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1 March 2010 Hazel grouse Bonasa bonasia population dynamics in a fragmented landscape: a metapopulation approach
Jonas Sahlsten, Frederik Wickström, Jacob Höglund
Author Affiliations +
Abstract

If the deterministic threats of fragmentation can be stopped or reversed, species may find opportunities to disperse between patches and reduce the risk of extinction. In order to realise these opportunities and apply them to conservation programmes, it is necessary to understand the dynamics involved and to estimate which capacity is high enough to sustain a population at the landscape level. In a regional population consisting of several subpopulations, the incidence function model (IFM) is a stochastic, spatially-realistic patch occupancy model which can be applied using few parameters. With this model one can simulate and manipulate a patch network for a species. In IFM, the extinction probability is assumed to be proportional to local population size which in turn is assumed to be proportional to the local patch area. Although, the basic area of patches is of importance, influence from the geometric shape of patches may be equally or more important to determine potential incidence of a species in a particular patch. Basic area measurements might overestimate the probability of occupancy and/or capacity of a certain patch network to sustain a metapopulation. One applicable method to use in dealing with regional dynamics in fragmented landscapes is metapopulation capacity; derived from metapopulation theory, this method can be used to rank different patch networks. In our study, we examine if there is any difference in occupancy level and capacity between four different area scenarios. This allows us to determine if the basic area measurement of patches can result in a biased estimation of population viability in a specific landscape. It is concluded that perimeter-area related measures of patch size combined with capacity could be a more important measure for estimation of population dynamics and impact of landscape changes compared to basic area measurement and occupancy levels.

Fragmentation and degradation of habitats are major contributors to the endangerment of species (Brooks et al. 2002, Reed 2004, Watling & Donnelly 2006). The impact of fragmentation depends mainly on two factors. Firstly, the physical configuration of the landscape structure, so called structural fragmentation (Tischendorf & Fahrig 2000). Secondly, how individuals perceive their surroundings and their ability to disperse, so called functional fragmentation. Fragmentation may lead to extinction, or to populations being prone to extinction, due to decreasing genetic variation and inbreeding depression, and/or stochastic ecological events (Gutzwiller 2002, Stacey & Taper 1992). If the deterministic threats leading to fragmentation can be stopped or reversed, a species may find opportunities to disperse between patches and reduce the risk of extinction (Landweber & Dobson 1999, Clobert et al. 2001). However, in order to stop or reverse deterministic threats, it is necessary to understand the dynamics of the population in question and to estimate which capacity is high enough to sustain a threatened species at the landscape level. A sustainable capacity is defined as a landscape's capacity to sustain a metapopulation (Hanski & Ovaskainen 2000).

A regional population consisting of several subpopulations (due to a patchy distribution of suitable habitats) connected by migration, and in which regional dynamics are driven by local extinction and recolonisation events, is characterised as a metapopulation (Hanski & Gilpin 1997). Although there are several factors influencing turnover in a metapopulation, e.g. birth and death rates, patch quality and predation, interconnection between subpopulations is a crucial factor for the existence of a metapopulation (Schumaker 1996). One of the more widely-used techniques in modelling metapopulation dynamics within real landscapes is the incidence function model (IFM; Hanski et al. 1996, Sjögren-Gulve & Hanski 2000, Hokit et al. 2001). In contrast to Levins' (1969) simple metapopulation model, IFM is a stochastic, spatially realistic, occupancy model describing the probability of occupancy of each single habitat patch (Hanski 1994, Hanski et al. 1996, Hanski & Gilpin 1997). It is possible to apply this model with few parameters; the information required is presence/absence 'snapshot' data from a set of habitat patches, which are defined according to patch area and pair-wise distances between patches. With knowledge of these parameters one can simulate and manipulate a patch network for a species (Hanski 1994).

The consequence of fragmentation on original habitat is an increase in that habitat's edge component and therefore an increase in the extent of edge effect (Primack 1998). The distance that edge effects extend into patches is highly variable (Laurence & Yensen 1991), and this may have consequences when unit area is used in estimations of population size and dynamics. Generally, the area of a patch is considered as linearly correlated with population size or species diversity (Connor & McCoy 1979, Martin & McComb 2003). In IFM, the extinction probability is assumed to be proportional to local population size which in turn is proportional to the local patch area (Hanski 1994). Although the basic area of patches is of importance, influence from the geometric shape of patches may be equally or more important in determining potential incidence of a species in a particular patch (Burrough 1981, Krummel et al. 1987, Helzer & Jelinski 1999, J. Sahlsten unpubl. data). The shape in terms of perimeter*area ratio may also be important when considering suitability of patches to sustain a viable population (Collinge & Palmer 2002), especially with management goals that consider connectivity and flow of genes, organisms and energy (Milne 1988, Jorge & Garcia 1997). If the shape of patches has an impact on the capacity of patches to sustain a local population size, it should also have an impact on the probability of extinction. Hence, basic area measurements might underestimate the impact of changes in a landscape, or perhaps overestimate the capacity of a certain patch network to sustain a metapopulation. Considering capacity in addition to occupancy levels is also important, because occupancy levels may be proportionally higher in a landscape although it has lower capacity, which may lead to overestimation of population viability in a landscape. One applicable method to use in dealing with regional dynamics in fragmented landscapes is metapopulation capacity (Hanski & Ovaskainen 2000). This method is commonly used in conservation planning or management strategies to rank different patch networks in terms of their capacity to sustain a viable metapopulation. However, only basic area measurements are currently used in these applications which can result in a biased estimation of population viability in a specific landscape and thereby risking misguided recommendations.

