The Open Fish Science Journal

2012, 5 : 1-8
Published online 2012 January 12. DOI: 10.2174/1874401X01205010001
Publisher ID: TOFISHSJ-5-1

Evaluating a Fish Monitoring Protocol Using State-Space Hierarchical Models

Robin E. Russell , David A. Schmetterling , Chris S. Guy , Bradley B. Shepard , Robert McFarland and Donald Skaar
US Geological Survey, 6006 Schroeder Rd, Madison WI, 53711, USA.

ABSTRACT

Using data collected from three river reaches in Montana, we evaluated our ability to detect population trends and predict fish future fish abundance. Data were collected as part of a long-term monitoring program conducted by Montana Fish, Wildlife and Parks to primarily estimate rainbow (Oncorhynchus mykiss) and brown trout (Salmo trutta) abundance in numerous rivers across Montana. We used a hierarchical Bayesian mark-recapture model to estimate fish abundance over time in each of the three river reaches. We then fit a state-space Gompertz model to estimate current trends and future fish populations. Density dependent effects were detected in 1 of the 6 fish populations. Predictions of future fish populations displayed wide credible intervals. Our simulations indicated that given the observed variation in the abundance estimates, the probability of detecting a 30% decline in fish populations over a five-year period was less than 50%. We recommend a monitoring program that is closely tied to management objectives and reflects the precision necessary to make informed management decisions.