• 대한전기학회
Mobile QR Code QR CODE : The Transactions of the Korean Institute of Electrical Engineers
  • COPE
  • kcse
  • 한국과학기술단체총연합회
  • 한국학술지인용색인
  • Scopus
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  • orcid
Title Short-Term Power Load Forecasting of a Large Vessel using Deep Stacking Network Architecture
Authors 홍창우(Chang Woo Hong) ; 고민승(Min-Seung Ko) ; 김홍렬(Hong-Ryeol Kim) ; 김소연(Soyeon Kim) ; 허견(Kyeon Hur)
DOI https://doi.org/10.5370/KIEE.2020.69.4.534
Page pp.534-541
ISSN 1975-8359
Keywords CNN; Deep Stacking Network Architecture; LSTM; Short-Term Power Load Forecasting; Vessel
Abstract The power load prediction in vessel is an important factor in determining the capacity and number of generators, and in particular the consumption of fuel oil which determines the number of days that can be sailed. In addition, short-term load forecasting is important for the capacity and scheduling of the ESS that will be applied in the future vessel. In this paper, we present a deep stack neural network for short-term load prediction in large vessels. The network is constructed using Convolutional Neural Network (CNN), Bidirectional Long-Short Term Memory (Bi-LSTM), and Long-Short Term Memory (LSTM). CNN is used for spatial feature extraction and Bi-LSTM is used to utilize information at both pre and post stages. Finally, LSTM is used to extract temporal characteristics. The voyage data of the Mokpo National Maritime University training ship was used for the short-term load prediction, and the predicted results are verified by the Mean Squared Error (MSE) and Mean Absolute Error (MAE).