Spatial variation as a tool for inferring temporal variation and diagnosing types of mechanisms in ecosystems.

Ecological processes, like the rise and fall of populations, leave an imprint of their dynamics as a pattern in space. Mining this spatial record for insight into temporal change underlies many applications, including using spatial snapshots to infer trends in communities, rates of species spread ac...

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Main Authors: Matthew P Hammond, Jurek Kolasa
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2014-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC3930753?pdf=render
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spelling doaj-8c90eaeb07014d84a0b32749063601272020-11-25T01:18:07ZengPublic Library of Science (PLoS)PLoS ONE1932-62032014-01-0192e8924510.1371/journal.pone.0089245Spatial variation as a tool for inferring temporal variation and diagnosing types of mechanisms in ecosystems.Matthew P HammondJurek KolasaEcological processes, like the rise and fall of populations, leave an imprint of their dynamics as a pattern in space. Mining this spatial record for insight into temporal change underlies many applications, including using spatial snapshots to infer trends in communities, rates of species spread across boundaries, likelihood of chaotic dynamics, and proximity to regime shifts. However, these approaches rely on an inherent but undefined link between spatial and temporal variation. We present a quantitative link between a variable's spatial and temporal variation based on established variance-partitioning techniques, and test it for predictive and diagnostic applications. A strong link existed between spatial and regional temporal variation (estimated as Coefficients of Variation or CV's) in 136 variables from three aquatic ecosystems. This association suggests a basis for substituting one for the other, either quantitatively or qualitatively, when long time series are lacking. We further show that weak substitution of temporal for spatial CV results from distortion by specific spatiotemporal patterns (e.g., inter-patch synchrony). Where spatial and temporal CV's do not match, we pinpoint the spatiotemporal causes of deviation in the dynamics of variables and suggest ways that may control for them. In turn, we demonstrate the use of this framework for describing spatiotemporal patterns in multiple ecosystem variables and attributing them to types of mechanisms. Linking spatial and temporal variability makes quantitative the hitherto inexact practice of space-for-time substitution and may thus point to new opportunities for navigating the complex variation of ecosystems.http://europepmc.org/articles/PMC3930753?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Matthew P Hammond
Jurek Kolasa
spellingShingle Matthew P Hammond
Jurek Kolasa
Spatial variation as a tool for inferring temporal variation and diagnosing types of mechanisms in ecosystems.
PLoS ONE
author_facet Matthew P Hammond
Jurek Kolasa
author_sort Matthew P Hammond
title Spatial variation as a tool for inferring temporal variation and diagnosing types of mechanisms in ecosystems.
title_short Spatial variation as a tool for inferring temporal variation and diagnosing types of mechanisms in ecosystems.
title_full Spatial variation as a tool for inferring temporal variation and diagnosing types of mechanisms in ecosystems.
title_fullStr Spatial variation as a tool for inferring temporal variation and diagnosing types of mechanisms in ecosystems.
title_full_unstemmed Spatial variation as a tool for inferring temporal variation and diagnosing types of mechanisms in ecosystems.
title_sort spatial variation as a tool for inferring temporal variation and diagnosing types of mechanisms in ecosystems.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2014-01-01
description Ecological processes, like the rise and fall of populations, leave an imprint of their dynamics as a pattern in space. Mining this spatial record for insight into temporal change underlies many applications, including using spatial snapshots to infer trends in communities, rates of species spread across boundaries, likelihood of chaotic dynamics, and proximity to regime shifts. However, these approaches rely on an inherent but undefined link between spatial and temporal variation. We present a quantitative link between a variable's spatial and temporal variation based on established variance-partitioning techniques, and test it for predictive and diagnostic applications. A strong link existed between spatial and regional temporal variation (estimated as Coefficients of Variation or CV's) in 136 variables from three aquatic ecosystems. This association suggests a basis for substituting one for the other, either quantitatively or qualitatively, when long time series are lacking. We further show that weak substitution of temporal for spatial CV results from distortion by specific spatiotemporal patterns (e.g., inter-patch synchrony). Where spatial and temporal CV's do not match, we pinpoint the spatiotemporal causes of deviation in the dynamics of variables and suggest ways that may control for them. In turn, we demonstrate the use of this framework for describing spatiotemporal patterns in multiple ecosystem variables and attributing them to types of mechanisms. Linking spatial and temporal variability makes quantitative the hitherto inexact practice of space-for-time substitution and may thus point to new opportunities for navigating the complex variation of ecosystems.
url http://europepmc.org/articles/PMC3930753?pdf=render
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