116 research outputs found
Spectral decomposition and matrix-valued orthogonal polynomials
The relation between the spectral decomposition of a self-adjoint operator
which is realizable as a higher order recurrence operator and matrix-valued
orthogonal polynomials is investigated. A general construction of such
operators from scalar-valued orthogonal polynomials is presented. Two examples
of matrix-valued orthogonal polynomials with explicit orthogonality relations
and three-term recurrence relation are presented, which both can be considered
as -matrix-valued analogues of subfamilies of Askey-Wilson
polynomials.Comment: 15 page
Wilson function transforms related to Racah coefficients
The irreducible -representations of the Lie algebra consist of
discrete series representations, principal unitary series and complementary
series. We calculate Racah coefficients for tensor product representations that
consist of at least two discrete series representations. We use the explicit
expressions for the Clebsch-Gordan coefficients as hypergeometric functions to
find explicit expressions for the Racah coefficients. The Racah coefficients
are Wilson polynomials and Wilson functions. This leads to natural
interpretations of the Wilson function transforms. As an application several
sum and integral identities are obtained involving Wilson polynomials and
Wilson functions. We also compute Racah coefficients for U_q(\su(1,1)), which
turn out to be Askey-Wilson functions and Askey-Wilson polynomials.Comment: 48 page
LU factorizations, q=0 limits, and p-adic interpretations of some q-hypergeometric orthogonal polynomials
For little q-Jacobi polynomials and q-Hahn polynomials we give particular
q-hypergeometric series representations in which the termwise q=0 limit can be
taken. When rewritten in matrix form, these series representations can be
viewed as LU factorizations. We develop a general theory of LU factorizations
related to complete systems of orthogonal polynomials with discrete
orthogonality relations which admit a dual system of orthogonal polynomials.
For the q=0 orthogonal limit functions we discuss interpretations on p-adic
spaces. In the little 0-Jacobi case we also discuss product formulas.Comment: changed title, references updated, minor changes matching the version
to appear in Ramanujan J.; 22 p
Sensor data classification for the indication of lameness in sheep
Lameness is a vital welfare issue in most sheep farming countries, including the UK. The pre-detection at the farm level could prevent the disease from becoming chronic. The development of wearable sensor technologies enables the idea of remotely monitoring the changes in animal movements which relate to lameness. In this study, 3D-acceleration, 3D-orientation, and 3D-linear acceleration sensor data were recorded at ten samples per second via the sensor attached to sheep neck collar. This research aimed to determine the best accuracy among various supervised machine learning techniques which can predict the early signs of lameness while the sheep are walking on a flat field. The most influencing predictors for lameness indication were also addressed here. The experimental results revealed that the Decision Tree classifier has the highest accuracy of 75.46%, and the orientation sensor data (angles) around the neck are the strongest predictors to differentiate among severely lame, mildly lame and sound classes of sheep
Decomposition algorithms for submodular optimization with applications to parallel machine scheduling with controllable processing times
In this paper we present a decomposition algorithm for maximizing a linear function over a submodular polyhedron intersected with a box. Apart from this contribution to submodular optimization, our results extend the toolkit available in deterministic machine scheduling with controllable processing times. We demonstrate how this method can be applied to developing fast algorithms for minimizing total compression cost for preemptive schedules on parallel machines with respect to given release dates and a common deadline. Obtained scheduling algorithms are faster and easier to justify than those previously known in the scheduling literature
Simulated preferential water flow and solute transport in shrinking soils
We present follow-up work to previous work extending the classical rigid (RGD)
approach formerly proposed by Gerke and van Genuchten, to account for
shrinking effects (SHR) in modeling water flow and solute transport in dualpermeability
porous media. In this study we considered three SHR scenarios,
assuming that aggregate shrinkage may change either: (i) the hydraulic
properties of the two pore domains, (ii) their relative fractions, or (iii) both
hydraulic properties and fractions of the two domains. The objective was to
compare simulation results obtained under the RGD and the SHR assumptions
to illustrate the impact of matrix volume changes on water storage, water
fluxes, and solute concentrations during an infiltration process bringing an
initially dry soil to saturation and a drainage process starting from an initially
saturated soil. For an infiltration process, the simulated wetting front and the
solute concentration propagation velocity, as well as the water fluxes and
water and solute exchange rates, for the three SHR scenarios significantly
deviated from the RGD. By contrast, relatively similar water content profiles
evolved under all scenarios during drying. Overall, compared to the RGD
approach, the effect of changing the hydraulic properties and the weight
of the two domains according to the shrinkage behavior of the soil aggregates
induced a much more rapid response in terms of water fluxes and solute
travel times, as well as a larger and deeper water and solute transfer from the
fractures to the matrix during wetting processes
Sensor data classification for the indication of lameness in sheep
Lameness is a vital welfare issue in most sheep farming countries, including the UK. The pre-detection at the farm level could prevent the disease from becoming chronic. The development of wearable sensor technologies enables the idea of remotely monitoring the changes in animal movements which relate to lameness. In this study, 3D-acceleration, 3D-orientation, and 3D-linear acceleration sensor data were recorded at ten samples per second via the sensor attached to sheep neck collar. This research aimed to determine the best accuracy among various supervised machine learning techniques which can predict the early signs of lameness while the sheep are walking on a flat field. The most influencing predictors for lameness indication were also addressed here. The experimental results revealed that the Decision Tree classifier has the highest accuracy of 75.46%, and the orientation sensor data (angles) around the neck are the strongest predictors to differentiate among severely lame, mildly lame and sound classes of sheep
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