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Complementarity,biodiversity viability analysis,and policy-based algorithms for conservation
Institution:1. Departament de Física de la Terra i Termodinàmica, Facultat de Física, Universitat de València, Doctor Moliner 50, 46100 Burjassot, Valencia, Spain;2. Departament de Geografia, Facultat de Geografia i Història, Universitat de València, Avda. Blasco Ibáñez 28, 46010 Valencia, Spain;1. Centre d''Ecologie et des Sciences de la Conservation (CESCO), Muséum National d''Histoire Naturelle, CNRS, Sorbonne Université, 75005 Paris, France;2. Department of Environmental Biology, University of Rome ‘La Sapienza’, Rome, Italy
Abstract:Biodiversity conservation “area-selection” strategies include not only trade-offs among society’s needs in land-use allocation, but also allocation of economic instruments such as incentives, levies, and biodiversity credits. For these applications, the key property of an area is its “complementarity”—the context-dependent, marginal gain in biodiversity provided by the area. Given that there has been little implementation of whole-sets of areas generated by the popular computer-based selection methods, we suggest that analogous “policy-based algorithms” would be a more effective real-world application of complementarity. Areas would be “selected” for conservation over time as a consequence of policies in which dynamic complementarity values influence application of economic instruments. These integrated biodiversity/economic strategies can use an extended form of complementarity reflecting marginal changes in regional probability of persistence of biodiversity. While probabilistic measures of biodiversity viability have been explored in area-selection for some time, it remains difficult to make viability statements about “all of biodiversity.” New approaches that use biodiversity surrogate information for “biodiversity viability analysis” (BVA) can take advantage of a general quantitative biodiversity framework in which pattern-based relationships among areas allow predictions at the species level. A standard assumption of “unimodal” species responses to environmental gradients yields an expected distribution of species in an ordination pattern, and allows sampling of inferred species. Based on environmental correlates, inferred species can be mapped in geographic space, forming distribution fragments. This information, when linked to species persistence models, may allow ongoing calculation of areas’ complementarity values. An example illustrates application of these ordination models to museum collection data for lizards from New South Wales (NSW), Australia.
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