Bayesian arrival model for Atlantic salmon smolt counts powered by environmental covariates and expert knowledge

Canadian Journal of Fisheries and Aquatic Sciences(2020)

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摘要
Annual run size and timing of Atlantic salmon smolts was estimated using Bayesian model framework and data from six years of a video monitoring survey. The model has a modular structure. It separates sub-processes of departing, traveling and observing, of which the first two together define the arrival distribution. The sub-processes utilize biological background and expert knowledge about the migratory behavior of smolts and about the probability to observe them from the video footage under varying environmental conditions. Daily mean temperature and discharge were used as environmental covariates. The model framework does not require assuming a simple distributional shape for the arrival dynamics and thus also allows for multimodal arrival distributions. Results indicate that 25% - 75% of smolts pass the Utsjoki monitoring site unobserved. Predictive studies were made to estimate daily run size in cases with missing counts either at the beginning or in the middle of the run, indicating good predictive performance.
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关键词
salmon,arrival model,passage count,Bayesian models,environmental covariates,expert knowledge,biological realism,missing data,prediction
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