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Predictive modelling of eelgrass (Zostera marina) depth limits

机译:鳗el(Zostera marina)深度极限的预测模型

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摘要

Empirical models relating secchi depths to maximum depth limits of eelgrass (Zostera marina L.) can describe basic differences in depth limits between areas or time periods exhibiting large differences in secchi depth. However, these models cannot predict the precise depth limit at a particular site at any specific time. In this study we aim to improve the ability of regression models to predict maximum depth limits by: ( 1) assuming that eelgrass depth limits respond to changes in secchi depth with a temporal delay of 1 2 years, ( 2) including other water-quality variables in addition to secchi depth, and ( 3) taking into account that factors regulating depth limits may vary between years and between sites. We were not able to improve the models by introducing a systematic delay in the response of depth limits to changes in secchi depths. The reason for this failure is likely to have been the systematic nature of our approach, since some sites responded with a delay, while others did not. The explanatory power of the models increased when additional water-quality variables were added in a multiple regression model. Where secchi depth alone explained 58% of the variations in depth limits, addition of winter [NH4+] and maximum water depth as independent variables increased the explanatory power to 71%. These models applied to data from one specific year, but when data from several years ( 1989 - 1998) were included, only 35% of the variation in depth limits could be explained by the three factors. More detailed analyses showed that the regulation of eelgrass depth limits varied considerably between years and between sites, and the models were further improved by taking this information into account. Our results confirmed previous studies by showing light to be the most important parameter in the regulation of eelgrass depth limits, but also revealed a complexity in the regulation of depth limits not expressed in earlier studies. Limited colonisation potentials may delay the response to improved light conditions, and hypoxia/ anoxia and indirect effects of nutrients may prevent eelgrass from attaining the depth limit that light levels would allow. The power to predict depth limits on the basis of secchi depths can therefore be improved by taking site-specific information on eelgrass growth conditions into account.
机译:将裂chi深度与鳗草的最大深度限制相关的经验模型可以描述在区域或时间段之间显示深裂深度的较大差异的深度限制的基本差异。但是,这些模型无法在任何特定时间预测特定站点的精确深度限制。在这项研究中,我们旨在通过以下方法来提高回归模型预测最大深度限制的能力:(1)假设鳗草深度限制以1 2年的时间延迟响应secchi深度的变化,(2)包括其他水质(3)考虑到调节深度限制的因素在年份之间和地点之间可能会有所不同。我们无法通过在深度限制对secchi深度变化的响应中引入系统性延迟来改进模型。失败的原因可能是我们方法的系统性,因为某些站点的响应延迟,而其他站点则没有。当在多元回归模型中添加其他水质变量时,模型的解释力增加。在仅secchi深度解释了58%的深度极限变化的情况下,加上冬天[NH4 +]和最大水深作为独立变量将解释力提高到71%。这些模型适用于某一特定年份的数据,但是如果包括几年(1989-1998)的数据,则只能用三个因素解释深度极限变化的35%。更详细的分析表明,鳗草深度限制的规定在不同年份之间以及不同地点之间都存在很大差异,并且通过考虑这些信息进一步改进了模型。我们的结果通过显示光是鳗e深度限制的调节中最重要的参数,从而证实了先前的研究,但同时也揭示了深度限制的调节是早期研究中未表达的复杂性。有限的定殖势可能会延迟对光照条件改善的反应,缺氧/缺氧和营养物质的间接作用可能会阻止鳗gra达到光照水平所允许的深度极限。因此,通过考虑鳗鱼生长条件的特定地点信息,可以提高根据secchi深度预测深度极限的能力。

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