349 research outputs found
The interplay between immigration and local population dynamics in metapopulations
Stochastic models of closed populations predict eventual extinction with certainty. Consequently, their behavior is often characterized by the quasi-stationary state, i.e. the long-term distribution of population sizes conditional on non-extinction. In contrast, models which allow for immigration exhibit a regular stationary state. At the limit of a low immigration rate, a population is expected to alternate between three states: the quasi- stationary state of a closed population, the extinction state, and the transient phase during which a newly arrived immigrant either establishes a new population or fails to do so. We develop this argument into a simple and intuitive framework that can be used to assess the effect of immigration in a general class of population models. We exemplify the framework for models in which immigrants arrive either singly or in groups, for models with an Allee effect, for models with environmental stochasticity, and for models leading to metapopulation dynamics.Peer reviewe
MitÀ teoria sanoo lajien mahdollisuudesta sÀilyÀ pirstoutuvassa elinympÀristössÀ?
Matemaatikkojen ja fyysikkojen yhteistyö on kautta
tieteen historian ollut niin erottamatonta, ettÀ on usein
jopa vaikeata erottaa nÀitÀ aloja toisistaan. Sen sijaan
matemaatikko ekologiassa on edelleenkin jonkinasteinen
kummajainen, ainakin suuren yleisön silmissÀ. Lintujako
hÀn laskee vai kaloja
What can observational data reveal about metacommunity processes?
A key challenge for community ecology is to understand to what extent observational data can be used to infer the underlying community assembly processes. As different processes can lead to similar or even identical patterns, statistical analyses of non-manipulative observational data never yield undisputable causal inference on the underlying processes. Still, most empirical studies in community ecology are based on observational data, and hence understanding under which circumstances such data can shed light on assembly processes is a central concern for community ecologists. We simulated a spatial agent-based model that generates variation in metacommunity dynamics across multiple axes, including the four classic metacommunity paradigms as special cases. We further simulated a virtual ecologist who analysed snapshot data sampled from the simulations using eighteen output metrics derived from beta-diversity and habitat variation indices, variation partitioning and joint species distribution modelling. Our results indicated two main axes of variation in the output metrics. The first axis of variation described whether the landscape has patchy or continuous variation, and thus was essentially independent of the properties of the species community. The second axis of variation related to the level of predictability of the metacommunity. The most predictable communities were niche-based metacommunities inhabiting static landscapes with marked environmental heterogeneity, such as metacommunities following the species sorting paradigm or the mass effects paradigm. The most unpredictable communities were neutral-based metacommunities inhabiting dynamics landscapes with little spatial heterogeneity, such as metacommunities following the neutral or patch sorting paradigms. The output metrics from joint species distribution modelling yielded generally the highest resolution to disentangle among the simulated scenarios. Yet, the different types of statistical approaches utilized in this study carried complementary information, and thus our results suggest that the most comprehensive evaluation of metacommunity structure can be obtained by combining them.Peer reviewe
Tutkimus myyrien population dynamikasta Eurasiassa, esimerkkinÀ MYODES-spp.
International Scientific Symposium:Ecology and evolution: New challenges. Ekaterinburg, Russia, April 1â5, 2019, p. 67-68.The material for the report was compiled during eight years of operation of the international network of cooperation âEurasian Chronicle of Nature - Large Scale Analysis of Changing Ecosystemsâ (âChronicle of the nature of Eurasia: a large-scale analysis of changing ecosystemsâ).The material for the report was compiled during eight years of operation of the international network of cooperation âEurasian Chronicle of Nature - Large Scale Analysis of Changing Ecosystemsâ (âChronicle of the nature of Eurasia: a large-scale analysis of changing ecosystemsâ).Peer reviewe
What can observational data reveal about metacommunity processes?
