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首页> 外文期刊>Journal of Applied Phycology >Allometric models effectively predict Saccharina latissima (Laminariales, Phaeophyceae) fresh weight at local scales
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Allometric models effectively predict Saccharina latissima (Laminariales, Phaeophyceae) fresh weight at local scales

机译:同种异数模型有效地预测了当地鳞片上的Saccharina Latissima(Laminariales,Phaeophyceee)鲜重

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Obtaining reliable estimates of algal biomass is key to assessing the contributions of macroalgae to nearshore ecosystems and to monitoring the effects of environmental change on macroalgal-dominated reefs. Using non-destructive methods to estimate macroalgal biomass leaves algal beds intact but requires precise allometric models (e.g., length-weight relationships). In this study, we established allometric relationships for the widespread kelp, Saccharina latissima, in the Salish Sea. Thalli were harvested from five sites across two regions in Southern British Columbia and the abilities of four non-destructive metrics (stipe length, blade length, blade width, and total thallus length) to predict thallus fresh weight were compared. Allometric models were developed for each region for all combinations of thallus metrics to explain thallus fresh weight and models were ranked based on their AICc scores. Finally, using our largest sample (n = 114 individuals), we performed a resampling experiment to determine the appropriate sample size for constructing local models. These models can be developed from as little as 2 hours of field data collection and are inexpensive and effective methods for non-destructively estimating S. latissima biomass.
机译:获得藻类生物量的可靠估计对于评估大型藻类对近岸生态系统的贡献以及监测环境变化对以大型藻类为主的珊瑚礁的影响至关重要。使用非破坏性方法估算大型藻类生物量会使藻床保持完整,但需要精确的异速生长模型(例如,长度-重量关系)。在这项研究中,我们建立了Salish海中广泛分布的海带Saccharina latissima的异速生长关系。从不列颠哥伦比亚省南部两个地区的五个地点采集叶状体,比较四种非破坏性指标(柄长、叶片长度、叶片宽度和叶状体总长度)预测叶状体鲜重的能力。针对所有叶状体指标组合,为每个区域开发了异速生长模型,以解释叶状体鲜重,并根据其AICc分数对模型进行排序。最后,使用我们最大的样本(n=114个个体),我们进行了重新抽样实验,以确定构建局部模型的适当样本量。这些模型只需2小时的野外数据收集即可开发出来,是一种经济有效的无破坏性估算宽吻链球菌生物量的方法。

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