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Inferring ecological and behavioral drivers of African elephant movement using a linear filtering approach

机译:使用线性过滤方法推断非洲大象运动的生态和行为驱动力

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Understanding the environmental factors influencing animal movements is fundamental to theoretical and applied research in the field of movement ecology. Studies relating fine-scale movement paths to spatiotemporally structured landscape data, such as vegetation productivity or human activity, are particularly lacking despite the obvious importance of such information to understanding drivers of animal movement. In part, this may be because few approaches provide the sophistication to characterize the complexity of movement behavior and relate it to diverse, varying environmental stimuli. We overcame this hurdle by applying, for the first time to an ecological question, a finite impulse-response signal-filtering approach to identify human and natural environmental drivers of movements of 13 free-ranging African elephants (Loxodonta africana) from distinct social groups collected over seven years. A minimum mean-square error (MMSE) estimation criterion allowed comparison of the predictive power of landscape and ecological model inputs. We showed that a filter combining vegetation dynamics, human and physical landscape features, and previous movement outperformed simpler filter structures, indicating the importance of both dynamic and static landscape features, as well as habit, on movement decisions taken by elephants. Elephant responses to vegetation productivity indices were not uniform in time or space, indicating that elephant foraging strategies are more complex than simply gravitation toward areas of high productivity. Predictions were most frequently inaccurate outside protected area boundaries near human settlements, suggesting that human activity disrupts typical elephant movement behavior. Successful management strategies at the human-elephant interface, therefore, are likely to be context specific and dynamic. Signal processing provides a promising approach for elucidating environmental factors that drive animal movements over large time and spatial scales.
机译:了解影响动物运动的环境因素是运动生态学领域理论和应用研究的基础。尽管这类信息对于理解动物运动的驱动者具有明显的重要性,但尤其缺乏将精细运动路径与时空结构化景观数据(例如植被生产力或人类活动)相关的研究。在某种程度上,这可能是因为很少有方法可以提供复杂的特征来表征运动行为的复杂性,并将其与各种变化的环境刺激相关联。我们克服了这一障碍,首次将生态问题应用于有限的冲激响应信号过滤方法,以识别来自不同社会群体的13只自由放养非洲象(Loxodonta africana)运动的人为和自然环境驱动因素超过七年。最小均方误差(MMSE)估计标准允许比较景观和生态模型输入的预测能力。我们表明,结合了植被动态,人类和自然景观特征以及先前运动的过滤器的性能优于简单的过滤器结构,表明动态和静态景观特征以及习惯对大象做出运动决定的重要性。大象对植被生产力指数的反应在时间或空间上并不统一,这表明大象对高生产力地区的觅食策略比简单的引力更为复杂。预测最经常是在人类住区附近的保护区边界外提供不准确的信息,这表明人类活动会破坏典型的大象运动行为。因此,在人与大象的界面上成功的管理策略可能是针对特定上下文且动态的。信号处理为阐明环境因素提供了一种有前途的方法,这些环境因素在较大的时间和空间尺度上驱动动物运动。

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