Bi-directional prediction of structural characteristics and effective thermal conductivities of composite fuels through learning from finite element simulation results

  • Biaojie Yan
  • , Liang Cheng
  • , Bingqing Li
  • , Pengchuang Liu
  • , Xin Wang
  • , Rui Gao
  • , Zhenliang Yang
  • , Songhua Xu
  • , Xiangdong Ding
  • , Pengcheng Zhang

Research output: Contribution to journalArticlepeer-review

23 Scopus citations

Abstract

Uranium dioxide (UO2) is widely used in nuclear reactors. This fuel has a low thermal conductivity (TC). Increasing its TC can effectively enhance the safety of reactors and fuel efficiencies. A prevalent approach to increasing the TC of UO2 is to inject a second phase material with a high TC into a UO2 matrix. Due to operational difficulties in the fabrication, deployment, and testing of such composite fuels, measurement data regarding effective thermal conductivity (ETC) of these composite fuels are rarely available, which hinders the development of these composites. To overcome such a barrier, finite element method is utilized to generate massive simulated measurements over the concerned composites. Subsequently, a novel algorithmic method is developed that automatically learns from gathered simulation results to accurately and reliably: 1) predict the ETC of a composite fuel according to its given structural characteristics, and 2) reversely infer the structural characteristics of a composite fuel from its expected ETC. The relative error of forward prediction and inverse design is <5% by the new algorithm. The new computational solution provides a novel and effective approach to developing new composite fuels with significant design acceleration and cost reduction.

Original languageEnglish
Article number108483
JournalMaterials and Design
Volume189
DOIs
StatePublished - Apr 2020

Keywords

  • Composite fuel
  • Effective thermal conductivity
  • Finite element method
  • Inverse design
  • Neural network

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