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Site-occupancy models may offer new opportunities for dragonfly monitoring based on daily species lists
Authors:Arco J van Strien  Tim Termaat  Dick Groenendijk  Victor Mensing  Marc Kéry
Institution:2. Earthwatch Institute, Boston, MA, United States;3. Cornell Lab of Ornithology, Ithaca, NY, United States;4. Earthwatch Institute, Oxford, United Kingdom;5. College of Liberal Arts (CoLA), Bath Spa University, Bath, United Kingdom;6. NORDECO, Copenhagen, Denmark;11. Departamento de Hidráulica e Saneamento, Escola de Engenharia de São Carlos, Universidade de São Paulo, Avenida Trabalhador São-Carlense, São Carlos, Brazil;12. Facultad de Ciencias Veterinarias y Pecuarias, Universidad de Chile and Director of Kauyeken, Santiago, Chile;8. A Rocha Kenya, Watamu, Kenya;10. Kew Madagascar Conservation Center, Antananarivo, Madagascar;1. University of Utah, Department of Biology, Salt Lake City, UT 84112, USA;2. University of Utah, Department of Mathematics, Salt Lake City, UT 84112, USA;3. College of Sciences, Koç University, Rumelifeneri, Istanbul 34450, Turkey;1. Statistics Netherlands, P.O. Box 24500, 2490 HA The Hague, the Netherlands;2. De Vlinderstichting/Dutch Butterfly Conservation, P.O. Box 506, 6700 AM Wageningen, the Netherlands;3. Brederostraat 10, 2332 BB Leiden, the Netherlands;4. Wageningen University, Plant Ecology and Nature Conservation Group, P.O. Box 47, 6700 AA Wageningen, the Netherlands
Abstract:Monitoring biodiversity is necessary but difficult to achieve in practice, in part because standardized field work is often demanding for volunteer field workers. Collecting opportunistic data on presence and absence of species is much less demanding, but such data may suffer from a number of biases, such as variation in observation effort over time. Here we explore whether site-occupancy models may be helpful to reduce such biases in opportunistic data, especially those caused by temporal variation of observation effort and by incomplete reporting of sightings. Site-occupancy models represent a generalisation of classical metapopulation models to account for imperfect detection; they estimate the probability of sites to be occupied (and of the rates of change, colonisation and extinction rates) while taking into account imperfect detection of a species. The models require so-called presence–absence data from replicated visits for a number of sites (e.g., 20–50). We tested whether these models provide reliable trend estimates if collectors of opportunistic data do not report all species detected. We applied the models to three opportunistic datasets of dragonfly species (1999–2007) in the Netherlands: (1) one-species records, (2) short daily species lists and (3) comprehensive daily species lists. Trend estimates based on a fourth dataset from a standardized monitoring scheme were used as a yardstick to judge the results.The analyses showed that occupancy trends based on comprehensive daily species lists in combination with site-occupancy models were generally similar to those based on the monitoring scheme. But trends based on one-species records and short daily lists were too imprecise to be very useful. In addition, site-occupancy models lead to more realistic occupancy estimates than those obtained from conventional logistic regression analysis. We conclude that comprehensive daily species lists can be useful surrogates for monitoring schemes to assess distributional trends.
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