In this study we examine the effects of four different area-related scenarios, basic area and area reduced by varying amounts of edge zone, on occupancy level and capacity estimates using metapopulation theory. To alter the area*perimeter ratio and recalculate the effective area in our data we apply a GIS (Geographic Information System) method and reduce patch area by edge zones at different magnitudes by using negative buffering. By doing this, perimeter lengths, including hollows within patches, are automatically taken into account. Two patches with equal area but different perimeters are reduced proportionally to this difference, e.g. smooth vs convoluted perimeter. The study species is the hazel grouse Bonasa bonasia, a habitat specialist with poor dispersal ability and therefore likely to be strongly affected by habitat fragmentation (Andrén 1994, With & Crist 1995). Using GIS remote sensing, a technique ideal for monitoring large and remote areas, and the ecological niche factor analysis (ENFA) of Hirzel et al. (2002a,b) and Hirzel & Arlettaz (2003), a network of suitable patches for this species was identified (J. Sahlsten, unpubl. data). Occupancy level and capacity were estimated for this predefined patch network using our four different area-related scenarios. The results from these simulations indicate that the perimeter-area related size measure does not affect proportion of occupancy. On the other hand, the landscape seems to be sensitive to changes in terms of its capacity to support a viable metapopulation. We conclude from our results that perimeter-area related measures of patch size combined with capacity could be a more important measure for the estimation of population dynamics and impact of landscape changes compared to basic area measurement and occupancy levels. The implication of our results suggests that common and game species viability may be overestimated and consequently overexploited. In terms of predicted population declines for rare species, our results suggest that some species may be included in a lower endangerment category than they actually should be in the Red List of Threatened Species (IUCN), due to overestimations where basic area measurements have been used.

Material and methods

Study area

Our study area is a flat landscape (highest altitude 118 m a.s.l.) located in the province of Uppland, south-central Sweden (59-60°N, 17-18°E) and covering approximately 126,000 ha (Fig. 1). We selected the area because it is subjected to constant changes in land usage, both in terms of forest practices and anthropogenic development, all of which may fragment areas suitable for hazel grouse.

The study area is composed of agricultural land and other open areas as well as forest. The forest is composed of areas with forestry and with more or less pristine nature reserves. In Uppland county, the county within the province of Uppland in which our study area is situated, the area of productive forest is 389,000 ha, containing approximately 28,000 ha of older (> 60 year) deciduous forest (Skogsvårdsstyrelsen 2004), which is an important feature for hazel grouse in a landscape. The area of low productivity land is 48,000 ha and only 2.6% of the forest area within Uppland is > 120 years old. Thus, compared to Sweden as a whole, where some 11.5% of the forest is > 120 years old, there is a relative lack of old-growth forest in Uppland. The productive forest consists of 81.1% coniferous trees and 17% deciduous trees (Skogsvårdsstyrelsen 2004).

Species

The hazel grouse is spread throughout the Palearctic boreal region in temperate and mountainous forests (Storch 2000). The southern limit of the species mostly parallels the southern border of the boreal forest (Storch 2000).

The hazel grouse is a highly site-faithful species that is found in a wide variety of habitat types throughout its range. The habitat must provide the grouse's structural requirement; in Scandinavia this is old growth spruce forest with a dense bush layer and access to deciduous patches e.g. marshland and along streams (Swenson 1991b, Saari et al. 1996, Åberg et al. 2000b, 2003). There is no evidence for seasonal long-distance migration, although they change between winter/spring areas and summer/autumn areas (Swenson 1991a,b). Their home range is approximately 40 ha (18-80 ha), the area being significantly larger during summer than during other seasons (Swenson 1993). The mating system mainly consists of monogamous pairs which live in a territory they defend for access to food resources and mating. The average territory size differs between the sexes; 16.4 ha and 22.5 ha for males and females, respectively. Territories overlap between sexes but not among birds of the same sex (Swenson 1991b, 1993). Adult hazel grouse have low mobility. Swenson (1991c) found a median movement of only 340 m between capture and site of kill or the site last seen, and juveniles show a relatively short natal dispersal distance (median 800 m; Swenson & Danielsen 1995). However, an average dispersal distance of 4 km has been concluded for post-juvenile hazel grouse in the southeastern French Alps (Montadert & Leonárd 2006). Natal dispersal has not yet been studied in an area comparable to our study area, i.e. with high development of urbanisation or infrastructure combined with natural fragmentation.

Ecological niche factor analysis

Ecological niche factor analysis (ENFA) is a multivariate approach that has been used to determine the geographic distribution of suitable habitat for hazel grouse from map data such as satellite images (Hirzel et al. 2002, J. Sahlsten, unpubl. data). This is a presence-only method, built on Hutchinson's concept of the ecological niche (Hutchinson 1957) where the measurements have an ecological meaning (Hirzel et al. 2002, Mandleberg 2004). At the foundation of this approach is a comparison between the multi-dimensional space made up of the ecogeographical variables within the area occupied by the species, and the multi-dimensional space of variables that is available and described for the whole study area. These variables are commonly obtained from varying pixel values in a satellite image. From the results of an ENFA it is possible to calculate a habitat suitability map (HSM), where each pixel in the map is given a value according to a habitat suitability index (HSI). The HSI ranges from zero (unsuitable) to 100 (core area). Since patch size was not considered in the ENFA, one single pixel (30 × 30 m) could be assigned as a suitable patch. Thus, it was necessary to implement a minimum area.