A key challenge for community ecology is to understand to what extent observational data can be used to infer the underlying community assembly processes. As different processes can lead to similar or even identical patterns, statistical analyses of nonâmanipulative observational data never yield undisputable causal inference on the underlying processes. Still, most empirical studies in community ecology are based on observational data, and hence understanding under which circumstances such data can shed light on assembly processes is a central concern for community ecologists. We simulated a spatial agentâbased model that generates variation in metacommunity dynamics across multiple axes, including the four classic metacommunity paradigms as special cases. We further simulated a virtual ecologist who analysed snapshot data sampled from the simulations using eighteen output metrics derived from betaâdiversity and habitat variation indices, variation partitioning and joint species distribution modelling. Our results indicated two main axes of variation in the output metrics. The first axis of variation described whether the landscape has patchy or continuous variation, and thus was essentially independent of the properties of the species community. The second axis of variation related to the level of predictability of the metacommunity. The most predictable communities were nicheâbased metacommunities inhabiting static landscapes with marked environmental heterogeneity, such as metacommunities following the species sorting paradigm or the mass effects paradigm. The most unpredictable communities were neutralâbased metacommunities inhabiting dynamics landscapes with little spatial heterogeneity, such as metacommunities following the neutral or patch sorting paradigms. The output metrics from joint species distribution modelling yielded generally the highest resolution to disentangle among the simulated scenarios. Yet, the different types of statistical approaches utilized in this study carried complementary information, and thus our results suggest that the most comprehensive evaluation of metacommunity structure can be obtained by combining them
Exploring the dimensions of metapopulation persistence : a comparison of structural and temporal measures
The spatial arrangement of habitat patches in a metapopulation and the dispersal connections among them influence metapopulation persistence. Metapopulation persistence emerges from a dynamic process, namely the serial extinctions and recolonizations of local habitat patches, while measures of persistence are typically based solely on structural properties of the spatial network (e.g., spatial distance between sites). Persistence estimators based on static properties may be unable to capture the dynamic nature of persistence. Understanding the shape of the distribution of extinction times is a central goal in population ecology. Here, we examine the goodness of fit of the power law to patch persistence time distributions using data on a foundational metapopulation system-the Glanville fritillary butterfly in the angstrom land islands. Further, we address the relationship between structural measures of metapopulation persistence (i.e., metapopulation capacity) and our temporal distributional fits to patch persistence times based on a power law. Patch persistence time distributions were well fit by a power law for the majority of semi-independent networks. Power law fits to persistence time distributions were related to metapopulation capacity, linking structural and temporal measures of metapopulation persistence. Several environmental variables and measures of network topology were correlated with both measures of metapopulation persistence, though correlations tended to be stronger for the structural measure of metapopulation persistence (i.e., metapopulation capacity). Together, our findings suggest that persistence time distributions are useful dynamic properties of metapopulations, and provide evidence of a relationship between metapopulation structure and metapopulation dynamics.Peer reviewe
From individual behavior to metapopulation dynamics : unifying the patchy population and classic metapopulation models.
Spatially structured populations in patchy habitats show much variation in migration rate, from patchy populations in which individuals move repeatedly among habitat patches to classic metapopulations with infrequent migration among discrete populations. To establish a common framework for population dynamics in patchy habitats, we describe an individual-based model (IBM) involving a diffusion approximation of correlated random walk of individual movements. As an example, we apply the model to the Glanville fritillary butterfly (Melitaea cinxia) inhabiting a highly fragmented landscape. We derive stochastic patch occupancy model (SPOM) approximations for the IBMs assuming pure demographic stochasticity, uncorrelated environmental stochasticity, or completely correlated environmental stochasticity in local dynamics. Using realistic parameter values for the Glanville fritillary, we show that the SPOMs mimic the behavior of the IBMs well. The SPOMs derived from IBMs have parameters that relate directly to the life history and behavior of individuals, which is an advantage for model interpretation and parameter estimation. The modeling approach that we describe here provides a unified framework for patchy populations with much movements among habitat patches and classic metapopulations with infrequent movements
Bayesian semiparametric long memory models for discretized event data
We introduce a new class of semiparametric latent variable models for long
memory discretized event data. The proposed methodology is motivated by a study
of bird vocalizations in the Amazon rain forest; the timings of vocalizations
exhibit self-similarity and long range dependence ruling out models based on
Poisson processes. The proposed class of FRActional Probit (FRAP) models is
based on thresholding of a latent process consisting of an additive expansion
of a smooth Gaussian process with a fractional Brownian motion. We develop a
Bayesian approach to inference using Markov chain Monte Carlo, and show good
performance in simulation studies. Applying the methods to the Amazon bird
vocalization data, we find substantial evidence for self-similarity and
non-Markovian/Poisson dynamics. To accommodate the bird vocalization data, in
which there are many different species of birds exhibiting their own
vocalization dynamics, a hierarchical expansion of FRAP is provided in
Supplementary Materials
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