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Predicting the Composition of Polychaete Assemblages in the Aegean Coast of Turkey

机译:预测土耳其爱琴海沿岸的多档组合组成

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Benthic infaunal species and communities have been extensively used to evaluate quality of the marine environment. Within the MSFD, community composition is addressed most commonly through Descriptor 6 (Seafloor integrity), criterion 6.2 (Condition of benthic communities). At the same time, the Directive has stipulations for addressing and assessing indicators linked with pressures in an explicitly spatial manner. At larger scales, achieving this through point sampling may be impractical or unfeasible; hence predictive methods are being increasingly employed to produce the large scale spatial data that are often required for marine spatial planning and management. The aim of the current work was to develop statistical and spatial modelling tools that can predict the distribution of soft-sediment benthic polychaetes in the Aegean coast of Turkey. To do that, we employed Species Archetype Models (SAMs), a novel analytical and modelling framework which uses mixture models to cluster species responses to the environment, producing a number of “archetypal” responses assumed to represent species with similar ecological/physiological tolerances. Polychaete presence/absence data were obtained from the literature and modelling was performed against environmental variables reflecting the main natural and anthropogenic gradients in the region. The resulting models are interpreted in light of the sensitivity/tolerance classification scheme for benthic invertebrates. Three Species Archetypes were identified through the analysis. In brief, Species Archetype 1 consists of the most prevalent species in the dataset and primarily follows the salinity and temperature gradients. Species Archetype 2, present in the central and southern Aegean, is dominated by sensitive and indifferent species and responds negatively to chlorophyll a, whereas Species Archetype 3 represents mostly tolerant and opportunistic polychaetes with increased probability of occurrence in eutrophic, shallow, inshore areas throughout the region. Predictive performance was constrained by the information contained in our data. These results from a limited data set show promise that SAMs as a modelling tool can offer valuable insights into patterns of benthic species distribution and coexistence and increase our capacity to provide predictive advice.
机译:底栖职业物种和社区广泛用于评估海洋环境的质量。在MSFD中,社区组成是通过描述符6(Seafloor Integrity),标准6.2(Benthic Communities的条件)来解决。与此同时,该指令有规定,用于以明确的空间方式解决和评估与压力相关的指标。在较大的尺度上,通过点采样实现这一目标可能是不可行的或不可行的;因此,越来越多地采用预测方法来生产通常需要海上空间规划和管理所需的大规模空间数据。目前的工作的目的是开发统计和空间建模工具,可以预测土耳其爱琴海沿岸的软泥石底层多重的分布。为此,我们采用了物种原型模型(SAM),一种新的分析和建模框架,它利用混合模型对环境的响应,产生了许多“archetypal”响应,以表示具有类似生态/生理公差的物种。从文献中获得多芯片存在/不存在数据,并针对反映该地区主要自然和人为梯度的环境变量进行建模。鉴于底栖无脊椎动物的灵敏度/公差分类方案,将得到的模型解释。通过分析确定了三种物种原型。简而言之,物种原型1包括数据集中最普遍的物种,主要遵循盐度和温度梯度。在中央和南部的南极琴中的物种原型2由敏感和无动于性物种主导,对叶绿素A负面反应,而物种原型3代表了大多数耐受性和机会化的多重,随着富养殖,浅层区域的发生概率增加,较大的耐受性和机会化的多晶。地区。预测性能受到我们数据中包含的信息的限制。这些来自有限的数据集的结果显示了许可证作为建模工具的假设可以提供有价值的见解,并提供对底栖物种分配和共存模式的有价值的见解,并提高我们提供预测建议的能力。

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