Deep Learning Model to Predict Ice Crystal Growth

Bor Yann Tseng, Chen Wei Conan Guo, Yu Chen Chien, Jyn Ping Wang, Chi Hua Yu

研究成果: Article同行評審

4 引文 斯高帕斯(Scopus)

摘要

The demand for highly specific and complex materials has made the development of controllable manufacturing processes crucial. Among the numerous manufacturing methods, casting is important because it is economical and highly flexible regarding the geometry of manufactured parts. Since solidification is an important stage in the casting process that influences the properties of the final product, the development of a controllable solidification process using modeling methods is necessary to create superior structural properties. However, traditional modeling methods are computationally expensive and require sophisticated mathematical schemes. Therefore, a deep learning model is proposed to predict the morphology of the dendritic crystal growth solidification process, along with a reinforcement learning model to control the solidification process. By training the deep learning model with data generated using the phase field method, the solidification process can be successfully predicted. The crystal growth structures are designed to be altered by adjusting the degree of supercooling in the deep learning model while implementing reinforcement learning to control the dendritic arteries. This research opens new avenues for applying artificial intelligence to the optimization of casting processes, with the potential to utilize it in the processing of advanced materials and to improve the target properties of material design.

原文English
文章編號2207731
期刊Advanced Science
10
發行號21
DOIs
出版狀態Published - 2023 7月 27

All Science Journal Classification (ASJC) codes

  • 醫藥(雜項)
  • 一般化學工程
  • 一般材料科學
  • 生物化學、遺傳與分子生物學(雜項)
  • 一般工程
  • 一般物理與天文學

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