with a bivariate response variable containing missing data
Methods for linear regression with multivariate response variables are well described in statistical literature. In this study we conduct a theoretical evaluation of the expected squared prediction error in bivariate linear regression where one of the response variables contains missing data. We make the assumption of known covariance structure for the error terms. On this basis, we evaluate three well-known estimators: standard ordinary least squares, generalized least squares, and a James–Stein inspired estimator. Theoretical risk functions are worked out for all three estimators to evaluate under which circumstances it is advantageous to take the error covariance structure into account.acceptedVersio
Theoretical evaluation of prediction error in linear regression with a bivariate response variable containing missing data
Methods for linear regression with multivariate response variables are well described in statistical literature. In this study we conduct a theoretical evaluation of the expected squared prediction error in bivariate linear regression where one of the response variables contains missing data. We make the assumption of known covariance structure for the error terms. On this basis, we evaluate three well-known estimators: standard ordinary least squares, generalized least squares, and a James–Stein inspired estimator. Theoretical risk functions are worked out for all three estimators to evaluate under which circumstances it is advantageous to take the error covariance structure into account
A QTL for number of teats shows breed specific effects on number of vertebrae in pigs: Bridging the gap between molecular and quantitative genetics
Modern breeding schemes for livestock species accumulate a large amount of genotype and phenotype data which can be used for genome-wide association studies (GWAS). Many chromosomal regions harboring effects on quantitative traits have been reported from these studies, but the underlying causative mutations remain mostly undetected. In this study, we combine large genotype and phenotype data available from a commercial pig breeding scheme for three different breeds (Duroc, Landrace, and Large White) to pinpoint functional variation for a region on porcine chromosome 7 affecting number of teats (NTE). Our results show that refining trait definition by counting number of vertebrae (NVE) and ribs (RIB) helps to reduce noise from other genetic variation and increases heritability from 0.28 up to 0.62 NVE and 0.78 RIB in Duroc. However, in Landrace, the effect of the same QTL on NTE mainly affects NVE and not RIB, which is reflected in reduced heritability for RIB (0.24) compared to NVE (0.59). Further, differences in allele frequencies and accuracy of rib counting influence genetic parameters. Correction for the top SNP does not detect any other QTL effect on NTE, NVE, or RIB in Landrace or Duroc. At the molecular level, haplotypes derived from 660K SNP data detects a core haplotype of seven SNPs in Duroc. Sequence analysis of 16 Duroc animals shows that two functional mutations of the Vertnin (VRTN) gene known to increase number of thoracic vertebrae (ribs) reside on this haplotype. In Landrace, the linkage disequilibrium (LD) extends over a region of more than 3 Mb also containing both VRTN mutations. Here, other modifying loci are expected to cause the breed-specific effect. Additional variants found on the wildtype haplotype surrounding the VRTN region in all sequenced Landrace animals point toward breed specific differences which are expected to be present also across the whole genome. This Landrace specific haplotype contains two missense mutations in the ABCD4 gene, one of which is expected to have a negative effect on the protein function. Together, the integration of largescale genotype, phenotype and sequence data shows exemplarily how population parameters are influenced by underlying variation at the molecular level.</p
Sett elg og sett hjort-overvåkingen: Styrker og forbedringspotensial
Målrettet hjorteviltforvaltning krever innsamling av fortløpende informasjon om
bestandsutviklingen i kombinasjon med effektiv høsting. I denne prosessen har fritidsjegere en
viktig rolle ved at de hvert år rapporterer jaktinnsatsen og antallet elg eller hjort de observerer
under jakta. Disse observasjonene, kalt sett hjort- og sett elg-data, blir siden bearbeidet til
relevante bestandsindekser og benyttes som beslutningsunderlag i den lokale viltforvaltningen.
Til tross for utstrakt bruk, vet vi fortsatt lite om hvor presist sett elg- og sett hjort-indeksene er i
stand til å reflektere endringene i de relevante bestandsegenskapene. Her rapporterer vi
resultatene fra et 2-årig prosjekt der vi har evaluert bruken av bestandsindeksene fra sett elg
og sett hjort-overvåkingen. Hovedmålet har vært å undersøke i hvilken grad varierende
presisjon legger begrensninger på bruken av indeksene i lokalforvaltningen, og hvilke faktorer
som best kan forklare manglende presisjon. Vi har spesielt undersøkt sannsynligheten for at
viktige antagelser bak bruken av sett dyr-indeksene – som stabil oppdagbarhet og fordeling av
dyr i tid og rom – er innfridd. I tillegg har vi utredet hvorvidt vi med små endringer i
innsamlingsrutiner eller påfølgende analyser kan gjøre bestandsindeksene mer presise.
