...
首页> 外文期刊>Ecological indicators >Acoustic space occupancy: Combining ecoacoustics and lidar to model biodiversity variation and detection bias across heterogeneous landscapes
【24h】

Acoustic space occupancy: Combining ecoacoustics and lidar to model biodiversity variation and detection bias across heterogeneous landscapes

机译:声学空间占用:将生物声学和激光乐队结合起来模拟异质景观的生物多样性变化和检测偏差

获取原文
获取原文并翻译 | 示例
           

摘要

There is global interest in quantifying changing biodiversity in human-modified landscapes. Ecoacoustics may offer a promising pathway for supporting multi-taxa monitoring, but its scalability has been hampered by the sonic complexity of biodiverse ecosystems and the imperfect detectability of animal-generated sounds. The acoustic signature of a habitat, or soundscape, contains information about multiple taxa and may circumvent species identification, but robust statistical technology for characterizing community-level attributes is lacking. Here, we present the Acoustic Space Occupancy Model, a flexible hierarchical framework designed to account for detection artifacts from acoustic surveys in order to model biologically relevant variation in acoustic space use among community assemblages. We illustrate its utility in a biologically and structurally diverse Amazon frontier forest landscape, a valuable test case for modeling biodiversity variation and acoustic attenuation from vegetation density. We use complementary airborne lidar data to capture aspects of 3D forest structure hypothesized to influence community composition and acoustic signal detection. Our novel analytic framework permitted us to model both the assembly and detectability of soundscapes using lidar-derived estimates of forest structure. Our empirical predictions were consistent with physical models of frequency-dependent attenuation, and we estimated that the probability of observing animal activity in the frequency channel most vulnerable to acoustic attenuation varied by over 60%, depending on vegetation density. There were also large differences in the biotic use of acoustic space predicted for intact and degraded forest habitats, with notable differences in the soundscape channels predominantly occupied by insects. This study advances the utility of ecoacoustics by providing a robust modeling framework for addressing detection bias from remote audio surveys while preserving the rich dimensionality of soundscape data, which may be critical for inferring biological patterns pertinent to multiple taxonomic groups in the tropics. Our methodology paves the way for greater integration of remotely sensed observations with high-throughput biodiversity data to help bring routine, multi-taxa monitoring to scale in dynamic and diverse landscapes.
机译:全球兴趣量化人类修改景观中的变化生物多样性。生态声学可以提供有前途的途径,用于支持多征税监测,但它的可扩展性受到生物多样性生态系统的声音复杂性以及动物生成声音的不完美可检测性的阻碍。栖息地或Soundscape的声学签名包含有关多个分类群的信息,并且可以缺乏用于表征社区级属性的鲁棒统计技术。这里,我们介绍了声学空间占用模型,灵活的分层框架,旨在解释来自声学调查的伪影,以便在社区组合中模拟声学空间使用的生物相关变化。我们在一个生物和结构多样化的亚马逊边境森林景观中说明了它的实用性,这是一种有价值的测试用例,用于从植被密度建模生物多样性变化和声学衰减。我们使用互补空气激光雷达数据来捕获假设3D林结构的方面,以影响群落组成和声学信号检测。我们的新型分析框架允许我们使用森林结构的激光雷达推导估计来模拟声音景观的组装和可检测性。我们的经验预测与频率依赖性衰减的物理模型一致,我们估计,观察频率通道中的动物活性的可能性最容易受到声学衰减的影响,这取决于植被密度超过60%。在预测完整和降级的森林栖息地预测的声学空间的生物空间也存在巨大差异,这些声景频道主要被昆虫占据了显着差异。本研究通过提供稳健的建模框架来解决来自远程音频调查的鲁棒建模框架,同时保留声景数据的丰富维度,这对于声景数据的丰富维度来说,这对于推断到热带地区的多个分类组相关的生物学模式可能是至关重要的。我们的方法铺平了与高通量生物多样性数据的远程感官观测更加集成的方式,以帮助提高常规,多纳克拉监测,以便在动态和多样化的景观中规模。

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