Testing the Potential for Predictive Modeling and Mapping and Extending Its Use as a Tool for Evaluating Management Scenarios and Economic Valuation in the Baltic Sea (PREHAB) |
| |
Authors: | Mats Lindegarth Ulf Bergström Johanna Mattila Sergej Olenin Markku Ollikainen Anna-Leena Downie Göran Sundblad Martynas Bučas Martin Gullström Martin Snickars Mikael von Numers J. Robin Svensson Anna-Kaisa Kosenius |
| |
Affiliation: | 1. Department of Biological and Environmental Sciences, Tj?rn?, 45296, Str?mstad, Sweden 2. Department of Aquatic Resources, Swedish University of Agricultural Sciences, Skolgatan 6, 74242, ?regrund, Sweden 3. Environmental and Marine Biology & Hus? Biological Station, ?bo Akademi University, Tykist?katu 6, 20520, Turku, Finland 4. Coastal Research and Planning Institute, Klaipeda University, 92294, Klaipeda, Lithuania 5. Department of Economics and Management, University of Helsinki, P.O. Box 27, 00014, Helsinki, Finland 6. Centre for Environment, Fisheries and Aquaculture Science, Pakefield Road, Lowestoft, Suffolk, NR33 0HT, UK 7. AquaBiota Water Research, 115 50, Stockholm, Sweden 8. Department of Ecology, Environment and Plant Sciences, Stockholm University, Stockholm, Sweden 9. Department of Biosciences, Environmental and Marine Biology, ?bo Akademi University, Tykist?katu 6, 20520, Turku, Finland 10. School of Biological Sciences, Monash University, Clayton, VIC, 3800, Australia 11. Pellervo Economic Research PTT, Eerikinkatu 28 A, 00180, Helsinki, Finland
|
| |
Abstract: | We evaluated performance of species distribution models for predictive mapping, and how models can be used to integrate human pressures into ecological and economic assessments. A selection of 77 biological variables (species, groups of species, and measures of biodiversity) across the Baltic Sea were modeled. Differences among methods, areas, predictor, and response variables were evaluated. Several methods successfully predicted abundance and occurrence of vegetation, invertebrates, fish, and functional aspects of biodiversity. Depth and substrate were among the most important predictors. Models incorporating water clarity were used to predict increasing cover of the brown alga bladderwrack Fucus vesiculosus and increasing reproduction area of perch Perca fluviatilis, but decreasing reproduction areas for pikeperch Sander lucioperca following successful implementation of the Baltic Sea Action Plan. Despite variability in estimated non-market benefits among countries, such changes were highly valued by citizens in the three Baltic countries investigated. We conclude that predictive models are powerful and useful tools for science-based management of the Baltic Sea. |
| |
Keywords: | Predictive mapping Management scenarios Benthic habitats Economic valuation Baltic Sea |
本文献已被 SpringerLink 等数据库收录! |
|