The only available knowledge of home-range size for hazel grouse was determined by Swenson (1993), who reported an average size of 40 ha with a range of 18 to 80 ha. Thus, in our study, we chose an area not < 20 ha containing HSI values of ≥75 as the reasonable minimum area that could be considered to sustain the long-term home range of a hazel grouse. We determined the HSI value of 75 from an area-adjusted frequency calculation as being a suitable value in our study area (J. Sahlsten, unpubl. data). The procedures are rather specific for each study (see J. Sahlsten, unpubl. data for more details and Hirzel et al. 2002 for more general details on ENFA).

Census

In order to gather presence/absence data as input for the incidence function model, 117 patches obtained by the ENFA, covering a total of 9,862.9 ha, were censused for hazel grouse. The census was conducted from early April to late May 2006, following the method described by Swenson (1991a), i.e. the patches were searched for hazel grouse by walking transects 150 m apart. At 150 m intervals along the transect, we stopped for six minutes to lure hazel grouse with a hunting whistle-pipe. Frequency of whistling was approximately every 30 seconds. The census was continued throughout the day although Swenson (1991a) found a lower response frequency during the middle of the day. The census was, however, discontinued when there was heavy rain or if wind speed moved medium-sized branches, because of the difficulty in detecting responses under such conditions. Using this method, Swenson (1991a) found a mean response accuracy of 82 ± 7.0% for males; response accuracy was similar in spring (80 ± 8.5%) and autumn (86 ± 3.5%). The most obvious response is song, but may also include flutter jumping, flutter flying or a silent approach. If any of the above responses were observed, the coordinates (in Swedish grid RT90) for that location were saved on a GPS receiver. Since our purpose was to determine presence or absence, the census of each patch was discontinued when presence was confirmed. In some instances, the finding of fresh droppings was used to determine the presence of hazel grouse in patches. A patch was considered to be absent of hazel grouse if no response was registered or droppings seen.

Incidence function model

In order to fit a patchily-distributed species to an IFM some assumptions are necessary (Hanski et al. 1996, Hanski & Gilpin 1997). All patches in the system are assumed to have a significant probability of going extinct. The dynamics of local patches are assumed to be much faster in comparison with the whole metapopulation and therefore local dynamics can be ignored. The patches in the network are assumed to be interconnected by migration. Furthermore, because this is an area where the hazel grouse has been established for thousands of years and there has been no major alteration of patch configuration in recent times, it can be assumed that populations of hazel grouse have reached a steady state of colonisation and extinction events. Given these assumptions, it was possible to model hazel grouse dynamics in the area as a metapopulation. The patch network and census results were used to set up the initial configuration of the patches and initial patch occupancies in the study area (Fig. 2).

The IFM is derived from a linear first-order Markov chain of presence or absence of a species in a habitat patch (Hanski 1994, Hanski et al. 1996). The unknown parameters within the model can be estimated with few parameters by applying presence/absence data from one survey (Hanski 1994, Hanski et al. 1996). Furthermore, it is also possible to make predictions of the impact on metapopulation dynamics from varying area-related measures of patch structure. The mathematical structure of the model involves the probability that a species, or even an individual, manages to colonise an empty patch and, at the other end of the scale, the probability of a patch going extinct. Thus the equation includes both probability of colonisation (Ci) and extinction (Ei) of the patch i. Using these terms, it is possible to calculate the incidence (Ji) of a species in patch i.

