Models on the Move: Memory and Temporal Discretization in Animal Movement

Specialization: Applied Mathematics Degree: Doctor of Philosophy Abstract: Movement ecology thrives from a successful synergy of data and models. In a field where experiments are difficult or impossible, linking field data with mathematical and statistical models allows us to test hypotheses and inc...

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Main Author: Schlaegel, Ulrike E
Other Authors: Lewis, Mark (Mathematical and Statistical Sciences), Moorcroft, Paul (Organismic and Evolutionary Biology), Merrill, Evelyn (Biological Sciences), Lele, Subhash (Mathematical and Statistical Sciences), Wiens, Douglas (Mathematical and Statistical Sciences), Kouritzin, Mike (Mathematical and Statistical Sciences)
Format: Thesis
Language:English
Published: University of Alberta. Department of Mathematical and Statistical Sciences. 2015
Subjects:
Online Access:http://hdl.handle.net/10402/era.41705
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spelling fttriple:oai:gotriple.eu:10402/era.41705 2023-05-15T15:51:09+02:00 Models on the Move: Memory and Temporal Discretization in Animal Movement Schlaegel, Ulrike E Lewis, Mark (Mathematical and Statistical Sciences) Moorcroft, Paul (Organismic and Evolutionary Biology) Merrill, Evelyn (Biological Sciences) Lele, Subhash (Mathematical and Statistical Sciences) Wiens, Douglas (Mathematical and Statistical Sciences) Kouritzin, Mike (Mathematical and Statistical Sciences) 2015-08-12 http://hdl.handle.net/10402/era.41705 en eng University of Alberta. Department of Mathematical and Statistical Sciences. 10402/era.41705 http://hdl.handle.net/10402/era.41705 other ERA : Education and Research Archive phil envir Thesis https://vocabularies.coar-repositories.org/resource_types/c_46ec/ 2015 fttriple 2023-01-22T18:34:10Z Specialization: Applied Mathematics Degree: Doctor of Philosophy Abstract: Movement ecology thrives from a successful synergy of data and models. In a field where experiments are difficult or impossible, linking field data with mathematical and statistical models allows us to test hypotheses and increase our quantitative understanding of movement processes. Owing to technological progress, data availability and quality are growing rapidly, inspiring new questions and challenging methodology. In my thesis, I address two modelling challenges, one at the forefront of current research on memory-based movement and the other long-standing, yet prevailing, in movement data analysis. Movement serves needs, such as foraging, but also requires time and energy. Therefore, we expect animals to have evolved strategies for efficient movement, likely drawing on cognitive abilities. Indeed, one of the current challenges in movement ecology is to understand the role of cognition, including memory, for movement. To date, very few models that include memory mechanisms have been confronted with data. In my thesis, I present a new cognitive-based model, in which an individual's travel history feeds back to future movement decisions. I focused on the pure spatio-temporal aspect of the travel history, assuming that an individual keeps track of elapsed times since last visits to locations and uses this information during the movement process. I showed that, despite the dynamic interplay of information gain and use, statistical inference can successfully identify this mechanism. I further applied the new modelling framework to wolf (Canis lupus) movement data to test whether wolves adopt a prey management strategy, based on memory, that is directed at reducing impacts of behavioural depression of prey through optimal timing of returns to hunting sites. I found support for the hypothesis but also point out the need to analyze a larger number of individuals to reach stronger conclusions. Data collection methods, as well as standard ... Thesis Canis lupus Unknown
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topic phil
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spellingShingle phil
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Schlaegel, Ulrike E
Models on the Move: Memory and Temporal Discretization in Animal Movement
topic_facet phil
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description Specialization: Applied Mathematics Degree: Doctor of Philosophy Abstract: Movement ecology thrives from a successful synergy of data and models. In a field where experiments are difficult or impossible, linking field data with mathematical and statistical models allows us to test hypotheses and increase our quantitative understanding of movement processes. Owing to technological progress, data availability and quality are growing rapidly, inspiring new questions and challenging methodology. In my thesis, I address two modelling challenges, one at the forefront of current research on memory-based movement and the other long-standing, yet prevailing, in movement data analysis. Movement serves needs, such as foraging, but also requires time and energy. Therefore, we expect animals to have evolved strategies for efficient movement, likely drawing on cognitive abilities. Indeed, one of the current challenges in movement ecology is to understand the role of cognition, including memory, for movement. To date, very few models that include memory mechanisms have been confronted with data. In my thesis, I present a new cognitive-based model, in which an individual's travel history feeds back to future movement decisions. I focused on the pure spatio-temporal aspect of the travel history, assuming that an individual keeps track of elapsed times since last visits to locations and uses this information during the movement process. I showed that, despite the dynamic interplay of information gain and use, statistical inference can successfully identify this mechanism. I further applied the new modelling framework to wolf (Canis lupus) movement data to test whether wolves adopt a prey management strategy, based on memory, that is directed at reducing impacts of behavioural depression of prey through optimal timing of returns to hunting sites. I found support for the hypothesis but also point out the need to analyze a larger number of individuals to reach stronger conclusions. Data collection methods, as well as standard ...
author2 Lewis, Mark (Mathematical and Statistical Sciences)
Moorcroft, Paul (Organismic and Evolutionary Biology)
Merrill, Evelyn (Biological Sciences)
Lele, Subhash (Mathematical and Statistical Sciences)
Wiens, Douglas (Mathematical and Statistical Sciences)
Kouritzin, Mike (Mathematical and Statistical Sciences)
format Thesis
author Schlaegel, Ulrike E
author_facet Schlaegel, Ulrike E
author_sort Schlaegel, Ulrike E
title Models on the Move: Memory and Temporal Discretization in Animal Movement
title_short Models on the Move: Memory and Temporal Discretization in Animal Movement
title_full Models on the Move: Memory and Temporal Discretization in Animal Movement
title_fullStr Models on the Move: Memory and Temporal Discretization in Animal Movement
title_full_unstemmed Models on the Move: Memory and Temporal Discretization in Animal Movement
title_sort models on the move: memory and temporal discretization in animal movement
publisher University of Alberta. Department of Mathematical and Statistical Sciences.
publishDate 2015
url http://hdl.handle.net/10402/era.41705
genre Canis lupus
genre_facet Canis lupus
op_source ERA : Education and Research Archive
op_relation 10402/era.41705
http://hdl.handle.net/10402/era.41705
op_rights other
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