...
首页> 外文期刊>International Journal of Primatology >Applying Landscape Metrics to Characterize Potential Habitat of Bonobos (Pan paniscus) in the Maringa-Lopori-Wamba Landscape, Democratic Republic of Congo
【24h】

Applying Landscape Metrics to Characterize Potential Habitat of Bonobos (Pan paniscus) in the Maringa-Lopori-Wamba Landscape, Democratic Republic of Congo

机译:应用景观度量标准表征刚果民主共和国Maringa-Lopori-Wamba景观中Bon黑猩猩的潜在栖息地

获取原文
获取原文并翻译 | 示例
   

获取外文期刊封面封底 >>

       

摘要

To conserve areas and species threatened by immediate landscape change requires that we make planning decisions for large areas in the absence of adequate data. Here we study the utility of broad-scale landscape metrics as predictors of species occurrence, especially for remote areas where there is a need to make the most of limited spatial and biological data. Bonobos (Pan paniscus) are endangered great apes endemic to lowland forests of the Democratic Republic of Congo. They are threatened by bushmeat hunting that is exacerbated by habitat fragmentation through slash-and-burn agriculture and timber harvest. We developed four landscape metrics —edge density (ED), COHESION, CONTAGION, and class area (CA)— that may serve as surrogates for measuring accessibility of areas to hunting in order to predict relative bonobo-habitat suitability. We calculated the metrics for the Maringa-Lopori-Wamba (MLW) landscape and evaluated them for utility in predicting bonobo-nest occupancy based on 2009 field data. Cross-validations showed that all four metrics performed similarly. However, forest ED was arguably the best predictor, with an overall classification accuracy of 72.1% in which 85% of known nest blocks (N = 124) were classified correctly. We demonstrated that for a relatively intact landscape and a mobile forest-dwelling species that is fairly tolerant of forest openings, forest fragmentation can still be an important predictor of species occurrence. We suggest that ED can be helpful when mapping bonobo habitat in MLW and can aid landscape-planning and conservation efforts. Our approach may be applied to other edge-sensitive species, especially where high-resolution data are deficient.
机译:为了保护受到立即景观变化威胁的地区和物种,我们需要在缺乏足够数据的情况下为大面积地区做出规划决策。在这里,我们研究了广泛的景观指标作为物种发生预测指标的效用,特别是对于偏远地区,这些地区需要充分利用有限的空间和生物数据。黑猩猩(Pan paniscus)是刚果民主共和国低地森林特有的大猿类。他们受到森林猎杀的威胁,由于砍伐和焚烧的农业以及木材的砍伐,栖息地的破碎加剧了森林猎杀的危险。我们开发了四个景观指标-边缘密度(ED),凝聚力,传染性和班级面积(CA)-可作为替代指标,用于测量狩猎区域的可及性,从而预测相对于bo黑猩猩-栖息地的适宜性。我们计算了Maringa-Lopori-Wamba(MLW)景观的指标,并根据2009年的实地数据评估了它们在预测黑猩猩巢居率方面的效用。交叉验证表明,所有四个指标的表现均相似。但是,森林ED可以说是最好的预测指标,总体分类准确率为72.1%,其中正确分类了85%的已知巢块(N = 124)。我们证明,对于相对完整的景观和相当容忍森林开放的流动性森林居住物种,森林破碎仍然可以作为物种发生的重要预测指标。我们建议,ED在绘制MLW中的bo黑猩猩栖息地时可能会有所帮助,并有助于景观规划和保护工作。我们的方法可能适用于其他边缘敏感物种,尤其是在高分辨率数据不足的情况下。

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