i0909-6396-16-1-35-e01.gif
Incidence Ji of patch i is first defined in terms of extinction (Ei). The probability of extinction is related to the area (Ai) of the patch, and hence it can be used as a variable to determine extinction risk according to equations 2 and 3.
i0909-6396-16-1-35-e02.gif
i0909-6396-16-1-35-e03.gif
Thus, probability of extinction is indirectly determined by patch area (Ai) and by the environmental stochasticity (x). Secondly, incidence is defined by colonisation (Ci) rates. The colonisation rate is in turn affected by migration. Implying that rate of colonisation (Ci) can be derived from migration rate of the patch i (Mi).
i0909-6396-16-1-35-e04.gif
where Mi is migration and y is an estimated constant that determines how fast colonisation probability reaches unity with increasing number of immigrants. Migration may also be expressed in terms of connectivity between patches (Si). This connectivity is determined by factors such as presence of the species in a specific patch (pi) and by the extinction probability (e). Further features that determine the connectivity are the distance between two patches (dij) and Alpha (α), which is a contant setting the survival rate for migrating individuals. Finally, the area of a patch (Aj) is important in terms of frequency of migration and thereby the area affects connectivity as well.
i0909-6396-16-1-35-e05.gif
where
i0909-6396-16-1-35-e06.gif
and pj is one for presence and zero for absence in the patch from which a potential migrant comes. Alpha (α) is a constant setting the survival rate or inverse of dispersal distance ability for migrants over the Euclidian distance between patch i and patch j (dij). Area (Aj) reflects the emigration frequency from patch j to patch i. If equation 6 is substituted into equation 4, it gives a colonisation rate according to equation 7. ß is a constant that stands for a number of components which remain unknown in practice. This new equation contains a constant describing the ability of a species to colonise a patch (y′).
i0909-6396-16-1-35-e07.gif
where y′ = y/ß describes the colonisation ability of the focal species. Lower case y′ indicates a good coloniser. Substituting expression 2 and 7 in equation 1 gives incidence (J) of the species in patch i:
i0909-6396-16-1-35-e08.gif
To summarise, the data required to apply IFM are patch areas (Ai) and their spatial locations, in order to calculate the pair wise distances (dij), and the presence/absence of the species in the patches in the year of the survey (pi). The remaining parameters y, e and x are estimated using equation 8. The fourth parameter, α, is species specific and fixed after estimation; the other parameters are estimated in relation to α. If the knowledge about dispersal patterns is insufficient, it is possible to estimate α from mark-recapture (Hanski 1994). In this study we set α to 0.25, which reflects a dispersal distance of 4 km. This dispersal distance was chosen for two reasons. Firstly, this is an average post-juvenile dispersal distance recently reported in the French Alps (Montadert & Leonárd 2006). Secondly, the patch configuration has an average nearest neighbour distance between patches of 1,629.2 m ± 597.7 S.D. (J. Sahlsten, unpubl. data). Thus, in order to sustain a metapopulation in this area, we assumed that hazel grouse have to disperse more than the 800 m reported by Swenson & Danielsen (1995).

There are several possible ways to create an IFM and, in our study, we modified a script developed earlier by Oksanen (1994) to fit the data we gathered, and applied it within the statistical software R (R Development Core Team 2005; Appendix I). By using appropriate tools in ArcMap (ESRI 2007), patch areas and nearest neighbour distance were obtained. Although the mean nearest neighbour distance is limited to landscapes of similar extent and resolution for comparative studies (Hargis et al. 1998), it can provide information of spacing between patches in a single landscape. Presence/absence data for hazel grouse were collected by a species census. However, it was necessary to estimate the other parameters (x, y and e) by approximation, with maximum likelihood regression incorporated in the R-script.

Reduced area

One basic assumption in the IFM is that the size of a subpopulation is correlated to the size of the patch, and extinction probability is correlated to the size of the population (Kindvall & Ahlén 1992, Hanski et al. 1996). The area alone could be a deceptive measure because some part of the area may be eliminated as suitable patch due to an edge effect. It has been shown that abiotic, biotic and ecological edge effect occurs at least 50 m from the edge towards the interior of a patch (Gates & Gysel 1978, Andrén & Angelstam 1988, Matlack 1993). In addition, it has been found that kill-sites of radio marked hazel grouse were closer to edges than to random sites (Swenson 1991b). Thus, in order to reduce patch area with the amount of potentially unsuitable area, three different edge zones of 50-, 75- and 100-m were applied to the original patch areas. As the proportion of edge-to-area increases, the quality of a patch in terms of available area is assumed to be reduced. Patches with a high perimeter value or high perforation level will consist of more edge/area than a patch with low perimeter or perforation values. Thus, if two patches have equal area but one has a higher perimeter value, the one with higher perimeter value will be reduced relatively more in terms of usable area compared to a patch with a lower perimeter. Consequently, the amount of area actually available will be determined by its perimeter to area relationship. Some of the original patches became < 20 ha after removing the edge area and were consequently removed from the patch network since they no longer were considered large enough to sustain a hazel grouse home range over the long term. Simulations of the IFM with 200 time increments were made with the basic area measurement and with the three reductions of area in terms of perimeter-area relationship. In order to control for variation of occupancy prediction by the model, simulations of two hundred time increments were looped two hundred times and the mean occupancy was extracted from the simulation result.

Metapopulation capacity is the sum of individual patch contributions which sustain a metapopulation in a landscape, and it can be used to predict consequences of degradation or loss of habitats on metapopulation dynamics (Hanski & Ovaskainen 2000). Close to equilibrium, a system can be described by a set of linear equations which may have special exponential solutions. Growth rates of these special solutions are called the eigenvalues, and the largest is called the leading eigenvalue. Capacity of a metapopulation is technically the leading eigenvalue (λM) of a landscape matrix with the elements:

i0909-6396-16-1-35-e09.gif
i0909-6396-16-1-35-e10.gif

The first component is reflecting the expected longevity of patch i, which depends on patch area (Ai) and some scaling of extinction (x) together with immigration rate (e). The second part Ajem f(dij) corresponds to exp(-αdij)Aj, which is the connectivity component from equation 6, and it gives the rate at which patch i is colonised by patch j. However, since the absolute values of λM is dependent on units of measurement for area and distance, it is not possible to conclude if a particular value is high or low. On the other hand, with the assumptions of extinction rate = e/Ai and colonisation rate = c Σj≠i exp(-αdij)Ajpj(t), different patch networks could be ranked according to their capacity. Hence, we ranked the capacity of the different patch networks to sustain a viable metapopulation via metapopulation capacity and manipulation of area measurement.

