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首页> 外文期刊>North American Journal of Fisheries Management >Evaluation of Hypotheses for Describing Temporal Trends in Atlantic Salmon Parr Densities in Northeast US Rivers
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Evaluation of Hypotheses for Describing Temporal Trends in Atlantic Salmon Parr Densities in Northeast US Rivers

机译:描述美国东北河流大西洋鲑鱼密度密度变化趋势的假说的评估

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摘要

Atlantic salmon Salmo salar in the USA have declined dramatically and their persistence is heavily dependent on stocking juvenile fish, predominantly fry. The success of stocking hatchery fry is evaluated annually throughout New England by electrofishing surveys targeting age-1 parr. The objective of this study was to examine temporal trends in Atlantic salmon parr densities throughout New England and determine how trends vary among river basins. We fit generalized additive mixed models to investigate potential linear and nonlinear temporal trends in parr density. Akaike's information criterion was used to evaluate competing hypotheses about how temporal trends vary regionally. The top-ranked model suggested two types of trends. The first type (the Penobscot River) showed a nonlinear trend in which parr densities increased until the 1990s and then rapidly decreased through 2008. The second type (all other rivers) showed a linear decrease throughout the time series. Parr density trends reflected trends in spawning escapement for each river group. We conclude that fry stocking has not been able to overcome the decrease in spawning escapement in altered stream ecosystems in New England and that additional management strategies should be considered.
机译:美国的大西洋鲑Salmo salar急剧下降,其持久性在很大程度上取决于幼鱼的放养,主要是鱼苗。在整个新英格兰,每年都会通过针对1岁幼龄儿童的电钓鱼调查来评估放养孵化场苗的成功与否。这项研究的目的是研究整个新英格兰地区大西洋鲑鱼parr密度的时间趋势,并确定流域之间的趋势如何变化。我们拟合广义加法混合模型来研究parr密度的潜在线性和非线性时间趋势。 Akaike的信息标准用于评估关于时间趋势在区域中如何变化的相互竞争的假设。排名最高的模型建议了两种趋势。第一种(Penobscot河)呈非线性趋势,parr密度一直增加到1990年代,然后在2008年前迅速下降。第二种(所有其他河流)在整个时间序列中呈线性下降。帕尔密度趋势反映了每个河流群产卵擒纵的趋势。我们得出的结论是,在新英格兰改变的河流生态系统中,鱼苗放养并不能克服产卵逸出量的减少,因此应考虑其他管理策略。

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