On Performance of Data Models and ML Routines for Simulations of Casting Processes

Research output: Chapter in Book or Conference ProceedingsConference Proceedings with Oral Presentationpeer-review

Abstract

The performance of data models and their associated machine-learning routines for simulations of multi-physical continuous casting processes are scrutinised in this research work. Data science techniques have a growing impact on optimisation and controlling of manufacturing processes by providing fast and real-time predictive-corrective tools. These techniques employ data analytics, data training/learning, and deterministic/statistical methods to create fast and real-time models to improve manufacturing processes. In this research work, data reduced models and machine learning (ML) routines are developed to predict the influence of various process parameters on direct chill casting processes. These data models represent the essential features of the multi-physical casting processes, while significantly reducing the simulation time and efforts. Hence, the computational fluid dynamics (CFD) simulations are initially used to create a comprehensive database where variations of major process parameters are considered using carefully sampled snapshot matrices. These matrices are employed to capture the most important aspects of the processing parameters including melt temperature, cooling and casting speed. Furthermore, the resulting data models are thoroughly examined for their accuracy and reliability using some selected design of experiments (DOEs).
Original languageEnglish
Title of host publicationPROCEEDINGS of the 2024 International Symposium on Liquid Metal Processing and Casting
Subtitle of host publicationEdited by Abdellah Kharicha, Thibault Quatravaux, Martin Detrois
EditorsAbdellah Kharicha, Thibault Quatravaux, Martin Detrois
Place of PublicationLeoben
Chapter1
Pages277-286
Number of pages10
Volume1
Edition1
Publication statusPublished - 30 Sept 2024
EventLiquid Metal Processes & Casting 2024 - ASIA Hotel & Spa Leoben, Leoben, Austria
Duration: 23 Sept 202425 Sept 2024
https://www.lmpc2024.org/

Conference

ConferenceLiquid Metal Processes & Casting 2024
Abbreviated titleLMPC 2024
Country/TerritoryAustria
CityLeoben
Period23/09/2425/09/24
Internet address

Research Field

  • Numerical Simulation of Lightweight Components and Processes

Keywords

  • data models
  • real-time modelling
  • data training
  • machine learning
  • direct chill casting
  • continuous casting process

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