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An Ensemble Multi-Step Forecasting Model for Ship Roll Motion under Different External Conditions: A Case Study on the South China Sea

Social Science Research Network(2022)

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摘要
The external environment is the main factor affecting the stability of ship roll motion. Accurate forecasting of ship roll motion under different external conditions can help assure navigational safety and increase ship operating efficiency. In this study, an ensemble multi-step forecasting model for ship roll motion under different environmental conditions is proposed, which consists of adaptive secondary decomposition (ASD), deep belief network (DBN) under multi-input multi-output (MIMO) strategy, multi-objective optimization, and adaptive error correction (AEC). To evaluate the performance of the proposed ensemble model, five experiments are set up to make the 5-step, 7-step, and 9-step ahead prediction for the ship roll series, respectively. Four different external environment ship roll datasets from the South China Sea in 2020 were employed to validate the robustness of the ensemble multi-step forecasting model. The experimental results demonstrate that the proposed model based on adaptive secondary decomposition, multi-objective optimization, and adaptive error correction can accurately and effectively predict ship roll motion under different external conditions.
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关键词
Ship roll prediction,Adaptive secondary decomposition,Deep belief network,Multi -input multi -output strategy,Multi -objective optimization,Adaptive error correction
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