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Basic study on development of drinking water treatment process simulators

정수처리공정 시뮬레이터 개발 기초연구

  • Byun, Yong-Hoon (Technological Development Department, Dohwa Engineering) ;
  • Shin, Hwi-Su (Technological Development Department, Dohwa Engineering) ;
  • Kim, Ho-Yong (Technological Development Department, Dohwa Engineering) ;
  • Jung, Nahm-Chung (Technological Development Department, Dohwa Engineering)
  • 변용훈 (도화엔지니어링 기술개발연구원) ;
  • 신휘수 (도화엔지니어링 기술개발연구원) ;
  • 김호용 (도화엔지니어링 기술개발연구원) ;
  • 정남정 (도화엔지니어링 기술개발연구원)
  • Received : 2021.08.09
  • Accepted : 2021.10.08
  • Published : 2021.10.15

Abstract

Water treatment process simulator is the tool for predicting sequential changes of water quality in a train of unit processes. This predicts the changes through governing equations that represent physicochemical performance of each unit processes with an initial and boundary conditions. Since there is no operational data for the design of a water treatment facility, there is no choice but to predict the performance of the facility by assuming initial and boundary conditions in virtual reality. Therefore, a simulator that can be applied in the design stage of a water treatment facility has no choice but to be built as a numerical analysis model of a deductive technique. In this study, we had conducted basic research on governing equations, inter-process data-flow, and simulator algorithms for the development of simulators. Lastly, this study will contribute to design engineering tool development research in the future by establishing the water treatment theory so that it can be programmed in a virtual world and suggesting a method for digital transformation of the water treatment process.

Keywords

Acknowledgement

본 연구는 산업통상자원부 World Class 300 Project(R&D) (P0012997, 기반시설 설계엔지니어링 플랫폼 구축 및 응용프로그램 개발 연구)의 지원을 받았습니다.

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