Vi benyttet sett dyr- og aldersdata fra 16 ulike elgområder og 3 hjorteområder innsamlet over 7
(2006–2012) til 44 år (1967–2012). Ved bruk av kohortanalyse av kjønns- og aldersdata fra
skutte individer rekonstruerte vi så bestandsstørrelsen og -strukturen i de ulike områdene,
hvorpå vi undersøkte graden av samvariasjon mellom sett dyr-indeksene (sett pr. jegerdag,
skutt pr. jegerdag, sett pr. km2, skutt pr. km2, kalv pr. hunndyr, hunndyr pr. hanndyr, spissbukk
pr. bukk) og de relevante bestandsegenskapene (bestandstetthet, kjønnsrate og
rekrutteringsrate) i studieperioden. I tillegg analyserte vi sett dyr-data innsamlet på dag- og
jaktfeltnivå innenfor et utvalg av kommuner og år for å avdekke i hvilken grad antagelsene bak metoden var innfridd.
Samlet sett fant vi at sett dyr-indeksene er i stand til å avspeile mellomårsvariasjonen i de ulike
bestandsegenskapene, men med ulik presisjon avhengig av art, indeks og område. Vi fant
høyere presisjon for indekser basert på sett elg-data enn på sett hjort-data, og høyere
presisjon for tetthetsindekser (sett dyr pr. jegerdag, skutt dyr pr. jegerdag, antall dyr sett, antall
dyr skutt) enn indekser på kjønnsrate (hunndyr pr. hanndyr) og rekrutteringsrate (kalv pr.
hunndyr). Særlig høy samvariasjon fant vi mellom den rekonstruerte bestandsstørrelsen og
antallet elg sett eller skutt pr. km2, mens antallet elg sett og skutt pr. jegerdag viste noe mindre
samvariasjon. Det siste skyldes at antallet dyr skutt eller sett ikke øker proporsjonalt med
jaktinnsatsen (antall jegerdager) og at jaktinnsatsen har variert mye i mange områder. I
områder med stor variasjon i jaktinnsatsen er det sannsynlig at veksten i bestandstetthet
underestimeres av sett pr. jegerdag-indeksen når jaktinnsatsen øker og overestimeres når
jaktinnsatsen synker.
Årsaken til at antallet observasjoner ikke øker i takt med jaktinnsatsen tror vi skyldes to forhold:
1) at mer marginale jaktområder (poster) tas i bruk med økende antall jegere, og 2) at elgene
som observeres oftere kanselleres som dobbeltobservasjoner når antallet jegere pr. jaktlag er
høyere. Førstnevnte forhold lar seg vanskelig kontrollere for ettersom forskjellene i
jaktområdenes (postenes) kvalitet varierer mellom områder og sannsynligvis over tid. Effekten
av det andre forholdet kan sannsynligvis reduseres vesentlig ved å endre noe på instruksen for
rapportering av sett dyr.
Alces alces, Cervus elaphus, evaluering, forvaltning, jakt, Norge,
overvåking, sett elg, sett hjort, evaluation, hunting, management,
monitoring, Norway, seen moose, seen red deerEffective wildlife management often requires information on population density and
performance of game species. In Norway, moose and red deer hunters have for many years
reported their hunting effort, as well number, sex and age class of moose or red deer observed
and killed. These observations, often called seen moose and seen red deer data (collectively:
seen deer data), are then used to calculate indices of population density (deer seen per
hunterday, deer killed per hunterday), recruitment rate (calves per female, twinning rate) and
sex ratio (adult females per male).
Although widely used by the local management to determine the annual size and structure of
harvest quotas, we lack a good understanding of how precisely these indices predict the
variation in relevant population characteristics. Particularly, we are concerned that variation in
detection probability (i.e. detectability) and spatio-temporal variation in animal distribution
affects their precision. Here we report the results from a 2-year project where we evaluated the
precision of such population indices. The main aim was to assess the extent to which low or
varying precision restricts the usefulness of the indices, and, if possible, to determine which
factors best explain the lack of precision.
To assess the precision we used seen deer and age-at-kill data from 16 moose areas and
three red deer areas collected over 7 (2006–2012) to 44 years (1967–2012). We then
reconstructed the population size and structure by the use of cohort analysis and age-at-kill
data, and compared times series of seen deer indices with the time series of relevant
population characteristics (size, sex ratio, recruitment rate) in the study areas. In addition, we
analysed the spatio-temporal variation in seen deer indices based on data collected at the
scale of day and hunting field in a subset of study areas and years.
In general, we found that seen deer indices are able to reflect the annual variation in different
population characteristics, but with varying precision depending on deer species, index and
area. Overall, we found indices based on seen moose data to be more precise than indices
based on seen red deer data, and density indices to be more precise than indices of sex ratio
and recruitment rate. We found a particularly high correlation between the reconstructed
population size and the number of moose seen or killed per km2, whereas the number of
moose seen or killed per hunterday was slightly less precise. This is because the number of
moose seen or killed did not increase proportionally with the hunting effort, and because the
hunting effort showed large annual variation in many areas. In such areas, it is likely that the
number of moose seen and killed per hunterday under-estimate the population growth rate in
years of increasing effort and over-estimate the growth rate in years of decreasing hunting
effort.
