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Development and evaluation of a migration timing forecast model for Kuskokwim River Chinook salmon

机译:Kuskokwim River Chinook Salmon迁移时间预测模型的开发与评价

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Annual variation in adult salmon migration timing makes the interpretation of in-season assessment data difficult, leading to much in-season uncertainty in run size. We developed and evaluated a run timing forecast model for the Kuskokwim River Chinook salmon stock, located in western Alaska, intended to aid in reducing this source of uncertainty. An objective and adaptive approach (using model-averaging and a sliding window algorithm to select predictive time periods, both calibrated annually) was adopted to deal with multidimensional selection of four climatic variables and was based entirely on predictive performance. Forecast cross-validation was used to evaluate the performance of three forecasting approaches: the null (i.e., intercept only) model, the single model with the lowest mean absolute error, and a model-averaged forecast across 16 nested linear models. As of 2016, the null model had the lowest mean absolute error (2.64 days), although the model-averaged forecast performed as well or better than the null model in the majority of retrospective years. The model averaged forecast had a consistent mean absolute error regardless of the type of year (i.e., average or extreme early/late) the forecast was made for, which was not true of the null model. The availability of the run timing forecast was not found to increase overall accuracy of in-season run assessments in relation to the null model, but was found to substantially increase the precision of these assessments, particularly early in the season.
机译:成年鲑鱼迁移时机的年度变异使得季节性评估数据的解释困难,导致运行大小的季节性不确定性。我们开发并评估了位于阿拉斯加西部的Kuskokwim River Chinook Salmon股票的运行定时预测模型,旨在帮助减少这种不确定来源。采用了目标和自适应方法(使用模型平均和用于选择每年进行预测时间段的滑动窗口算法)来处理四个气候变量的多维选择,并完全基于预测性能。预测交叉验证用于评估三种预测方法的性能:null(即,拦截仅)模型,单个模型具有最低的平均绝对误差,以及跨16个嵌套线性模型的模型平均预测。截至2016年,零模型具有最低的平均绝对误差(2.64天),尽管在大多数回顾性年份的空白模型中表现或更好地进行了模型平均预测。无论年份的类型(即平均或极端/晚),模型平均预测都有一个符合的平均绝对误差,这是对零模型的预测。未发现运行时序预测的可用性,以提高与空模型相关的季节运行评估的整体准确性,但被发现大幅提高了这些评估的精确性,特别是本赛季早期。

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