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2024 Vol.31, Issue 5 Preview Page

Research Article

31 October 2024. pp. 380-388
Abstract
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Information
  • Publisher :The Korean Society of Living Environmental System
  • Publisher(Ko) :한국생활환경학회
  • Journal Title :Journal of The Korean Society of Living Environmental System
  • Journal Title(Ko) :한국생활환경학회
  • Volume : 31
  • No :5
  • Pages :380-388
  • Received Date : 2024-10-17
  • Revised Date : 2024-10-26
  • Accepted Date : 2024-10-28