Development of Artificial Intelligence-based Climate Control System for Smart Greenhouse

정대현 2020년
논문상세정보
' Development of Artificial Intelligence-based Climate Control System for Smart Greenhouse' 의 주제별 논문영향력
논문영향력 선정 방법
논문영향력 요약
주제
  • 화학공학과 관련공학
  • Climate control
  • Climate predictive model
  • Intelligence control
  • Smart farm
  • model predictive control
동일주제 총논문수 논문피인용 총횟수 주제별 논문영향력의 평균
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' Development of Artificial Intelligence-based Climate Control System for Smart Greenhouse' 의 참고문헌

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