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A new perspective: Atlantic herring (Clupea harengus) as a case study for time series analysis and historical data.

机译:新视角:大西洋鲱鱼(Clupea harengus)作为时间序列分析和历史数据的案例研究。

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摘要

This thesis endeavors to develop methods for the historical analysis of a specific species and location to begin understanding fishery patterns and change over time. The main goal was to develop statistical methods to address historical data and provide long-term information on fishery trends and potential relationships between the fishery and outside influences. The Atlantic herring (Clupea harengus) fishery was investigated for underlying patterns and the possible impact of outside variables and events from 1870 to 2007.;In the Gulf of Maine, Atlantic herring (Clupea harengus) provide critical forage for many economically valuable species, while supporting a major New England fishery. Extensive research and stock assessments conducted on herring since the 1960s have focused on recent patterns of distribution, abundance, and other fishery characteristics. This work has often neglected longer-term patterns or changes and the long history of anthropogenic influence and exploitation. Further, the current management strategy for herring may be insufficient and herring ecology is not fully understood. Specific questions remain on stock structure and the viability of inshore populations, in addition to the possibly major changes in herring abundance and distribution suggested by historical documents. Due to these questions and their ecological and economic importance, herring are an interesting case study for the investigation of historical data and the application of time series analysis (TSA). Here, TSA was used to explore long-term herring fishery data and the possible influence of anthropogenic events and natural drivers from 1871 to the present (2007).;Historical information on Atlantic herring and oceanographic features was compiled from many sources across New England and in St. Andrews Bay, Canada. For herring, the information was aggregated into a time series by total pounds per year for Maine and the Canadian Bay of Fundy. In addition, a time series was built for sea surface temperature (SST) and surface salinity at St. Andrews Biological Station (SABS) in Canada. Finally, a timeline constructed from the qualitative historical text summarized potentially influential socioeconomic and industry events by year. An initial visual comparison explored possible correlation between fluctuations in the herring time series and events in the time line. Viable events were found to explain many of the visually identified fluctuations.;Once time series were constructed, TSA was used to model the underlying patterns of the herring fishery and oceanographic data. More specifically, auto-regressive-integrated-moving-average (ARIMA) models were applied. These models were then used to interpolate the missing years for complete time series, and ARIMA models were run again on these complete data sets. The final model for the Maine herring fishery was an ARIMA(1,1,0), meaning that the pounds in one year was explained, at least in part, by pounds the year before. For Canada, the model was an ARIMA(0,1,1), indicating that the pounds were more explained by the conservation of noise, or error, from the year previously.;The models developed were then used to begin examining the impact of the events from the qualitative timeline and oceanographic features (SST and salinity) on the fishery time series. Intervention analysis detected outliers, called interventions, representing years of unexpected change in the herring time series. These years were compared to the qualitative time line to determine a possible explanatory event. Such events were speculated for the majority of interventions found. Finally, cross-correlation analysis compared the herring time series with the SABS SST and salinity time series for possible cause-and-effect relationships. The analysis found no significant relationships between the series.;This study demonstrated the potential of TSA and historical data, including the qualitative literature, to better understand fisheries over the long term. TSA is a useful tool for applying historical data to study ecosystems in their entirety, from historical fisheries to today, rather than isolated in time or context. Results can broaden the temporal and ecosystem perspective in which fishery statistics are examined, and methodologies can be refined and expanded in the future. However, as used here, TSA addresses only catch statistics, not abundance or other population parameters. These methods should be used in conjunction with traditional statistical approaches and to inform stock assessment.
机译:本文致力于开发一种对特定物种和位置进行历史分析的方法,以开始了解渔业模式和随时间变化。主要目标是开发统计方法以处理历史数据,并提供有关渔业趋势以及渔业与外部影响之间潜在关系的长期信息。对大西洋鲱鱼(Clupea harengus)渔业进行了调查,研究了其基本模式以及1870年至2007年外部变量和事件的可能影响。在缅因湾,大西洋鲱鱼(Clupea harengus)为许多具有经济价值的物种提供了重要的饲料,而支持新英格兰的主要渔业。自1960年代以来,对鲱鱼进行了广泛的研究和种群评估,重点放在最近的分布方式,丰度和其他渔业特征上。这项工作经常忽视长期模式或变化以及人为影响和剥削的悠久历史。此外,当前的鲱鱼管理策略可能不足,并且对鲱鱼生态还没有完全了解。除历史文献所建议的鲱鱼丰度和分布可能发生重大变化外,还有关于种群结构和近海种群生存力的具体问题。由于这些问题及其生态和经济重要性,鲱鱼是研究历史数据和应用时间序列分析(TSA)的有趣案例。在这里,TSA被用于探索长期鲱鱼渔业数据以及从1871年到现在(2007年)的人为事件和自然驱动因素的可能影响。;有关大西洋鲱鱼和海洋特征的历史信息是从新英格兰各地的许多资料中收集的。在加拿大圣安德鲁斯湾。对于鲱鱼,该信息按缅因州和加拿大芬迪湾的年度总英镑计成一个时间序列。此外,在加拿大的圣安德鲁斯生物站(SABS)建立了一个海面温度(SST)和表面盐度的时间序列。最后,从定性的历史文本中构建的时间轴按年份总结了可能具有影响力的社会经济和行业事件。初步的视觉比较探讨了鲱鱼时间序列中的波动与时间轴中事件之间的可能相关性。发现可行的事件可以解释许多视觉上确定的波动。一旦建立了时间序列,就使用TSA来模拟鲱鱼渔业和海洋学数据的基本模式。更具体地说,应用了自回归积分移动平均(ARIMA)模型。然后使用这些模型对完整时间序列的缺失年份进行插值,然后在这些完整数据集上再次运行ARIMA模型。缅因州鲱鱼渔业的最终模型是ARIMA(1,1,0),这意味着一年中的英镑至少或部分用前一年的英镑来解释。对于加拿大而言,该模型为ARIMA(0,1,1),表明从一年前开始,噪声或误差的保留就可以更好地解释英镑。然后,使用开发的模型来开始研究英镑的影响。定性时间轴上的事件和渔业时间序列上的海洋特征(海表温度和盐度)。干预分析检测到异常值,称为干预,表示鲱鱼时间序列中意外变化的年份。将这些年份与定性时间表进行比较,以确定可能的解释性事件。对于发现的大多数干预措施都推测有此类事件。最后,互相关分析将鲱鱼时间序列与SABS SST和盐度时间序列进行了比较,以了解可能的因果关系。分析发现该系列之间没有显着关系。这项研究证明了TSA和包括定性文献在内的历史数据在长期内更好地了解渔业的潜力。 TSA是一个有用的工具,可用于将历史数据应用于从历史渔业到今天的整个生态系统的整体研究中,而不是在时间或背景上孤立存在。结果可以拓宽审查渔业统计数据的时间和生态系统观点,并且可以在将来完善和扩展方法。但是,此处使用的TSA仅处理捕获统计信息,不处理丰度或其他填充参数。这些方法应与传统的统计方法结合使用,并为库存评估提供依据。

著录项

  • 作者

    Klein, Emily.;

  • 作者单位

    University of New Hampshire.;

  • 授予单位 University of New Hampshire.;
  • 学科 Biology Ecology.;Statistics.;Agriculture Fisheries and Aquaculture.
  • 学位 M.S.
  • 年度 2008
  • 页码 162 p.
  • 总页数 162
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 生态学(生物生态学);统计学;水产、渔业;
  • 关键词

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