Deep learning neural networks to decide whether to operate the 174K Liquefied Natural Gas Carrier's Gas Combustion Unit

  • Sungrok Kim (Hyundai LNG Shipping/Graduate student of Korea Maritime and Ocean University) ;
  • Qianfeng Lin (Department of Computer Engineering, Korea Maritime and Ocean University) ;
  • Jooyoung Son (Division of Marine IT Engineering, Korea Maritime and Ocean University)
  • Published : 2022.11.10

Abstract

Gas Combustion Unit (GCU) onboard liquefied natural gas carriers handles boil-off to stabilize tank pressure. There are many factors for LNG cargo operators to take into consideration to determine whether to use GCU or not. Gas consumption of main engine and re-liquefied gas through the Partial Re-Liquefaction System (PRS) are good examples of these factors. Human gas operators have decided the operation so far. In this paper, some deep learning neural network models were developed to provide human gas operators with a decision support system. The models consider various factors specially into GCU operation. A deep learning model with Sigmoid activation functions in input layer and hidden layers made the best performance among eight different deep learning models.

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