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首页> 外文期刊>Biodiversity and Conservation >Human proximity and habitat fragmentation are key drivers of the rangewide bonobo distribution.
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Human proximity and habitat fragmentation are key drivers of the rangewide bonobo distribution.

机译:人与人之间的距离和栖息地的破碎化是整个bo黑猩猩分布的主要驱动力。

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摘要

Habitat loss and hunting threaten bonobos (Pan paniscus), Endangered (IUCN) great apes endemic to lowland rainforests of the Democratic Republic of Congo. Conservation planning requires a current, data-driven, rangewide map of probable bonobo distribution and an understanding of key attributes of areas used by bonobos. We present a rangewide suitability model for bonobos based on a maximum entropy algorithm in which data associated with locations of bonobo nests helped predict suitable conditions across the species' entire range. We systematically evaluated available biotic and abiotic factors, including a bonobo-specific forest fragmentation layer (forest edge density), and produced a final model revealing the importance of simple threat-based factors in a data poor environment. We confronted the issue of survey bias in presence-only models and devised a novel evaluation approach applicable to other taxa by comparing models built with data from geographically distinct sub-regions that had higher survey effort. The model's classification accuracy was high (AUC=0.82). Distance from agriculture and forest edge density best predicted bonobo occurrence with bonobo nests more likely to occur farther from agriculture and in areas of lower edge density. These results suggest that bonobos either avoid areas of higher human activity, fragmented forests, or both, and that humans reduce the effective habitat of bonobos. The model results contribute to an increased understanding of threats to bonobo populations, as well as help identify priority areas for future surveys and determine core bonobo protection areas.
机译:栖息地的丧失和狩猎威胁no黑猩猩(Pan paniscus),濒临灭绝的大猩猩(IUCN),这是刚果民主共和国低地雨林特有的。保护规划要求有一个最新的,数据驱动的,范围广泛的bo黑猩猩分布图,并需要了解bo黑猩猩使用地区的关键属性。我们基于最大熵算法提出了一个针对bo黑猩猩的全范围适应性模型,其中与bo黑猩猩巢巢位置相关的数据有助于预测物种整个范围内的适宜条件。我们系统地评估了可用的生物和非生物因素,包括bo黑猩猩特有的森林破碎层(森林边缘密度),并生成了一个最终模型,揭示了在数据贫乏的环境中基于简单威胁的因素的重要性。我们在仅存在状态模型中面临调查偏见的问题,并通过比较使用来自具有较高调查工作量的地理上不同的次区域的数据构建的模型,设计了一种适用于其他分类单元的新颖评估方法。该模型的分类精度很高(AUC = 0.82)。距农业和森林边缘密度的距离最能预测bo黑猩猩的发生,bo黑猩猩巢更可能发生在距农业较远的地方和边缘密度较低的地区。这些结果表明,bo黑猩猩要么避开人类活动活跃的地区,零散的森林,要么兼而有之,而且人类会减少bo黑猩猩的有效栖息地。模型结果有助于增进对bo黑猩猩种群威胁的了解,并有助于确定未来调查的优先领域并确定determine黑猩猩的核心保护区。

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