...
首页> 外文期刊>Ecoscience >Predicting non-inventoried forest elements using forest inventory data: The case of winter forage for woodland caribou
【24h】

Predicting non-inventoried forest elements using forest inventory data: The case of winter forage for woodland caribou

机译:使用森林清单数据预测非清单森林要素:林地驯鹿冬季觅食的情况

获取原文
获取原文并翻译 | 示例
           

摘要

Growing development pressures and expectations that forest managers provide future wildlife habitat require better understanding of species' habitat needs, particularly food, cover, and space requirements, and an ability to spatially depict these needs. In forest management in Canada, the primary data used to identify and quantify wildlife habitat reside in remotely sensed forest resource inventories (FRI) that were originally developed to assess timber values for merchantable tree species. Although FRI- and field-based sampling do not always show strong agreement, research has shown that FRI can be informative for wildlife habitat assessments. However, much uncertainty remains when investigating forest characteristics that are not visible to the interpreters, such as sub-canopy features. Here, we used 152 plots in northwestern Ontario to compare the ability of field-based and remotely sensed forest inventories to predict Cladonia lichen cover, a primary winter food source for woodland caribou. The best model for field-based data, which included percentage of jack pine and black spruce in the tree canopy, tree height, stand age, soil moisture, and stem density, correctly predicted 92% of cases where Cladonia spp. were absent (n = 107 plots) and 62% of cases where they were present (i.e., cover >1%; n = 45 plots). FRI performed poorly by contrast, with corresponding percentages of 96 and 19%. FRI provide weak data support for differentiating winter forage availability for woodland caribou, an important habitat factor at the stand level. These findings have important implications for predictions of herd productivity, and suggest that improved remote-sensing capabilities are required in order to assess woodland caribou winter habitat.
机译:不断增长的发展压力和对森林管理者提供未来野生动植物栖息地的期望,需要更好地了解物种的栖息地需求,尤其是食物,覆盖物和空间需求,并具有在空间上描述这些需求的能力。在加拿大的森林管理中,用于识别和量化野生动植物栖息地的主要数据位于遥感森林资源清单(FRI)中,该清单最初用于评估可买卖树木的木材价值。尽管基于FRI的采样与基于现场的采样并不总是显示出很强的一致性,但研究表明FRI可以为野生动植物栖息地评估提供信息。但是,在调查口译员看不见的森林特征(例如子冠层特征)时,仍然存在很多不确定性。在这里,我们使用了安大略省西北部的152个样地,比较了野外和遥感森林资源库预测克拉德尼亚地衣覆盖度(林地驯鹿的主要冬季食物来源)的能力。基于野外数据的最佳模型(包括树冠中的松树和黑云杉的百分比,树高,林分年龄,土壤湿度和茎密度)可以正确预测92%的枝枝败血症。缺席(n = 107个地块)和62%的情况(即覆盖率> 1%; n = 45个地块)。相比之下,FRI表现较差,分别为96%和19%。 FRI为区分林地北美驯鹿的冬季饲料供应量提供了薄弱的数据支持,林地北美驯鹿是林分一级的重要生境因素。这些发现对预测牛群生产力具有重要意义,并表明需要改进的遥感能力以评估林地驯鹿冬季栖息地。

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