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首页> 外文期刊>Brazilian Journal of Oceanography >Predictive modeling of suitable habitats for threatened marine invertebrates and implications for conservation assessment in Brazil
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Predictive modeling of suitable habitats for threatened marine invertebrates and implications for conservation assessment in Brazil

机译:适用于受威胁的无脊椎动物的适宜生境的预测模型及其对巴西保护评估的意义

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Spatial analysis and modeling tools were employed to predict suitable habitat distribution for threatened marine invertebrates and estimate the overlap between highly suitable areas for these species and the Brazilian marine protected areas (MPAs). Records of the occurrence of species were obtained from the collections included in the Ocean Biogeographic Information System (OBIS-Brazil), with additional records culled from the literature. The distribution data of 16 out of 33 threatened species, with at least ten occurrences in the available records, were selected for modeling by Maxent algorithm (Maximum Entropy Modeling) based on environmental variables (temperature, salinity, bathymetry and their derivatives). The resulting maps were filtered with a fixed threshold of 0.5 (to distinguish only the highly suitable areas) and superimposed on MPA digital maps. The algorithm produced reasonable predictions of the species' potential distributions, showing that the patterns predicted by the model are largely consistent with current knowledge of the species. The distribution of the highly suitable areas showed little overlapping with Brazilian MPAs. This study showed how the habitat suitability for threatened species can be assessed using GIS applications and modeling tools.
机译:空间分析和建模工具被用来预测受威胁的海洋无脊椎动物的合适栖息地分布,并估计高度适合这些物种的区域与巴西海洋保护区(MPA)之间的重叠。从海洋生物地理信息系统(OBIS-Brazil)中包括的收集物中获得物种发生的记录,并从文献中挑选出其他记录。通过Maxent算法(最大熵建模),根据环境变量(温度,盐度,水深及其衍生物),选择了33种受威胁物种中16种的分布数据,其中至少有10种在可用记录中进行了建模。用固定的阈值0.5过滤生成的地图(以仅区分高度合适的区域)并叠加在MPA数字地图上。该算法对物种的潜在分布进行了合理的预测,表明该模型预测的模式与该物种的当前知识基本一致。高度合适区域的分布与巴西MPA几乎没有重叠。这项研究表明,如何使用GIS应用程序和建模工具评估受威胁物种的生境适应性。

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