Results

Patch network structure

There was no significant divergence of total patch areas between the different area measurements (Multiple R2 = 0.003979, Adjusted R2 = −0.05578, F3, 50 = 0.06657, P = 0.9774). The nearest neighbour measure indicates that there was no difference in patch configuration or between patch distances among area measurements (Table 1). According to the census results and patch configuration, the initial occupancy in absolute number of patches occupied was 32 out of 117 patches in the patch network. The number of occupied patches in the patch networks reduced with 50-, 75- and 100-m edge zones initially was 26, 26 and 23, respectively.

Incidence function model

The estimated parameters used in the simulation are given in (Table 2). The simulation of the different patch networks resulted in a significantly lower number of occupied patches in the patch network reduced by a 100-m edge zone. There was no significant difference of occupancy among the other networks. No significant difference was found in the proportion of occupied patches because the number of available patches was also lower (Fig. 3 and Table 3).

The amplitude of fluctuations of patch occupancy simulated for 200 time increments (years) is shown in Figure 4. The metapopulation capacity analysis shows that the landscapes with the patch configuration where area had been reduced by an edge zone were more sensitive than patch network configuration with basic area measurements (Bonferroni adjusted P < 0.001; Fig. 5). No significant differences in capacity were found between any of the reduced networks (Bonferroni adjusted P > 0.05).

Discussion

The number of occupied patches was lower in the patch network reduced by a 100-m edge zone compared to the basic patch network. This indicates that there is a risk that population sizes will be overestimated and consequent recommendations for management or conservation plans might be misguided. Further implications are that, although some patches are large enough to sustain viable local populations, it may be devastating for the regional population if patch area is overestimated. If one examines the proportion of patches occupied, there was no difference in occupancy between the area measurements. This result is an effect of concentrating suitable patches due to removal of initially empty patches that became too small to sustain a long-term hazel grouse home range after edge zone reduction. This implies that the amount of suitable habitat will also be overestimated if only the basic area of patches is considered.

This reasoning is supported by the fact that the patch network with reduced area shows a lower capacity to sustain a metapopulation. As a consequence, the habitats under consideration will be more sensitive to landscape changes than is indicated by basic area measurements. This higher sensitivity will have an important impact on planning strategies for forestry and conservation programmes. Additionally, our results indicated that many small changes in the landscape will have a cumulative impact that increases perimeter*area ratio or perforates patches until a threshold value is reached where the regional population collapses. Although we saw a clear difference in capacity between our different patch networks, which allowed us to rank them in terms of their ability to sustain a viable metapopulation, the differences in capacity could be even larger than the results indicate. This is because we used a fixed value for α in our simulations, when in theory α should increase as the amount of edge increases. However, further study of the relationship between dispersal and α are needed to determine how α should vary in the model.

Incidence function models have so far mostly been applied to model-species with rapid generation times, small patches and short inter-patch distances, such as butterflies, frogs and insects (Hanski et al. 1996, Biedermann 2000, Vos et al. 2000). In our study, we have attempted to apply the model to hazel grouse, a species which, like many other bird and mammal species, lacks the traits characteristic of model-species, which makes it more difficult to obtain the data needed for modeling. However, it is important to apply these models and methods to non-model species, even though it may be difficult to obtain data about colonisation-extinction events or when generation time spans are prohibitive, because these types of species are often of concern in conservation. It has, however, been shown that IFM predicted the population dynamics well for the American pika Ochotona princes using occupancy data (Moilanen et al. 1998), but there is still a need for further development of methods and models to estimate and predict population dynamics. In every study of a species distribution, it is essential to collect data about the species' preferred habitat structure. ENFA is a method that makes this possible with limited knowledge of the species ecology and a reasonable effort in field. However, the type of ecogeographical maps used as an input for the model must be chosen carefully according to the objective of the study. In our study the objective was to identify suitable areas in terms of geographic and geometric distribution. We therefore chose an unclassified Landsat scene and fitted this to the ENFA; the results from it seem to be satisfactory and robust (J. Sahlsten, unpubl. data). Furthermore, whether patches actually contain the species is not revealed by ENFA results, but the suitability of an area is probably valid (Hirzel et al. 2006). If the species is absent in a suitable patch, reasons other than those incorporated into the ENFA should be investigated.

The variation in patch size in our study is rather high, which may indicate a highly fragmented landscape. When a landscape is strongly heterogeneous, the matrix surrounding the patches should be considered in addition to the patches themselves in the analysis. The matrix has not been considered in this study because the matrix mostly affects dispersal. Since knowledge on cost of dispersal due to encounters with different landscape features was unknown, the matrix was considered homogenous. Furthermore, the study area is not isolated from its surroundings and it should be noted that patches at the periphery of the study area were probably affected by patches outside the study area. Thus, presence in peripheral patches is probably to some unknown extent explained by connection to patches not included in the model. This fact may lend a rescue effect to certain patches that could lead to a decreased extinction probability. However, due to the size of the study area, the distribution of patches and the ecology of hazel grouse, the impact of this unknown factor on the whole study area is small enough to be ignored.

Although, true absence data may be difficult to verify (MacKenzie et al. 2002), the high response frequency with the census method used in our study implies that there is no strong error or bias in presence/absence data. One could argue that the effort was different among patches due to differences in size. However, since the census was made by point-counting with a defined time period at each stop, the effort is the same per unit and different patch areas should not cause major bias to the result in either direction.

