1,587 research outputs found
A reinforced learning approach to optimal design under model uncertainty
Optimal designs are usually model-dependent and likely to be sub-optimal if
the postulated model is not correctly specified. In practice, it is common that
a researcher has a list of candidate models at hand and a design has to be
found that is efficient for selecting the true model among the competing
candidates and is also efficient (optimal, if possible) for estimating the
parameters of the true model. In this article, we use a reinforced learning
approach to address this problem. We develop a sequential algorithm, which
generates a sequence of designs which have asymptotically, as the number of
stages increases, the same efficiency for estimating the parameters in the true
model as an optimal design if the true model would have correctly been
specified in advance. A lower bound is established to quantify the relative
efficiency between such a design and an optimal design for the true model in
finite stages. Moreover, the resulting designs are also efficient for
discriminating between the true model and other rival models from the candidate
list. Some connections with other state-of-the-art algorithms for model
discrimination and parameter estimation are discussed and the methodology is
illustrated by a small simulation study
Entropic uncertainty relations for Markovian and non-Markovian processes under a structured bosonic reservoir
The uncertainty relation is a fundamental limit in quantum mechanics and is
of great importance to quantum information processing as it relates to quantum
precision measurement. Due to interactions with the surrounding environment, a
quantum system will unavoidably suffer from decoherence. Here, we investigate
the dynamic behaviors of the entropic uncertainty relation of an atom-cavity
interacting system under a bosonic reservoir during the crossover between
Markovian and non-Markovian regimes. Specifically, we explore the dynamic
behavior of the entropic uncertainty relation for a pair of incompatible
observables under the reservoir-induced atomic decay effect both with and
without quantum memory. We find that the uncertainty dramatically depends on
both the atom-cavity and the cavity-reservoir interactions, as well as the
correlation time, , of the structured reservoir. Furthermore, we verify
that the uncertainty is anti-correlated with the purity of the state of the
observed qubit-system. We also propose a remarkably simple and efficient way to
reduce the uncertainty by utilizing quantum weak measurement reversal.
Therefore our work offers a new insight into the uncertainty dynamics for
multi-component measurements within an open system, and is thus important for
quantum precision measurements.Comment: 17 pages, 9 figures, to appear in Scientific Report
Accurate Solutions to Water Wave Scattering by Vertical Thin Porous Barriers
The water wave scattering by vertical thin porous barriers is accurately solved in this study. Two typical structures of a surface-piercing barrier and a submerged bottom-standing barrier are considered. The solution procedure is based on the multi-term Galerkin method, in which the pressure jump across a porous barrier is expanded in a set of basis functions involving the Chebychev polynomials. Then, the square-root singularity of fluid velocity at the edge of the porous barrier is correctly modeled. The present solutions have the merits of very rapid convergence. Accurate results for both the reflection and the transmission coefficients and wave forces are presented. This study not only gives a promising procedure to tackle wave interaction with vertical thin porous barriers but also provides a reliable benchmark for complicated numerical solutions
Chaotification of Quasi-Zero Stiffness System via Direct Time-delay Feedback Control
This paper presents a chaotification method based on direct time-delay feedback control for a quasi-zero-stiffness isolation system. An analytical function of time-delay feedback control is derived based on differential-geometry control theory. Furthermore, the feasibility and effectiveness of this method was verified by numerical simulations. Numerical simulations show that this method holds the favorable aspects including the advantage of using tiny control gain, the capability of chaotifying across a large range of parametric domain and the high feasibility of the control implement
Fasciolopsis buski (Digenea: Fasciolidae) from China and India may represent distinct taxa based on mitochondrial and nuclear ribosomal DNA sequences
Sequences of primers used to amplify fragments of Fasciolopsis buski mitochondrial genome. (DOCX 17 kb
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