The lack of a proportional relationship between number of observations and effort is most likely
related to two conditions: 1) on average more marginal hunting areas are used as the hunting
effort increase, and 2) relatively more observations are cancelled as double observations as
the number of hunters per team increases. The former condition is difficult to control for as the
effect of hunting effort on detectability seems to vary among areas and probably also over time.
The effect of the latter condition, however, can be significantly reduced by making only small
changes in the instruction for how to record and report moose and deer observations.
Analyzing the subset of data collected at the level of day and hunting field, we found that the
detectability of moose and deer and their spatial distribution are not uniform throughout the
hunting period and across years. This was particularly evident in the red deer areas where the
number of red deer seen per hunterday increased during the hunting season in two out of three populations, despite a significant reduction in population size. We believe this to occur because
red deer concentrate in smaller areas at lower altitude during the autumn, which in turn
increase the effective population density in the areas where they are actually hunted. Annual
variation in the timing of such concentrations can partly explain the poor correlation between
number of red deer seen per hunter day and population size across years. We also suspect
that hunting effort that does not lead to observations of deer is less likely to be reported in red
deer areas. Such a violation of instructions will decrease index precision and reduce our
abilities to detect population declines.
Also the observed sex ratio and recruitment rate changed in accordance with the hunting
regime in the moose areas. E.g. the proportion of observed adult females increases during the
hunting season, in accordance with the higher proportion of adult males and calves that were
harvested. A similar pattern was not found in red deer areas, which indicates that the
detectability of males, females and calves change with different rates during the hunting
season. Possibly, this is related to the smaller size of red deer than moose and the fact that the
red deer hunting season lasts three time longer (15 weeks) than the moose season. During this
period red deer migrate from summer to wintering areas, rut, and experience significantly
changes in the environment, all of which may affect the behavior of the different sex and ageclasses.
To the extent this behavior is also affecting their detectability, annual variation in
phenology will have a significant effect on the precision of the various seen deer indices across
years.
In general, we believe that the indices from the seen moose and seen red deer monitoring
have much value for the local wildlife management. The seen deer monitoring is relatively
cheap to conduct on a regular basis, and it survey the population size when moose and deer
are in the hunting areas (summering areas), i.e., where they are most actively managed
(hunted). Alternative census methods, potentially with higher accuracy, are significantly more
expensive and are preferably conducted in winter when snow covers the ground. At that time,
however, the population may have significantly changed due to migration, and hence may not
reflect the populations that are managed during the autumn hunting season. We therefore
conclude that the seen moose monitoring provides a good alternative to other census methods
in the moose areas, and that the seen moose indices in most cases will reflect the correct
population development. The precision of the red deer population indices are less precise and
therefore we advise the management to be more cautious in predicting the population
development based on these indices. Nevertheless, the seen red deer monitoring should be
continued. The seen red deer monitoring is still in its infancy compared to the seen moose
monitoring and so far we have little experience in how to collect, process and interpret seen
red deer data. Before concluding with regards to its usefulness, we therefore need more years
of seen red deer data of high quality.
At the end of the report we list several suggestions on how to improve the process of
collecting, reporting and quality assuring seen deer data, and how the local and central
management institutions can utilize the above results. At the local level, we particularly advise
the management to include information about the hunting effort when they interpret the
variation in seen and killed moose per hunterday as an index of density. If hunting effort
increase substantially, the population growth rate is likely to be underestimated. For the same
reason the Norwegian Environment Agency should consider a change in the instruction for how
to collect and report seen deer data. In its current form hunters are asked to cancel all
observation of moose or red deer that with some certainty have been seen previously in the
same day by any of the team members. In our view, it is sufficient to cancel doubleobservations
of the same animal in the same hunting situation, but not observations of the
same individual by other team members or in other hunting situations.
To improve the seen deer monitoring we need more research into the factors leading to
variation in detectability of moose and red deer. The increasing use of GPS-radiocollars are
now providing detailed information about the behaviour and movement pattern of moose and deer, but only in few cases is this information used to learn more about their detectability
during the hunting season. By combining data on deer and hunter behaviour in the same
areas, we can learn more about the factors making some categories more detectable than
others and why it varies over time. In addition, such studies can provide more information
about the temporal variation in moose and red deer distribution during the hunting season, and
to what extent this varies between years. In particular, it is important to determine how
concentrations and expansions of animals affect the hunting activity and number of deer
observed. Based on experiences in fishery research, the detectability (or catchability) seems
first of all to be affected by fishing effort and methods. Accordingly, we need more information
about the various methods used for hunting moose and red deer throughout the country, and
how this is likely to affect the relative number of moose and deer observed.© Norsk institutt for naturforskning. Publikasjonen kan siteres fritt med kildeangivelse