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Nesting Patterns of Loggerhead Sea Turtles (Caretta caretta): Development of a Multiple Regression Model Tested in North Carolina, USA

机译:Loggerhead海龟(Caretta Caretta)的嵌套图案:在美国北卡罗来纳测试的多元回归模型的发展

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摘要

Numerous environmental conditions may influence when a female Loggerhead sea turtle (Caretta caretta) selects a nesting site. Limited research has used Geographic Information Systems (GIS) and statistical analysis to study sea turtle spatial patterns and temporal trends. Therefore, the goals of this research were to identify areas that were most prevalent for nesting and to test social and environmental variables to create a nesting suitability predictive model. Data were analyzed at all barrier island beaches in North Carolina, USA (515 km) and several variables were statistically significant: distance to hardened structures, beach nourishment, house density, distance to inlets, and beach elevation, slope, and width. Interestingly, variables that were not significant were population density, proximity to the Gulf Stream, and beach aspect. Several statistical techniques were tested and Negative Binomial Distribution produced good regional results while Geographically Weighted Regression models successfully predicted the number of nests with an average of 75% of the variance explained. Therefore, the combination of traditional and spatial statistics provided insightful predictive modeling results that may be incorporated into management strategies and may have important implications for the designation of critical Loggerhead nesting habitats.
机译:当一个女蠵龟(科圆科圆)选择筑巢许多环境条件可能影响。有限的研究使用了地理信息系统(GIS)和统计分析,以研究海龟的空间格局和时间趋势。因此,本研究的目标是,以确定是筑巢最普遍的地区和测试的社会和环境变量来创建一个嵌套适宜预测模型。数据是在美国北卡罗莱纳州(515公里)的所有障壁岛海滩分析几个变量在统计上显著:距离硬化结构,海滩养护,房屋密度,到入口的距离,和海滩高程,坡度和宽度。有趣的是,那些不显著变量是人口密度,接近墨西哥湾暖流,和海滩方面。一些统计方法进行了测试,而地理加权回归模型成功预测巢的数量,平均方差的75%,说明负二项分布产生了良好的区域结果。因此,传统的和空间统计的组合提供有见地的预测模型的结果可能被纳入管理战略和可能对关键蠵筑巢栖息地的指定重要的意义。

著录项

  • 作者

    Joanne Halls; Alyssa Randall;

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  • 年度 2018
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  • 原文格式 PDF
  • 正文语种 eng
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