2013
DOI: 10.1029/2012gl054519
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Mesoscale flow variability and its impact on connectivity for the island of Hawai`i

Abstract: [1] Understanding population connectivity is a contemporary challenge in marine ecology. Connectivity results from a combination of biological traits and physical mechanisms, at different life stages. We focus on the transport of particles around an oceanic island, simulating transport at early life stages of marine organisms. We aim to investigate through case studies how mesoscale features influence particle transport, recruitment, and connectivity. We determine particle dispersion by using an individual-bas… Show more

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Cited by 23 publications
(43 citation statements)
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“…Together, these comparisons provide confidence the model accurately captures the fine-scale processes that occur at the spatial scales being modeled and thus made it possible to conduct inter-model run comparisons to evaluate the influence of the differences in forcing on the resulting dispersal patterns. These promising finescale (order∼km) model-data comparisons, which have never been conducted in such a complex environment, contrast with numerous modeling efforts focused on larval dispersal patterns where no such model-data comparisons were made (Oliver et al, 1992;Treml et al, 2008;Vaz et al, 2013;Thomas et al, 2014;Kool and Nichol, 2015) and thus model accuracy and the resulting projections and findings are unknown.…”
Section: Model Calibration and Validationmentioning
confidence: 98%
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“…Together, these comparisons provide confidence the model accurately captures the fine-scale processes that occur at the spatial scales being modeled and thus made it possible to conduct inter-model run comparisons to evaluate the influence of the differences in forcing on the resulting dispersal patterns. These promising finescale (order∼km) model-data comparisons, which have never been conducted in such a complex environment, contrast with numerous modeling efforts focused on larval dispersal patterns where no such model-data comparisons were made (Oliver et al, 1992;Treml et al, 2008;Vaz et al, 2013;Thomas et al, 2014;Kool and Nichol, 2015) and thus model accuracy and the resulting projections and findings are unknown.…”
Section: Model Calibration and Validationmentioning
confidence: 98%
“…If this is the case, the short time scales of dispersal shown here are important because both larval density ( Figure 6) and recruitment success decrease quickly with time and distance (Sammarco and Andrews, 1988) due to mixing and horizontal dispersion (Wolanski et al, 1989;Oliver et al, 1992). It has been demonstrated (Andutta et al, 2012;Tay et al, 2012) that reefs and islands in close proximity often result in decreased flushing and thus more exposure time in areas where settlement can occur successfully; these features are generally not captured with large-scale models (Vaz et al, 2013;Wood et al, 2014). In this case, the flushing between islands appears to be somewhat offset by areas in the lee of the high islands that result in increased retention that was not captured in previous modeling studies (Andutta et al, 2012;Tay et al, 2012) where topographic steering of winds was not a factor.…”
Section: ) and Genetic Methodsmentioning
confidence: 99%
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