From e6f1d7be13effcd0dd6e1029957d46b3fb09d784 Mon Sep 17 00:00:00 2001 From: Elise Zipkin Date: Mon, 20 May 2024 12:54:41 -0400 Subject: [PATCH] updated integrated models section --- index.html | 4 ++-- 1 file changed, 2 insertions(+), 2 deletions(-) diff --git a/index.html b/index.html index e1c981b..96d5a17 100644 --- a/index.html +++ b/index.html @@ -58,7 +58,7 @@

Note: this website is a living document. Projects will be added once the

About

- Our lab develops mathematical and statistical models to study the distribution and demographics of populations and communities. We work on a range of basic and applied problems and a variety of taxa including insects, birds, fish, amphibians, and mammals. + Our lab develops mathematical and statistical models to study the distribution and demography of populations and communities. We work on a range of basic and applied problems and a variety of taxa including insects, birds, fish, amphibians, and mammals.

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Overcoming data gaps using integrated models to estimate migratory species Citation - Farr M.T., Zylstra, E.R., Ries, L., and Zipkin E.F. (2024) Overcoming data gaps using integrated models to estimate migratory species’ dynamics during cryptic periods of the annual cycle. Methods in Ecology and Evolution. DOI: 10.1111/2041-210X.14282

- Abstract - Environmental and anthropogenic factors affect the population dynamics of migratory species throughout their annual cycles. However, identifying the spatiotemporal drivers of migratory species' abundances is difficult because of extensive gaps in monitoring data. To estimate population abundance and distribution at broad spatiotemporal extents, we developed an integrated model that incorporates unstructured data during time periods and spatial locations when structured data are unavailable. Data for widespread and migratory species are often fragmented across multiple monitoring programs. Our integrated model can estimate population abundance at broad spatiotemporal extents despite structured data gaps during the annual cycle by leveraging opportunistic data. + Abstract - Environmental factors affect the population dynamics of migratory species throughout their annual cycles. However, identifying the spatiotemporal drivers of migratory species' abundances is difficult because of extensive gaps in monitoring data. Additionally, data for migratory species are often fragmented across multiple monitoring programs. We developed an integrated model that incorporates unstructured data during time periods and spatial locations when structured data are unavailable. Our integrated model can estimate population abundance at broad spatiotemporal extents despite structured data gaps during the annual cycle by leveraging opportunistic data.

Code and Data - Link to repo