Short-Term Prediction in Vessel Heave Motion Based on Improved LSTM Model

Autor: Chentong Shao, Xiong Hu, Shaoyang Men, Gang Tang, Weidong Cao, Lei Jinman
Rok vydání: 2021
Předmět:
Zdroj: IEEE Access, Vol 9, Pp 58067-58078 (2021)
ISSN: 2169-3536
DOI: 10.1109/access.2021.3072420
Popis: In order to solve the problem of control performance degradation caused by time delay in wave compensation control system, predicting vessel heave motion can be the input vector of the control system to alleviate time delay problem. The vessel heave motion belongs to the problem of time series, this paper proposes an improved Long Short-Term Memory (LSTM) model with a random deactivation layer (dropout), which can deal with the time series problem very well. In order to obtain the vessel heave motion, this paper establishes a wave model suitable for marine operation, and solves the vessel heave motion through the mathematical model of vessel motion. Finally, the paper predicts the vessel heave motion in a short predicted time series. In the process of obtaining the prediction effect of vessel heave motion, the Back Propagation (BP) neural network and the standard LSTM neural network are used to compare with the improved LSTM neural network. While the predicted time series is 0.1 s at sea state 3, the mean absolute percentage (MAPE) errors of BP neural network in the prediction of vessel heave motion is 1.06×10-2%, the standard LSTM in the prediction of heave motion is 1.43×10-4%, the improved LSTM in the prediction of heave motion is 7.51×10-6%. The improved LSTM improves MAPE by 1.05×10-2% compared with the BP and 1.42×10-4% compared with the standard LSTM. The prediction results show that the improved LSTM has a strong prediction capability with not easily overfitted in vessel heave motion prediction. The results show that the improved LSTM provides a new idea for vessel motion prediction and solves the problem of time delay, which is useful for the study of stability in marine operations.
Databáze: OpenAIRE