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An Experimental Study on the Estimation Flow-rate of Venturi Pump Using LightGBM

LightGBM을 이용한 수력 펌프 유량 추정의 실험적 연구

  • Jin Beom Jeong (Korea Construction Equipment Technology Institute) ;
  • Jihwan Lee (Korea Construction Equipment Technology Institute) ;
  • Myeongcheol Kang (Korea Construction Equipment Technology Institute)
  • 정진범 ;
  • 이지환 ;
  • 강명철
  • Received : 2023.11.15
  • Accepted : 2023.11.28
  • Published : 2023.12.01

Abstract

In disaster situations, to facilitate rapid drainage, electric underwater pumps are installed manually. This poses a high risk of electric shock accidents due to a short circuit, and a lot of time is required for hose connection and installation of electrical devices. To solve these problems, a Venturi pump using the venturi effect without external power is used. However, Venturi pumps that operate without external power make it difficult to install flow sensors such as electric devices; consequently, it is difficult to check the real-time flow rate. This paper proposes a flow estimation logic to replace the function of the flow sensor for the venturi pump . To develop the flow estimation logic, the flow characteristics of the venturi pump, according to the operating conditions, were checked. After that, the relationship with the flow rate of the venturi pump was defined using a pressure sensor corresponding to a low-cost sensor. Finally, an analysis of the estimation error was performed using the developed flow estimation logic.

Keywords

Acknowledgement

이 논문은 행정안전부 자연재난 정책연계형 기술개발사업의 지원을 받아 수행된 연구임. (RS-2022-ND629013)

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