49,006 research outputs found

    Investigating the sterile neutrino parameters with QLC in 3 + 1 scenario

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    In the scenario with four generation quarks and leptons and using a 3 + 1 neutrino model having one sterile and the three standard active neutrinos with a 4×44 \times 4 unitary transformation matrix, UPMNS4U_{PMNS_{4}}, we perform a model-based analysis using the latest global data and determine bounds on the sterile neutrino parameters i.e. the neutrino mixing angles. Motivated by our previous results, where, in a quark-lepton complementarity (QLC) model we predicted the values of θ13PMNS=(92+1)\theta_{13}^{PMNS}=(9_{-2}^{+1})^{\circ} and θ23PMNS=(40.600.3+0.1)\theta_{23}^{PMNS}=(40.60_{-0.3}^{+0.1})^{\circ}. In the QLC model the non-trivial correlation between CKM4CKM_4 and PMNS4PMNS_4 mixing matrix is given by the correlation matrix Vc4V_{c_{4}}. Monte Carlo simulations are performed to estimate the texture of Vc4V_{c4} followed by the calculation of PMNS4PMNS_4 using the equation, UPMNS4=(UCKM4.ψ4)1.Vc4U_{PMNS_{4}}= (U_{CKM_{4}} . \psi_{4})^{-1}.V_{c_{4}}, where ψ4\psi_{4} is a diagonal phase matrix. The sterile neutrino mixing angles, θ14PMNS\theta_{14}^{PMNS}, θ24PMNS\theta_{24}^{PMNS} and θ34PMNS\theta_{34}^{PMNS} are assumed to be freely varying between (0π/4)(0-\pi/4) and obtained results which are consistent with the data available from various experiments, like Noν\nuA, MINOS, SuperK, Ice Cube-DeepCore. In further investigation, we analytically obtain approximately similar ranges for various neutrino mixing parameters Uμ42\mid{ U_{\mu 4}}\mid ^2 and Uτ42\mid{ U_{\tau 4}}\mid ^2.Comment: 16 pages, 4 tables, 7 figures(with subfigures, total 14 figures

    Clues to the origin of Fermi Bubbles from OVIII/OVII line ratio

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    We constrain the origin of Fermi Bubbles using 2D hydrodynamical simulations of both star formation driven and black hole accretion driven wind models. We compare our results with recent observations of OVIII to OVII line ratio within and near Fermi Bubbles. Our results suggest that independent of the driving mechanisms, a low luminosity (L0.71×1041\mathcal{L} \sim 0.7-1\times 10^{41} erg s1^{-1}) energy injection best reproduces the observed line ratio for which the shock temperature is 3×106\approx 3\times 10^6 K. Assuming the Galactic halo temperature to be 2×1062\times 10^6K, we estimate the shock velocity to be 300\sim 300 km s1^{-1} for a weak shock. The corresponding estimated age of the Fermi bubbles is 1525\sim 15-25 Myr. Such an event can be produced either by a star formation rate of 0.5\sim 0.5 M_\odot yr1^{-1} at the Galactic centre or a very low luminosity jet/accretion wind arising from the central black hole. Our analysis rules out any activity that generates an average mechanical luminosity 1041\gtrsim 10^{41} \ergps as a possible origin of the Fermi Bubbles.Comment: 14 pages, 9 figures, accepted version (MNRAS); includes updates on the electron-proton equilibrium time scale and its implications for high energy jet

    Quark-lepton complementarity model based predictions for θ23PMNS\theta_{23}^{PMNS} with neutrino mass hierarchy

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    After the successful investigation and confirmation of non zero θ13PMNS\theta_{13}^{PMNS} by various experiments, we are standing at a square where we still encounter a number of issues, which are to be settled. In this paper, we have extended our recent work towards a precise prediction of the θ23PMNS\theta_{23}^{PMNS} mixing angle, taking into account the neutrino mass hierarchy. We parameterize the non-trivial correlation between quark (CKM) and lepton (PMNS) mixing matrices in quark-lepton complementarity (QLC) model as Vc=UCKM.ψ.UPMNSV_{c}= U_{CKM}. \psi. U_{PMNS}, where ψ\psi is a diagonal phase matrix. Monte Carlo simulations are used to estimate the texture of VcV_{c} and compare the results with the standard Tri-Bi-Maximal (TBM) and Bi-Maximal(BM) structures of neutrino mixing matrix. We have predicted the value of θ23PMNS\theta_{23}^{PMNS} for normal and inverted neutrino mass hierarchies. The value of θ23PMNS\theta_{23}^{PMNS} obtained for two cases are about 1.3σ1.3\sigma away from each other, implying the better precision can give us a strong hint for the type of neutrino mass hierarchy.Comment: 3 pages, 3 figure

    Bound State Solutions of Klein-Gordon Equation with the Kratzer Potential

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    The relativistic problem of spinless particle subject to a Kratzer potential is analyzed. Bound state solutions for the s-wave are found by separating the Klein-Gordon equation in two parts, unlike the similar works in the literature, which provides one to see explicitly the relativistic contributions, if any, to the solution in the non-relativistic limit.Comment: 6 page

    Dependence of Poisson's Ratio on Porosity in Alumina Ceramics

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    Double-diffusive Convection in Compressible Walters' B' Elastico-viscous Fluid in Hydromagnetics

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    On-site residence time in a driven diffusive system: violation and recovery of mean-field

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    We investigate simple one-dimensional driven diffusive systems with open boundaries. We are interested in the average on-site residence time defined as the time a particle spends on a given site before moving on to the next site. Using mean-field theory, we obtain an analytical expression for the on-site residence times. By comparing the analytic predictions with numerics, we demonstrate that the mean-field significantly underestimates the residence time due to the neglect of time correlations in the local density of particles. The temporal correlations are particularly long-lived near the average shock position, where the density changes abruptly from low to high. By using Domain wall theory (DWT), we obtain highly accurate estimates of the residence time for different boundary conditions. We apply our analytical approach to residence times in a totally asymmetric exclusion process (TASEP), TASEP coupled to Langmuir kinetics (TASEP + LK), and TASEP coupled to mutually interactive LK (TASEP + MILK). The high accuracy of our predictions is verified by comparing these with detailed Monte Carlo simulations
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