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(Seminar) Predictions of nuclear masses and half-lives with Bayesian neural network approach

07/10 2019
  • Title (Seminar) Predictions of nuclear masses and half-lives with Bayesian neural network approach
  • Speaker
  • Date
  • Venue
  • Abstract

    CAS Key Laboratory of Theoretical Physics

    Institute of Theoretical Physics

    Chinese Academy of Sciences

    Seminar

    Title

    题目

    Predictions of nuclear masses and half-lives with Bayesian neural network approach

    Speaker

    报告人

    Zhongming Niu (牛中明)

    Affiliation

    所在单位

    Anhui University

    Date

    日期

    15:00, Jul 10 (Wednesday), 2019

    Venue

    地点

    ITP South Building 6420

    Abstract

    摘要

    Bayesian neural network (BNN) approach is employed to improve the predictions of nuclear masses and half-lives. It is found that the noise error in the likelihood function plays an important role in the predictive performance for the BNN approach. By including a distribution for the noise error, theoretical predictions can be improved remarkably. In addition to the proton and mass numbers, we further include two quantities related to nuclear pairing and shell effects into the input layer for nuclear mass predictions, and two quantities related to nuclear pairing and reaction energies into the input layer for nuclear half-life predictions. As a result, the theoretical accuracies are significantly improved for both nuclear masses and nuclear half-lives. This manifests that better predictive performance can be achieved if more physical features are included into the BNN approach.

    Contact Person

    所内联系人

    Shan-Gui Zhou (周善贵)