The α estimation may be problematic due to the difficulties in finding a value that is ecologically realistic. The mark-recapture methods used by Hanski (1994) can be used to estimate α, however, this method does not eliminate the problem of Euclidian distance (i.e. distance in a straight line). Therefore, friction maps or least cost distance would be a more accurate measure of distance if available (Ray et al. 2002). But knowledge of the cost to or mortality of hazel grouse when dispersing is not sufficient to create friction maps or to calculate cost distances. Hence, the Euclidian distance found by Montadert & Léonard (2006) stands as a good approximation of α for the model. It could be argued that the patches < 20 ha which were removed may function as stepping stones. However, our limited knowledge of dispersal behaviour did not allow us to incorporate stepping stones into the model. Hence, patches in our model were only included in terms of colonisation and extinction. It was assumed that the probability for colonisation was zero, and extinction probability was one when patch size was below a critical area coinciding with the minimum area for a home range, implying these small patches did not exist. Of course, it would have enhanced the model if small patches could have been included as facilitators of dispersal, and efforts to find good measures of dispersal distance should be a priority in further studies. In general, this seems to be lacking in many studies of species with large home ranges.

The area measurements used in our study are not claimed to be optimal, rather they indicate that the measure of area as an estimation of extinction probability should not be taken for granted. It should also be mentioned that the effect of the perimeter-area relationship probably has a threshold at the point where the area becomes large enough to sustain a population, regardles of the convolution of its edges. On the other hand, with such large patches in a system, the metapopulation approach is probably not appropriate and a source-sink or mainland-island system would be more suitable.

Acknowledgments

we would like to thank Kate StOnge and Örjan Östman for their comments on earlier versions of this manuscript. Thanks to Johan Rodhén and Andreas Rudh for field assistance. The Swedish Research Council for Environment, Agricultural Sciences, and Spatial Planning (FORMAS) and Stiftelsen för Zoologisk forskning financed the project.

References

1.

J. Åberg, J. E. Swenson, and H. Andrén . 2000b. The dynamics of hazel grouse (Bonasa bonasia L.) occurrence in habitat fragments. Canadian Journal of Zoology 78:352–358. Google Scholar

2.

J. Åberg, J. E. Swenson, and P. Angelstam . 2003. The habitat requirements of hazel grouse (Bonasa bonasia) in managed boreal forest and applicability of forest stand descriptions as a tool to identify suitable patches. Forest Ecology and Management 175:437–444. Google Scholar

3.

H. Andrén 1994. Effects of habitat fragmentation on birds and mammals in landscapes with different proportions of suitable habitat: a review. Oikos 71:355–366. Google Scholar

4.

H. Andrén and P. Angelstam . 1988. Elevated predation rates as an edge effect in habitat islands: Experimental evidence. Ecology 69:544–547. Google Scholar

5.

R. Biedermann 2000. Metapopulation dynamics of the froghopper Neophilaenus albipennis (F., 1798) (Homoptera, Cercopidae) - what is the minimum viable metapopulation size? Journal of Insect Conservation 4:99–107. Google Scholar

6.

T. M. Brooks, R. A. Mittermeier, C. G. Mittermeier, G. A. B. DaFonseca, A. B. Rylands, W. R. Konstant, P. Flick, J. Pilgrim, S. Oldfield, G. Magin, and C. Hilton-Taylors . 2002. Habitat loss and extinction in the hotspots of biodiversity. Conservation Biology 16 (4):909–923. Google Scholar

7.

P. A. Burrough 1981. Fractal dimensions of landscapes and other environmental data. Nature 294:240–242. Google Scholar

8.

J. Clobert, E. Danchin, A. A. Dhondt, and J. D. Nichols . 2001. Dispersal. Oxford University Press. Oxford, U.K.. pp.  Google Scholar

9.

S. K. Collinge and T. M. Palmer . 2002. The influences of patch shape and boundary contrast on insect response to fragmentation in California grasslands. Landscape Ecology 17 (7):647–656. Google Scholar

10.

E. F. Connor and E. D. McCoy . 1979. The statistics and biology of the species-area relationship. The American Naturalist 113 (6):791–833. Google Scholar

11.

ESRI (Environmental System Research Institute) 2007. GIS and Mapping software.  Google Scholar

12.

J. E. Gates and L. W. Gysel . 1978. Avian nest dispersion and fledging success in field-forest ecotones. Ecology 59:871–883. Google Scholar

13.

K. J. Gutzwiller 2002. Applying landscape ecology in biological conservation. Springer-Verlag. New York Inc., USA. pp.  Google Scholar

14.

I. Hanski 1994. A practical model of metapopulation dynamics. Journal of Animal Ecology 63:151–162. Google Scholar

15.

I. Hanski and O. Ovaskainen . 2000. The metapopulation capacity of a fragmented landscape. Nature 404:755–758. Google Scholar

16.

I. A. Hanski and M. E. Gilpin . 1997. Metapopulation Biology, Ecology, Genetics, and Evolution. Academic Press. San Diego, California, USA. pp.  Google Scholar

17.

