首页> 外文学位 >Utilizing multi-source abundance estimation and climate variability to forecast Pacific salmon populations.
【24h】

Utilizing multi-source abundance estimation and climate variability to forecast Pacific salmon populations.

机译:利用多源丰度估计和气候变化来预测太平洋鲑鱼种群。

获取原文
获取原文并翻译 | 示例

摘要

Data limitation is a common property of many fisheries. Some Pacific salmon populations are a typical example of this situation because the monitoring of numerous tributaries within an area becomes logistically intractable. Fishery management often responds to this scenario with qualitative stock assessments in the form of harvest projections In some cases, fishery data, although limited, exists in a variety of sources and may be integrated to develop quantitative population estimates. The first objective of this investigation is to generate a modeling process that combines multiple data sources to estimate abundance and escapement estimates for data-limited salmon populations. Second, we consider the reliability of these estimates by testing for robustness to various simulated levels of measurement error in the data. Finally, we perform rigorous development and selection on an age structured spawner-recruit model that incorporates abundance and escapement estimates and identifies potential environment-recruit relationships.; We demonstrate our technique with a case study on summer chum salmon from the Kuskokwim and Yukon Rivers, Alaska. Recent declines of summer chum returns to this salmon-dependent region have created hardships for the local area residents. We developed a maximum likelihood statistical framework that synchronously combined all available data sources from this management region to estimate abundance and escapement. Successful estimation was dependent on an independent estimate of abundance for a least a few years. We provide error estimates of the modeling process through bootstrap methods. Simulations showed that measurement error had negligible effect on abundance estimates, whereas performance for escapement estimation was tied to the sequence of abundance years.; High explanatory power was attained by including environmental variables in the spawner-recruit relationship developed from these population estimates. We used a three-stage modeling process to maintain biological realism in the predictor variables. Recent changes in variables chosen for the best model were consistent with poor environmental conditions and estimates of forecasting error were much lower than models using no environmental information. Based on our findings, we recommend that managers consider the utility of multiple source estimation and environmental variability with our modeling approach for future regulatory decisions of Pacific salmon fisheries in data-limited regions.
机译:数据限制是许多渔业的共同财产。一些太平洋鲑鱼种群是这种情况的典型例子,因为在一个区域内对众多支流的监测在后勤上变得棘手。在这种情况下,渔业管理部门通常以产量预测的形式进行定性种群评估,以应对这种情况。在某些情况下,渔业数据虽然有限,但存在于各种来源中,可以整合以制定定量的人口估计数。这项研究的第一个目标是生成一个建模过程,该过程将多个数据源结合起来,以估计数据受限的鲑鱼种群的丰度和逃逸率估计。其次,我们通过测试数据中各种模拟误差水平的鲁棒性来考虑这些估计的可靠性。最后,我们对年龄结构的产卵者-征募模型进行严格的开发和选择,该模型结合了丰度和逃逸估计,并确定了潜在的环境-征募关系。我们通过对来自阿拉斯加Kuskokwim和育空河的夏季鲑鱼的案例研究来证明我们的技术。夏季鲑鱼返回这个依赖鲑鱼的地区最近的下降为当地居民带来了困难。我们开发了一个最大似然统计框架,该框架将来自该管理区域的所有可用数据源同步组合在一起,以估计丰度和逸出量。成功的估算取决于至少几年的独立丰度估算。我们通过引导方法提供建模过程的误差估计。模拟表明,测量误差对丰度估计的影响可忽略不计,而擒纵估计的性能则与丰度年的顺序有关。通过将环境变量包括在根据这些种群估计数得出的产卵者-征募关系中,可以获得很高的解释力。我们使用了一个三阶段的建模过程来在预测变量中保持生物学真实性。最近为最佳模型选择的变量的变化与恶劣的环境条件一致,并且预测误差的估计值比没有环境信息的模型要低得多。根据我们的发现,我们建议管理人员考虑采用我们的建模方法对数据有限区域中太平洋鲑鱼渔业的未来监管决策进行多源估计和环境可变性的实用性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号