2,083 research outputs found
Dietary Preference of the Queensnake (Regina septemvittata)
The Queensnake (Regina septemvittata) is a small secretive water snake found throughout the eastern United States. Once common, their numbers have declined to the extent that they are now threatened throughout most of their range, largely the result of pollutant-based reduction in prey species. These snakes are assumed to eat molted crayfish exclusively. For some common crayfish species, molting happens only twice a summer during a two- week period. It has not been documented if Queensnakes eat anything besides crayfish on a regular basis. The purpose of this study was to determine the prey preference of Queensnakes with particular focus on crayfish species. Because Queensnakes are considered to be dietary specialists, they are at great risk of becoming extirpated should their food source diminish and are therefore effective bio-indicators for the streams where they live. Data collected from this study will better enable biologists to determine what habitats and prey items are required to conserve this species
Convergence Analysis of Fixed Point Chance Constrained Optimal Power Flow Problems
For optimal power flow problems with chance constraints, a particularly
effective method is based on a fixed point iteration applied to a sequence of
deterministic power flow problems. However, a priori, the convergence of such
an approach is not necessarily guaranteed. This article analyses the
convergence conditions for this fixed point approach, and reports numerical
experiments including for large IEEE networks
An Trust-Region Quasi-Newton Method
For quasi-Newton methods in unconstrained minimization, it is valuable to
develop methods that are robust, i.e., methods that converge on a large number
of problems. Trust-region algorithms are often regarded to be more robust than
line-search methods, however, because trust-region methods are computationally
more expensive, the most popular quasi-Newton implementations use line-search
methods. To fill this gap, we develop a trust-region method that updates an
factorization, scales quadratically with the size of the problem, and
is competitive with a conventional line-search method
PLSS: A Projected Linear Systems Solver
We propose iterative projection methods for solving square or rectangular
consistent linear systems . Projection methods use sketching matrices
(possibly randomized) to generate a sequence of small projected subproblems,
but even the smaller systems can be costly. We develop a process that appends
one column each iteration to the sketching matrix and that converges in a
finite number of iterations independent of whether the sketch is random or
deterministic. In general, our process generates orthogonal updates to the
approximate solution . By choosing the sketch to be the set of all
previous residuals, we obtain a simple recursive update and convergence in at
most rank() iterations (in exact arithmetic). By choosing a sequence of
identity columns for the sketch, we develop a generalization of the Kaczmarz
method. In experiments on large sparse systems, our method (PLSS) with residual
sketches is competitive with LSQR, and our method with residual and identity
sketches compares favorably to state-of-the-art randomized methods
Anisotropic Assembly of Colloidal Nanoparticles: Exploiting Substrate Crystallinity
We show that the crystal structure of a substrate can be exploited to drive the anisotropic assembly of colloidal nanoparticles. Pentanethiol-passivated Au particles of approximately 2 nm diameter deposited from toluene onto hydrogen-passivated Si(111) surfaces form linear assemblies (rods) with a narrow width distribution. The rod orientations mirror the substrate symmetry, with a high degree of alignment along principal crystallographic axes of the Si(111) surface. There is a strong preference for
anisotropic growth with rod widths substantially more tightly distributed than lengths. Entropic trapping of nanoparticles provides a plausible explanation for the formation of the anisotropic assemblies we observe
Shape-Changing Trust-Region Methods Using Multipoint Symmetric Secant Matrices
In this work, we consider methods for large-scale and nonconvex unconstrained
optimization. We propose a new trust-region method whose subproblem is defined
using a so-called "shape-changing" norm together with densely-initialized
multipoint symmetric secant (MSS) matrices to approximate the Hessian.
Shape-changing norms and dense initializations have been successfully used in
the context of traditional quasi-Newton methods, but have yet to be explored in
the case of MSS methods. Numerical results suggest that trust-region methods
that use densely-initialized MSS matrices together with shape-changing norms
outperform MSS with other trust-region methods
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