Abstract

Improving the safety and efficiency of offshore connection of pontoon bridge modules and avoiding connection failures or collision from their relative motion due to waves is currently an important study for landing operations. Thus, this paper proposes an online prediction method for the relative motion of the offshore pontoon bridge module connection based on a long short-term memory (LSTM) deep learning architecture. The developed scheme processes the motion response data from the wave tank to de-noise and segment them, employs the sample data obtained for training and testing, and generates a prediction model operating under various working conditions. Through extensive experiments, we verify that without requiring any information on the module and waves, our method attains a high forecast accuracy and provides a decision basis for the offshore connection of the pontoon bridge modules.

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