I. Hanski, A. Moilanen, T. Pakkala, and M. Kuussaari . 1996. The quantitative incidence function model and persistence of an endangered butterfly metapopulation. Conservation Biology 10:578–590. Google Scholar

18.

C. D. Hargis, J. A. Bissonette, and J. L. David . 1998. The behavior of landscape metrics commonly used in the study of habitat fragmentation. Landscape Ecology 13:167–186. Google Scholar

19.

C. J. Helzer and D. E. Jelinski . 1999. The relative importance of patch area and perimeter-area ratio to grassland breeding birds. Ecological applications 9:1448–1458. Google Scholar

20.

A. H. Hirzel, J. Hausser, D. Chesser, and N. Perrin . 2002. Ecological-niche factor analysis: How to compute habitat-suitability maps without absence data? Ecology 83:2027–2036. Google Scholar

21.

A. H. Hirzel and R. Arlettaz . 2003. Modeling habitat suitability for complex species distribution by environmental-distance geometric. Environmental Management 32:614–623. Google Scholar

22.

A. H. Hirzel, G. Le Lay, V. Helfer, C. Randin, and A. Guisan . 2006. Evaluating the ability of habitat suitability models to predict species presences. Ecological Modelling 199:142–152. Google Scholar

23.

D. G. Hokit, B. M. Stith, and L. C. Branch . 2001. Comparison of two types of metapopulation models in real and artificial landscapes. Conservation Biology 15:1102–1113. Google Scholar

24.

G. E. Hutchinson 1957. Concluding remarks. Cold Spring Harbour Symposium on Quantitative Biology Vol. 22,. pp. 415–427. Google Scholar

25.

L. A. B. Jorge and G. J. Garcia . 1997. A study of habitat fragmentation in southeastern Brazil using remote sensing and geographic information systems (GIS). Forest Ecology and Management 98:35–47. Google Scholar

26.

O. Kindvall and I. Ahlén . 1992. Geometrical factors and metapopulation dynamics of the Bush cricket Metrioptera bicolour Philippi (Orthoptera: Tettigoniidae). Conservation Biology 6:520–529. Google Scholar

27.

J. R. Krummel, R. H. Gardner, G. Sugihara, R. V. O'Neill, and P. R. Coleman . 1987. Landscape patterns in a disturbed environment. Oikos 48:321–324. Google Scholar

28.

L. F. Landweber and A. P. Dobson . 1999. Genetics and the extinction of species. Princeton University press. Princeton, New Jersey, USA. pp.  Google Scholar

29.

W. F. Laurence and E. Yensen . 1991. Predicting the impact of edge effects in fragmented habitats. Biological Conservation 55:77–92. Google Scholar

30.

R. Levins 1969. Some demographic and genetic consequences of environmental heterogeneity for biological control. Bulletin of the Entomological Society of America 15:237–240. Google Scholar

31.

D. I. MacKenzie, J. D. Nichols, G. B. Lachman, S. Droege, J. A. Royle, and C. A. Langtimm . 2002. Estimating site occupancy rates when detecting probabilities are less than one. Ecology 83 (8):2248–2255. Google Scholar

32.

L. Mandleberg 2004. A comparison of the predictive abilities of four approaches for modelling the distribution of cetaceans. M.Sc. thesis,. School of Biological Sciences, University of Aberdeen. UK. pp.  Google Scholar

33.

K. J. Martin and B. C. McComb . 2003. Amphibian habitat associations at patch and landscape scales in the central Oregon Coast Range. Journal of Wildlife Management 67 (4):672–683. Google Scholar

34.

G. R. Matlack 1993. Microenvironment variation within and among forest edge sites in the eastern united states. Biological conservation 66:185–194. Google Scholar

35.

B. T. Milne 1988. Measuring the Fractal Geometry of Landscapes. Applied Mathematics and Computation 27:67–79. Google Scholar

36.

A. Moilanen, A. T. Smith, and I. Hanski . 1998. Long-term Dynamics in a Metapopulation of the American Pika. The American Naturalist 152:530–542. Google Scholar

37.

M. Montadert and P. Leonárd . 2006. Post-juvenile dispersal of hazel grouse Bonasa bonasia in an expanding population of the south-eastern French Alps. Ibis 148:1–13. Google Scholar

38.

J. Oksanen 1994. Incidence Function Model in R Unpublished. Available at:  http://cc.oulu.fi/jarioksa/opetus/openmeta/fitifm4.pdfGoogle Scholar

39.

R. B. Primack 1998. Essential of Conservation Biology. 2nd edition. Sinauer, Associate Inc.. U.S.A.. pp. 216–228. Google Scholar

40.

N. Ray, A. Lehman, and P. Joly . 2002. Modelling spatial distribution of amphibian populations: a GIS approach based on habitat matrix permeability. Biodiversity and conservation 11:2143–2165. Google Scholar

41.

R Development Core Team 2005. R: A Language and Environment for Statistical Computing. R Foundation for Statistical Computing. Vienna, Austria. Available at:  http://www.R-project.orgGoogle Scholar

42.

D. H. Reed 2004. Extinction risk in fragmented habitats. Animal Conservation 7:181–191. Google Scholar

43.

L. Saari, J. Åberg, and J. E. Swenson . 1996. Factors influencing the dynamics of occurrence of the hazel grouse in a fine-grained managed landscape. Conservation Biology 12:586–592. Google Scholar

44.

