N-mix for fish: estimating riverine salmonid habitat selection via N-mixture models

Author:

Som Nicholas A.12,Perry Russell W.3,Jones Edward C.3,De Juilio Kyle4,Petros Paul5,Pinnix William D.1,Rupert Derek L.1

Affiliation:

1. US Fish and Wildlife Service, Arcata FWO, Arcata, CA 95521, USA.

2. Humboldt State University, Department of Fisheries Biology, Arcata, CA 95521, USA.

3. US Geological Survey, Western Fisheries Research Center, Cook, WA 98605, USA.

4. Yurok Tribal Fisheries Program, Weaverville, CA 96093, USA.

5. Hoopa Valley Tribal Fisheries, Hoopa, CA 95546, USA.

Abstract

Models that formulate mathematical linkages between fish use and habitat characteristics are applied for many purposes. For riverine fish, these linkages are often cast as resource selection functions with variables including depth and velocity of water and distance to nearest cover. Ecologists are now recognizing the role that detection plays in observing organisms, and failure to account for imperfect detection can lead to spurious inference. Herein, we present a flexible N-mixture model to associate habitat characteristics with the abundance of riverine salmonids that simultaneously estimates detection probability. Our formulation has the added benefits of accounting for demographics variation and can generate probabilistic statements regarding intensity of habitat use. In addition to the conceptual benefits, model application to data from the Trinity River, California, yields interesting results. Detection was estimated to vary among surveyors, but there was little spatial or temporal variation. Additionally, a weaker effect of water depth on resource selection is estimated than that reported by previous studies not accounting for detection probability. N-mixture models show great promise for applications to riverine resource selection.

Publisher

Canadian Science Publishing

Subject

Aquatic Science,Ecology, Evolution, Behavior and Systematics

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