首页> 外文期刊>Biological Conservation >Using summed individual species models and state-of-the-art modelling techniques to identify threatened plant species hotspots
【24h】

Using summed individual species models and state-of-the-art modelling techniques to identify threatened plant species hotspots

机译:使用汇总的个体物种模型和最新的建模技术来识别受威胁的植物物种热点

获取原文
获取原文并翻译 | 示例
       

摘要

Reliable identification of hotspot areas with high numbers of threatened plant species has a central role in conservation planning. We investigated the potentiality of identifying the distribution, richness and hotspots of threatened plant species at a 25ha resolution using eight state-of-the-art modelling techniques (GLM, GAM, MARS, ANN, CTA, GBM, MDA and RF) in a taiga landscape in north-eastern Finland. First, the individual species models developed based on occurrence records of 28 species in the 1677 grid squares and derived from different statistical techniques were extrapolated to the whole study area of 41 750kmpo. Second, the projected presence/absence maps were then combined to create species richness maps, and the top 5% of grid cells ranked by species richness were classified as hotspots. Finally, we created an overall summary map by combining the individual hotspot maps from all eight modelling techniques and identified areas where the individual hotspots maps overlapped most. There were distinguishing differences in projections of the geographic patterns of species richness and hotspots between the modelling techniques. Most of the modelling techniques predicted several hotspot locations sporadically around the study area. However, the overall summary map showed the highest predictive performance based on Kappa statistics, indicating that the locations where the hotspot maps from the eight models coincided most harboured highest observed species richness. Moreover, the summary map filtered out the patchy structures of individual hotspot maps. The results show that the choice of modelling technique may affect the accuracy and prediction of hotspot patterns. Such differences may hamper the development of useful biodiversity model applications for conservation planning, and thus it is beneficial if the conservation decision-making can be based on sets of alternative maps and overlaying of predictions from multiple models.
机译:可靠地识别具有大量受威胁植物物种的热点地区在保护规划中发挥着核心作用。我们使用八种最先进的建模技术(GLM,GAM,MARS,ANN,CTA,GBM,MDA和RF),以25公顷的分辨率调查了识别受威胁植物物种的分布,丰富度和热点的潜力。东北芬兰的针叶林景观。首先,基于1677个网格正方形中28种物种的发生记录而开发并基于不同统计技术得出的个体物种模型被外推到41 750 kmpo的整个研究区域。其次,然后将投影的存在/不存在图进行组合以创建物种丰富度图,并将按物种丰富度排名的前5%的网格单元归类为热点。最后,我们通过组合来自所有八种建模技术的单个热点图并确定单个热点图最重叠的区域来创建总体摘要图。在建模技术之间,物种丰富度和热点地理分布的预测存在明显差异。大多数建模技术会零星地预测研究区域周围的几个热点位置。但是,基于Kappa统计数据,总体摘要图显示出最高的预测性能,这表明来自八个模型的热点图与大多数被观察到的物种丰富度最重合的位置。此外,摘要地图过滤掉了各个热点地图的斑驳结构。结果表明,建模技术的选择可能会影响热点模式的准确性和预测。这种差异可能会妨碍用于保护规划的有用生物多样性模型应用程序的开发,因此,如果保护决策可以基于备选地图集和来自多个模型的预测的叠加,则将是有益的。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
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