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Assessing soundscape disturbance through hierarchical models and acoustic indices: A case study on a shelterwood logged northern Michigan forest

机译:通过分层模型和声学指数评估Soundscape扰动:避难所Logged Michigan森林的案例研究

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Assessing the effects of anthropogenic disturbances on wildlife and natural resources is a necessary conservation task. The soundscape is a critical habitat component for acoustically communicating organisms, but the use of the soundscape as a tool for assessing disturbance impacts has been relatively unexplored until recently. Here we present a broad modeling framework for assessing disturbance impacts on soundscapes, which we apply to quantify the influence of a shelterwood logging on soundscapes in northern Michigan. Our modeling approach can be broadly applied to assess anthropogenic disturbance impacts on soundscapes. The approach accommodates inherent differences in control and treatment sites to improve inference about treatment effects, while also accounting for extraneous variables (e.g., rain) that influence acoustic indices.Recordings were obtained at 13 sites before and after a shelterwood logging. Four sites were in the logging region and nine sites served as control recordings outside the logging region. We quantify the soundscapes using common acoustic indices (Normalized Difference Soundscape Index (NDSI), Acoustic Entropy (H), Acoustic Complexity Index (ACI), Acoustic Evenness Index (AEI)) and Welch Power Spectral Density (PSD) values. We build two hierarchical Bayesian models to quantify the changes in the soundscape over the study period.Our analysis reveals no long-lasting effects of the shelterwood logging on the soundscape as measured by the NDSI, but analysis of H, AEI, and PSD suggest changes in the evenness of sounds across the frequency spectrum, indicating a potential shift in the avian species communicating in the soundscapes as a result of the logging. Further, our analysis confirms previous findings that the ACI does not accurately reflect changes in landscape configuration. Multiple model validation techniques (i.e., comparison of parameter estimates and the widely applicable information criterion (WAIC)) reveal our proposed hierarchical Bayesian models outperform more simple models used for hypothesis testing. Acoustic recordings, in conjunction with this modeling framework, can deliver cost efficient assessment of disturbance impacts on the landscape and underlying biodiversity as represented through the soundscape.
机译:评估人为紊乱对野生动物和自然资源的影响是必要的保护任务。 Soundscape是声学沟通生物的关键栖息地组件,但是在最近的情况下,使用Soundscape作为评估干扰影响的工具已经相对未探明。在这里,我们提出了一种广泛的建模框架,用于评估对SoundScapes的干扰影响,我们申请量化避难所登录在密歇根北部的声音变化的影响。我们的建模方法可广泛应用于评估对Soundcapes的人为干扰影响。该方法可容纳控制和治疗部位的固有差异,以改善治疗效果的推断,同时还占影响声学指标的外来变量(例如,雨)。在避难木伐木前后获得13个地点。测井区域中有四个站点,九个站点用作测井区域外的控制记录。我们使用公共声学指标量化SoundScapes(归一化差异Soundscape指数(NDSI),声学熵(H),声学复杂性指数(ACI),声学均匀度指数(AEI)和Welch功率谱密度(PSD)值。我们构建了两个分层贝叶斯模型,以量化研究时期的声音变化。我们的分析显示了由NDSI测量的Soundscape上的Shotelwood测井的长期效果,但是分析H,AEI和PSD建议改变在频谱上的声音的均匀性中,指示由于测量而导致在SoundScapes中通信的禽类种类的电位偏移。此外,我们的分析证实了前面的发现,即ACI不准确地反映景观配置的变化。多种模型验证技术(即参数估计的比较和广泛适用的信息标准(瓦米))揭示了我们所提出的分层贝叶斯模型优于用于假设检测的更简单的模型。声记录与此建模框架相结合,可以提供通过Soundscape所代表的景观和潜在的生物多样性对景观和底层生物多样性的经济有效评估。

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