N. H. Schumaker 1996. Using landscape indices to predict habitat connectivity. Ecology 77 (4):1210–1225. Google Scholar

45.

P. Sjögren-Gulve and I. Hanski . 2000. The use of population viability analyses in conservation planning. Ecological Bulletin 48:53–71. Google Scholar

46.

Skogsvårdsstyrelsen 2004. Miljökvalitetsmål Levande skogar Uppsala Län. Norra mälardalens distrikt. Uppsala, Sweden. pp.  Google Scholar

47.

P. B. Stacey and M. Taper . 1992. Environmental variation and the persistence of small populations. Ecological Applications 2:18–29. Google Scholar

48.

I. Storch 2000. Status Survey and Conservation Action Plan 2000-2004. Grouse. WPA/Birdlife/SSC Grouse Specialist Group. IUCN, Gland, Switzerland, and Cambridge, UK and. World Pheasant Association. pp.  Google Scholar

49.

J. E. Swenson 1991a. Evaluation of a density index for territorial male hazel grouse (Bonasa bonasia) in spring and autumn. Ornis Fennica 68:57–65. Google Scholar

50.

J. E. Swenson 1991b. Social organization of hazel grouse and ecological factors influencing it. Grimsö forskningstation S - 730 91. Riddarhyttan Sweden. pp.  Google Scholar

51.

J. E. Swenson 1991c. Is the hazel grouse a poor disperser? Proceedings of the International Congress Union Game Biology 20:347–352. Google Scholar

52.

J. E. Swenson 1993. The importance of alder to hazel grouse in Fennoscandian boreal forest: evidence from four levels of scale. Ecography 16:37–46. Google Scholar

53.

J. E. Swenson and J. Danielsen . 1995. Seasonal movement by Hazel grouse in south-central Sweden. In: D. Jenkins (Ed.). Proceedings of the 6th international grouse symposium pp. 37–40. Google Scholar

54.

L. Tischendorf and L. Fahrig . 2000. On usage and measurement of landscape connectivity. Oikos 90:7–19. Google Scholar

55.

C. C. Vos, J. F. Cajo, T. Braak, and W. Nieuwenhiuzen . 2000. Incidence Function Modelling and Conservation of the Tree Frog Hyla arborea in the Netherlands. Ecological Bulletins 48:165–180. Google Scholar

56.

J. I. Watling and M. A. Donnelly . 2006. Fragments as islands: a synthesis of faunal responses to habitat patchiness. Conservation Biology 20 (4):1016–1025. Google Scholar

57.

K. A. With and T. O. Crist . 1995. Critical thresholds in species' responses to landscape structure. Ecology 76 (8):2446–2459. Google Scholar

Notes

[1] Edited by Associate Editor: John W. Connelly

Figure 1.

Location of the study area in south-central Sweden. Inset shows areas chosen for the network of patches within the overall landscape of forest, agriculture and urban settlement.

i0909-6396-16-1-35-f01.tif

Figure 2.

Patch network from the basic area measurement. Initial occupancy is shown by filled circles and unoccupied patches by unfilled circles. The size of the circles corresponds to the relative patch size. Coordinates refer to the Swedish grid system (RT90).

i0909-6396-16-1-35-f02.tif

Figure 3.

Mean occupancy levels from simulation with the incidence function model (IFM) showing occupancy in number of patches (A) and occupancy level as a proportion of the patch network (B).

i0909-6396-16-1-35-f03.tif

Figure 4.

Patch occupancy dynamics from simulations with 200 time increments. Simulated patch dynamics are shown for a patch network reduced by a 50-m edge zone (A), and a basic patch network (B).

i0909-6396-16-1-35-f04.tif

Figure 5.

Metapopulation capacity of the basic patch network (A), of the patch network reduced by a 50 m edge zone (B), and a box plot (C) which shows that the basic area network has a significantly higher capacity than networks reduced by an edge zone of 100, 75 and 50 m, respectively. Note that the patch network reduced by an edge zone of 50 m was the most sensitive to loss of patches.

i0909-6396-16-1-35-f05.tif

Table 1.

Mean area (in ha) and mean distance (in km) between all patches and mean distance (in km) of nearest neighbouring (NN) patch of the four patch networks.

i0909-6396-16-1-35-t01.eps

Table 2.

Estimated parameters used in the simulation of the four different patch networks. The parameter x reflects environmental stochasticity, e reflects extinction probability and y is a parameter that describes how fast colonisation reaches unity with increasing number of immigrants.

i0909-6396-16-1-35-t02.eps

Table 3.

Simulated occupancy level in absolute numbers (N) and in proportion (Prop.) for the different patch networks.

i0909-6396-16-1-35-t03.eps
Jonas Sahlsten, Frederik Wickström, and Jacob Höglund "Hazel grouse Bonasa bonasia population dynamics in a fragmented landscape: a metapopulation approach," Wildlife Biology 16(1), 35-46, (1 March 2010). https://doi.org/10.2981/07-086
Received: 12 November 2007; Accepted: 1 June 2009; Published: 1 March 2010
KEYWORDS
Bonasa bonasia
Ecological Niche Factor Analysis
fragmentation
hazel grouse
incidence function model
landscape
patch occupancy model
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