| Literature DB >> 27828990 |
Karen Hornigold1, Iain Lake1, Paul Dolman1.
Abstract
In Western Europe, recreational amenity is presented as an important cultural ecosystem service that, along with other values, helps justify policies to conserve biodiversity. However, whether recreational use by the public is enhanced at protected areas designated for nature conservation is unknown. This is the first study to model outdoor recreation at a national scale, examining habitat preferences with statutory designation (Site of Special Scientific Interest) as an indicator of nature conservation importance. Models were based on a massive, three year national household survey providing spatially-referenced recreational visits to the natural environment. Site characteristics including land cover were compared between these observed visit sites (n = 31,502) and randomly chosen control sites (n = 63,000). Recreationists preferred areas of coast, freshwater, broadleaved woodland and higher densities of footpaths and avoided arable, coniferous woodland and lowland heath. Although conservation designation offers similar or greater public access than undesignated areas of the same habitat, statutory designation decreased the probability of visitation to coastal and freshwater sites and gave no effect for broadleaved woodland. Thus general recreational use by the public did not represent an important ecosystem service of protected high-nature-value areas, so that intrinsic and existence values remain as the primary justifications for conservation of high nature value areas. Management of 'green infrastructure' sites of lower conservation value that offer desirable habitats and enhanced provision of footpaths, could mitigate recreational impacts on nearby valuable conservation areas.Entities:
Mesh:
Year: 2016 PMID: 27828990 PMCID: PMC5102377 DOI: 10.1371/journal.pone.0165043
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Fig 1Distribution within England of visit and control points used in this study.
Candidate variables used to model likelihood of site visitation by recreationists.
| Code | Predictor | Units | Description |
|---|---|---|---|
| Comp | Arable | Proportion within site or surrounding landscape | Proportion of annual and perennial crops and freshly ploughed land |
| Coast | Proportion within site or surrounding landscape | Proportion of sand dunes, shingle, littoral mud and littoral sand | |
| Broadleaved woodland | Proportion within site or surrounding landscape | Proportion of broadleaved woodland with >20% tree cover or >30% scrub cover | |
| Built-up | Proportion within site or surrounding landscape | Proportion of urban and suburban areas including towns, cities (and residential gardens), car parks and industrial estates | |
| Coniferous woodland | Proportion within site or surrounding landscape | Proportion of coniferous woodland with >20% cover | |
| Freshwater | Proportion within site or surrounding landscape | Proportion of lakes, canals, rivers and streams | |
| Improved grassland | Proportion within site or surrounding landscape | Proportion of grassland modified by fertiliser and reseeding typically managed as pasture or mown | |
| Lowland heath | Proportion within site or surrounding landscape | Proportion of heather and dwarf shrub, gorse and dry heath below 300m a.s.l. as defined by Gimingham [ | |
| Semi-natural grassland | Proportion within site or surrounding landscape | Proportion of neutral, calcareous, acid and rough grassland | |
| Pop | Weight.pop.2 | No. people | Total number of people residing within 10km of the site, inverse-weighted by distance squared from visit and control points |
| Cty | County | 85 levels | County in which the site is located |
| Path | Path.length | m | Total length of path network within site |
| Elev | Mean.elev | m | Mean of all Digital Terrain Model 50m cells within site |
| Road | Dist.Aroad | m | Distance from visit and control points to nearest major road |
aLCM2007
bkm resolution population raster created from 2011 ONS census data
cAssigned according to county boundaries downloaded from http://www.gadm.org/
dOpenStreetMap
eOS Terrain 50
fOS Meridian
Generalised linear mixed model predicting recreational demand in the countryside, controlling for population and county.
| Standardised Coefficient | Std. Error | z | P | |
|---|---|---|---|---|
| Path length (access within site) | 0.826 | 0.014 | 59.96 | *** |
| Elevation | -0.370 | 0.017 | -22.22 | *** |
| Distance to major road (access to site) | -0.132 | 0.013 | -9.83 | *** |
| Built-up | 0.631 | 0.022 | 29.14 | *** |
| Coast | 0.287 | 0.016 | 18.49 | *** |
| Freshwater | 0.161 | 0.010 | 16.26 | *** |
| Broadleaved woodland | 0.158 | 0.015 | 10.37 | *** |
| Arable | -0.645 | 0.031 | -20.70 | *** |
| Improved grassland | -0.129 | 0.022 | -5.80 | *** |
| Lowland heath | -0.080 | 0.012 | -6.64 | *** |
| Coniferous woodland | -0.078 | 0.013 | -6.18 | *** |
| Semi-natural grassland | -0.043 | 0.016 | -2.73 | ** |
| -0.697 | 0.077 | -9.06 | *** |
Dependent variable: the likelihood of visitation. P<0.001 ‘***’, P<0.01 ‘**’
Fig 2Predicted influence on visitation probability of coast, freshwater, broadleaved woodland and arable.
From model 1 (eq 1) controlling for path length, elevation, distance to nearest major road, distance-weighted population and county. Bars show the frequency distribution (square root scaled) within visit (unfilled) and control (grey) sites. Predictions were obtained by varying the proportionate cover of the land cover class shown between 0-0.8. All other land cover classes were held proportional to their mean such that they sum to 0.2 (so that total land cover proportion did not exceed 1). Control variables were held at their mean. Horizontal box and whisker plots show median, quartiles and outliers of land cover proportions in visit (unfilled) and control (grey) sites.
Fig 3Effects on visitation probability of non-SSSI-designated or SSSI-designated land covers.
Standardised coefficients from model 2 (eq 3) controlling for path length, elevation, distance to nearest major road, distance-weighted population and county. Bars denote standard error. For each land cover, P values of Z-tests compare pairs of coefficients between non-SSSI-designated/SSSI-designated (P<0.001 ‘***’, P<0.01 ‘**’, P<0.05 ‘*’).