Digital Twin-Based Analysis and Optimization for Design and Planning of Production Lines

  • Donggun Lee
  • , Chong Keun Kim
  • , Jinho Yang
  • , Kang Yeon Cho
  • , Jonghwan Choi
  • , Sang Do Noh
  • , Seunghoon Nam

Research output: Contribution to journalArticlepeer-review

26 Scopus citations

Abstract

With the increasing dynamic nature of customer demand, production, product, and manufacturing design changes have become more frequent. Moreover, inadequate validation during the manufacturing design phase may result in additional issues, such as process redesign and layout reallocation, during the operation phase. Therefore, systems that can pre-validate and allow accurate and reliable analysis in the manufacturing design phase, as well as apply and optimize variations in production lines in real time, are required. Previously, digital twin (DT) has been studied a lot in product design and facility prognostics and management fields. Research on the system framework leading to DT utilization and optimization and analysis through DT in complex manufacturing systems with continuous processes such as production lines is insufficient. In this study, a system based on a DT and simulation results is developed; this system can reflect, analyze, and optimize dynamic changes in the design of processes and production lines in real time. First, the framework and application of the proposed system are designed. Subsequently, optimization methodologies based on heuristics and reinforcement learning (RL) are developed. Finally, the effectiveness and applicability of the proposed system are verified by implementing an actual DT application at a real manufacturing site.

Original languageEnglish
Article number1147
JournalMachines
Volume10
Issue number12
DOIs
StatePublished - Dec 2022

Keywords

  • design analysis and optimization
  • digital twin
  • digital twin application
  • reinforcement learning

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