Results 51 to 60 of about 229,668 (202)

Screening and epitope characterization of Nidogen‐2‐specific nanobodies

open access: yesFEBS Open Bio, EarlyView.
Camel immunization and phage display were employed to generate high‐affinity VHH nanobodies against Nidogen‐2. After library construction, biopanning, ELISA screening, sequencing, and recombinant expression, selected nanobodies were purified and characterized, leading to the preliminary exploration of a nanobody‐based sandwich ELISA for specific ...
Jianchuan Wen   +9 more
wiley   +1 more source

Multiplicative logarithmic corrections to quantum criticality in three-dimensional dimerized antiferromagnets

open access: yes, 2015
We investigate the quantum phase transition in an $S = 1/2$ dimerized Heisenberg antiferromagnet in three spatial dimensions. By performing large-scale quantum Monte Carlo simulations and detailed finite-size scaling analyses, we obtain high-precision ...
Meng, Zi Yang   +3 more
core   +1 more source

Logarithmic Asymptotics for Multidimensional Extremes Under Nonlinear Scalings [PDF]

open access: yesJournal of Applied Probability, 2015
Let W = { W n : n ∈ N} be a sequence of random vectors in R d , d ≥ 1. In this paper we consider the logarithmic asymptotics of the extremes of W , that ...
Kosiński, K.M., Mandjes, M.
openaire   +6 more sources

Approach to equilibrium of diffusion in a logarithmic potential [PDF]

open access: yes, 2011
The late-time distribution function P(x,t) of a particle diffusing in a one-dimensional logarithmic potential is calculated for arbitrary initial conditions.
David Mukamel   +7 more
core   +2 more sources

Entanglement dynamics with string measurement operators

open access: yesSciPost Physics Core, 2023
We explain how to apply a Gaussian-preserving operator to a fermionic Gaussian state. We use this method to study the evolution of the entanglement entropy of an Ising spin chain undergoing a quantum-jump dynamics with string measurement operators.
Giulia Piccitto, Angelo Russomanno, Davide Rossini
doaj   +1 more source

Logarithmic scaling in the near-dissipation range of turbulence

open access: yes, 2005
A logarithmic scaling for structure functions, in the form $S_p \sim [\ln (r/\eta)]^{\zeta_p}$, where $\eta$ is the Kolmogorov dissipation scale and $\zeta_p$ are the scaling exponents, is suggested for the statistical description of the near-dissipation
A S Monin   +12 more
core   +1 more source

Scaling and Benchmarking an Evolutionary Algorithm for Constructing Biophysical Neuronal Models

open access: yesFrontiers in Neuroinformatics, 2022
Single neuron models are fundamental for computational modeling of the brain's neuronal networks, and understanding how ion channel dynamics mediate neural function.
Alexander Ladd   +5 more
doaj   +1 more source

Dynamics around the Site Percolation Threshold on High-Dimensional Hypercubic Lattices

open access: yes, 2018
Recent advances on the glass problem motivate reexamining classical models of percolation. Here, we consider the displacement of an ant in a labyrinth near the percolation threshold on cubic lattices both below and above the upper critical dimension of ...
Biroli, Giulio   +2 more
core   +1 more source

Logarithmic corrections of the avalanche distributions of sandpile models at the upper critical dimension

open access: yes, 1998
We study numerically the dynamical properties of the BTW model on a square lattice for various dimensions. The aim of this investigation is to determine the value of the upper critical dimension where the avalanche distributions are characterized by the ...
A. Chessa   +21 more
core   +1 more source

Fractional Transport of Photons in Deterministic Aperiodic Structures

open access: yesScientific Reports, 2017
The propagation of optical pulses through primary types of deterministic aperiodic structures is numerically studied in time domain using the rigorous transfer matrix method in combination with analytical fractional transport models.
Luca Dal Negro, Sandeep Inampudi
doaj   +1 more source

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