Phase-field simulation and machine learning of low-field magneto-elastocaloric effect in a multiferroic composite

  • Wei Tang
  • , Shizheng Wen
  • , Huilong Hou
  • , Qihua Gong
  • , Min Yi
  • , Wanlin Guo

Research output: Contribution to journalArticlepeer-review

9 Scopus citations

Abstract

Achieving appreciable elastocaloric effect under low external field is critical for solid-state cooling technology. Here, a non-isothermal Phase-Field Model (PFM) coupling martensitic transformation with mechanics, heat transfer and magnetostrictive behavior is proposed to simulate Magneto-elastoCaloric Effect (M-eCE) that is induced by magnetic field in a multiferroic composite (e.g., Magnetostrictive-Shape Memory Alloys (MEA-SMA) composite). In the PFM, a nonlinear constitutive hyperbolic tangent model is utilized to model the macroscopic magnetostrictive behavior of MEA, and the heat transfer coupled with phase transformation is employed to calculate the adiabatic temperature change (ΔTad) during M-eC cooling cycles. The influences of magnetic field, geometrical dimension, and ambient temperature on ΔTad are comprehensively investigated. Machine Learning (ML) is further conducted on the database from PFM simulations to accelerate the prediction and design of MEA-SMA composite with an improved ΔTad. It is found that a large ΔTad of 10–14 K and a wide working temperature window of 30 K can be achieved under ultra-low magnetic field of 0.15–0.38 T by optimizing the composite's geometrical dimension. The present work combining PFM and ML for evaluating M-eCE provides a theoretical framework for the optimization of M-eC cooling devices, and is also potentially extended to other multicaloric effects (e.g., electro-elastocaloric effect).

Original languageEnglish
Article number109316
JournalInternational Journal of Mechanical Sciences
Volume275
DOIs
StatePublished - 1 Aug 2024
Externally publishedYes

Keywords

  • Adiabatic temperature change
  • Machine learning
  • Magneto-elastocaloric effect
  • Multiferroic composite
  • Phase-field simulation
  • Shape memory alloy

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