53,604 research outputs found
Temporal and spatial distribution and abundance of flathead sole (Hippoglossoides elassodon) eggs and larvae in the western Gulf of Alaska
Data from ichthyoplankton surveys conducted in 1972 and from
1977 to 1999 (no data were collected in 1980) by the Alaska Fisheries Science Center (NOAA, NMFS) in the western Gulf of Alaska were used to examine the timing of spawning,
geographic distribution and abundance, and the vertical distribution of eggs and larvae of flathead sole
(Hippoglossoides elassodon). In the western Gulf of Alaska, flathead sole spawning began in early April and peaked from early to mid-May on the continental shelf. It progressed
in a southwesterly direction along the Alaska Peninsula where three main areas of flathead sole spawning were
indentified: near the Kenai Peninsula, in Shelikof Strait, and between the Shumagin Islands and Unimak Island. Flathead sole eggs are pelagic, and their depth distribution may be a function of their developmental stage.
Data from MOCNESS tows indicated that eggs sink near time of hatching and the larvae rise to the surface to feed. The geographic distribution of larvae followed a pattern similar to the distribution of eggs, only it shifted about one month later. Larval abundance peaked from early to mid-June in the southern portion of Shelikof Strait. Biological and environmental factors may help to retain flathead
sole larvae on the continental shelf near their juvenile nursery areas
Conformal Parametrisation of Loxodromes by Triples of Circles
We provide a parametrisation of a loxodrome by three specially arranged
cycles. The parametrisation is covariant under fractional linear
transformations of the complex plane and naturally encodes conformal properties
of loxodromes. Selected geometrical examples illustrate the usage of
parametrisation. Our work extends the set of objects in Lie sphere
geometry---circle, lines and points---to the natural maximal
conformally-invariant family, which also includes loxodromes.Comment: 14 pages. 9 PDF in four figures, AMS-LaTe
Frequency-based brain networks: From a multiplex framework to a full multilayer description
We explore how to study dynamical interactions between brain regions using
functional multilayer networks whose layers represent the different frequency
bands at which a brain operates. Specifically, we investigate the consequences
of considering the brain as a multilayer network in which all brain regions can
interact with each other at different frequency bands, instead of as a
multiplex network, in which interactions between different frequency bands are
only allowed within each brain region and not between them. We study the second
smallest eigenvalue of the combinatorial supra-Laplacian matrix of the
multilayer network in detail, and we thereby show that the heterogeneity of
interlayer edges and, especially, the fraction of missing edges crucially
modify the spectral properties of the multilayer network. We illustrate our
results with both synthetic network models and real data sets obtained from
resting state magnetoencephalography. Our work demonstrates an important issue
in the construction of frequency-based multilayer brain networks.Comment: 13 pages, 8 figure
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