首页> 外文期刊>The Coleopterists bulletin >'COLLECTION BIAS' AND THE IMPORTANCE OF NATURAL HISTORY COLLECTIONS IN SPECIES HABITAT MODELING: A CASE STUDY USING THORACOPHORUS COSTALIS ERICHSON (COLEOPTERA: STAPHYLINIDAE: OSORIINAE), WITH A CRITIQUE OF GBIF.ORG
【24h】

'COLLECTION BIAS' AND THE IMPORTANCE OF NATURAL HISTORY COLLECTIONS IN SPECIES HABITAT MODELING: A CASE STUDY USING THORACOPHORUS COSTALIS ERICHSON (COLEOPTERA: STAPHYLINIDAE: OSORIINAE), WITH A CRITIQUE OF GBIF.ORG

机译:“收藏偏见”和自然历史收藏在物种栖息地建模中的重要性:以THORACOPHORUS COSTALIS ERICHSON(COLEOPTERA:STAPHYLINIDAE:OSORIINAE)为例,并以GBIF.ORG进行了批判

获取原文
获取原文并翻译 | 示例
获取外文期刊封面目录资料

摘要

When attempting to understand a species' distribution, knowing how many collections should be surveyed to achieve an adequate sample (exhaustiveness) is important. A test for exhaustiveness using species distribution models created with Diva-GIS was performed on county level locality information recorded from more than 4,900 specimens of Thoracophorus costalis Erichson (Staphylinidae: Osoriinae) borrowed from 38 collections. Size and location of distribution models based on specimens from single collections varied greatly, indicating "collection bias." At least 15 collections needed to be combined before the resultant model averaged 90% of the area of a reference model created from all available specimens. By themselves, alternative distribution data from literature, Bugguide. net, and GBIF.org performed poorly, resulting in models with less than 15% the area of the reference model. Comments on the use of online data, the importance of maintaining and growing regional collections, and the future of natural history collections are included.
机译:当试图了解一个物种的分布时,了解应该进行多少次采集以获取足够的样本(详尽性)很重要。使用Diva-GIS创建的物种分布模型对穷举性进行了测试,对县级本地信息进行了记录,该信息是从38个收藏中借来的4,900多个胸鳍古猿Erichson(Staphylinidae:Osoriinae)样本中获得的。基于来自单个集合的样本的分布模型的大小和位置变化很大,表明“集合偏差”。在生成的模型平均使用所有可用样本创建的参考模型的面积的90%之前,至少需要合并15个集合。就其本身而言,来自文献Bugguide的替代分布数据。净,GBIF.org的效果不佳,导致模型的面积小于参考模型的15%。其中包括对在线数据的使用,维护和发展区域收藏品的重要性以及自然历史收藏品的未来的评论。

著录项

相似文献

  • 外文文献
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号