Time series methods for the analysis of soundscapes and other cyclical ecological data

Author:

Yoh Natalie123ORCID,Haley Charlotte L.4,Burivalova Zuzana23ORCID

Affiliation:

1. Durrell Institute of Conservation and Ecology University of Kent Canterbury UK

2. The Nelson Institute for Environmental Studies University of Wisconsin‐Madison Madison Wisconsin USA

3. Department of Forest and Wildlife Ecology University of Wisconsin‐Madison Madison Wisconsin USA

4. Argonne National Laboratory, Division of Mathematics and Computer Science Lemont Illinois USA

Abstract

Abstract Biodiversity monitoring has entered an era of ‘big data’, exemplified by a near‐continuous collection of sounds, images, chemical and other signals from organisms in diverse ecosystems. Such data streams have the potential to help identify new threats, assess the effectiveness of conservation interventions, as well as generate new ecological insights. However, appropriate analytical methods are often still missing, particularly with respect to characterizing cyclical temporal patterns. Here, we present a framework for characterizing and analysing ecological responses that represent nonstationary, complex temporal patterns and demonstrate the value of using Fourier transforms to decorrelate continuous data points. In our example, we use a framework based on three approaches (spectral analysis, magnitude squared coherence, and principal component analysis) to characterize differences in tropical forest soundscapes within and across sites and seasons in Gabon. By reconstructing the underlying, cyclic behaviour of the soundscape for each site, we show how one can identify circadian patterns in acoustic activity. Soundscapes in the dry season had a complex diel cycle, requiring multiple harmonics to represent daily variation, while in the wet season there was less variance attributable to the daily cyclic patterns. Our framework can be applied to most continuous, or near‐continuous ecological data collected at a fine temporal resolution, allowing ecologists to explore patterns of temporal autocorrelation at multiple levels for biologically meaningful trends. Such methods will become indispensable as biological big data are used to understand the impact of anthropogenic pressures on biodiversity and to inform efforts to mitigate them.

Funder

Argonne National Laboratory

Prince Albert II of Monaco Foundation

Publisher

Wiley

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