Abstract

Identifying and understanding patterns in movement data are amongst the principal aims of movement ecology. By quantifying the similarity of movement trajectories, inferences can be made about diverse processes, ranging from individual specialisation to the ontogeny of foraging strategies. Movement analysis is not unique to ecology however, and methods for estimating the similarity of movement trajectories have been developed in other fields but are currently under-utilised by ecologists. Here, we introduce five commonly used measures of trajectory similarity: dynamic time warping (DTW), longest common subsequence (LCSS), edit distance for real sequences (EDR), Fréchet distance and nearest neighbour distance (NND), of which only NND is routinely used by ecologists. We investigate the performance of each of these measures by simulating movement trajectories using an Ornstein-Uhlenbeck (OU) model in which we varied the following parameters: (1) the point of attraction, (2) the strength of attraction to this point and (3) the noise or volatility added to the movement process in order to determine which measures were most responsive to such changes. In addition, we demonstrate how these measures can be applied using movement trajectories of breeding northern gannets (Morus bassanus) by performing trajectory clustering on a large ecological dataset. Simulations showed that DTW and Fréchet distance were most responsive to changes in movement parameters and were able to distinguish between all the different parameter combinations we trialled. In contrast, NND was the least sensitive measure trialled. When applied to our gannet dataset, the five similarity measures were highly correlated despite differences in their underlying calculation. Clustering of trajectories within and across individuals allowed us to easily visualise and compare patterns of space use over time across a large dataset. Trajectory clusters reflected the bearing on which birds departed the colony and highlighted the use of well-known bathymetric features. As both the volume of movement data and the need to quantify similarity amongst animal trajectories grow, the measures described here and the bridge they provide to other fields of research will become increasingly useful in ecology.Significance statementAs the use of tracking technology increases, there is a need to develop analytical techniques to process such large volumes of data. One area in which this would be useful is the comparison of individual movement trajectories. In response, a variety of measures of trajectory similarity have been developed within the information sciences. However, such measures are rarely used by ecologists who may be unaware of them. To remedy this, we apply five common measures of trajectory similarity to both simulated data and real ecological dataset comprising of movement trajectories of breeding northern gannets. Dynamic time warping and Fréchet distance performed best on simulated data. Using trajectory similarity measures on our gannet dataset, we identified distinct foraging clusters centred on different bathymetric features, demonstrating one application of such similarity measures. As new technology and analysis techniques proliferate across ecology and the information sciences, closer ties between these fields promise further innovative analysis of movement data.

Highlights

  • In recent years the widespread adoption of radio- and satellitebased telemetry has led to a marked increase in the volume of animal movement data (Kays et al 2015)

  • dynamic time warping (DTW), Fréchet distance and nearest neighbour distance (NND) showed strong correlations even though DTW and NND are based on point matching, whereas Fréchet distance is shape-based

  • Relationships between distance measures were not always linear. This may arise because DTW, Fréchet distance and NND are unbounded, whereas longest common subsequence (LCSS) and edit distance for real sequences (EDR) are bounded between 0 and 1

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Summary

Introduction

In recent years the widespread adoption of radio- and satellitebased telemetry has led to a marked increase in the volume of animal movement data (Kays et al 2015). While such rapid technological development has advanced the study of animal ecology, the amount of data obtained presents a challenge to researchers analogous to big data problems seen in other disciplines (Thums et al 2018). An open problem for ecologists remains how best to quantify similarity in animals space use, both within and amongst individuals and groups, using movement data. The concept of space use similarity has been used to investigate site and route fidelity (Freeman et al 2010; Wakefield et al 2015), habitat specialisation (McIntyre et al 2017) and the ontogeny of foraging behaviour (Votier et al 2017)

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