TY - JOUR
T1 - Optimization scheduling of ship integrated energy system with organic rankine cycle waste heat recovery based on SCSSA-CNNBiLSTM load forecasting
AU - Luo, Miao
AU - Jin, Puhang
AU - Cai, Ruimou
AU - Qing, Jiazheng
AU - Sun, Jiale
AU - Xie, Gongnan
N1 - Publisher Copyright:
© 2026 Elsevier Ltd. All rights are reserved, including those for text and data mining, AI training, and similar technologies.
PY - 2026/6/1
Y1 - 2026/6/1
N2 - AbstractThis paper proposes a new Ship Integrated Energy System with Organic Rankine Cycle waste heat recovery (SIES-ORC) considering the multi-energy load demand of ships. The multi-energy load forecasting method, Sine-cosine and Cauchy mutation Sparrow Search Algorithm - Convolutional Neural Networks and Bidirectional Long and Short-Term Memory (SCSSA-CNNBiLSTM), is applied to achieve the optimal schedule of the designed SIES-ORC. Based on the predicted multi-energy load data, dynamic operation and optimization scheduling are implemented for a SIES including carbon capture, life-cycle emission accounting of fuels, and carbon trading, and a ship operation optimization strategy are obtained. The results show that the significant advantages are in four types of load forecasting, with mean absolute percentage errors for mechanical, electrical, heat, and cooling energy predictions being 27.71%, 0.23%, 1.11%, and 0.33%, respectively. The initial investment in the system has the highest proportion and the carbon emissions are mainly produced by the Dual Fuel Engine (DFE), the Dual Fuel Generator Sets (DFGS), and the Fuel Cell (FC), with the DFGS accounting for 67.86%, the DFE accounting for 32.14%, and the FC being negligible. This study provides effective technical support for the accurate prediction of complex multi-energy loads in integrated energy systems.
AB - AbstractThis paper proposes a new Ship Integrated Energy System with Organic Rankine Cycle waste heat recovery (SIES-ORC) considering the multi-energy load demand of ships. The multi-energy load forecasting method, Sine-cosine and Cauchy mutation Sparrow Search Algorithm - Convolutional Neural Networks and Bidirectional Long and Short-Term Memory (SCSSA-CNNBiLSTM), is applied to achieve the optimal schedule of the designed SIES-ORC. Based on the predicted multi-energy load data, dynamic operation and optimization scheduling are implemented for a SIES including carbon capture, life-cycle emission accounting of fuels, and carbon trading, and a ship operation optimization strategy are obtained. The results show that the significant advantages are in four types of load forecasting, with mean absolute percentage errors for mechanical, electrical, heat, and cooling energy predictions being 27.71%, 0.23%, 1.11%, and 0.33%, respectively. The initial investment in the system has the highest proportion and the carbon emissions are mainly produced by the Dual Fuel Engine (DFE), the Dual Fuel Generator Sets (DFGS), and the Fuel Cell (FC), with the DFGS accounting for 67.86%, the DFE accounting for 32.14%, and the FC being negligible. This study provides effective technical support for the accurate prediction of complex multi-energy loads in integrated energy systems.
KW - Convolutional neural networks and bidirectional long and short-term memory
KW - Optimization scheduling
KW - Organic rankine cycle
KW - Ship integrated energy system
KW - Waste heat recovery
UR - https://www.scopus.com/pages/publications/105034746033
U2 - 10.1016/j.energy.2026.140889
DO - 10.1016/j.energy.2026.140889
M3 - 文章
AN - SCOPUS:105034746033
SN - 0360-5442
VL - 352
JO - Energy
JF - Energy
M1 - 140889
ER -