Enhancing transfer learning strategies for ship fuel consumption prediction under data scarcity
Artikel i vetenskaplig tidskrift, 2026

Reliable fuel consumption (FC) prediction is crucial for enhancing the energy efficiency of ships and achieving low-carbon shipping. However, the scarcity of individual ship data due to limited operation time or sensor failures remains a major obstacle to developing accurate data-driven models. This study proposes a transfer learning framework to address this challenge, which includes two model structures: bidirectional long short-term memory network (BiLSTM) and random forest (RF). By using the operation data of similar ships with sufficient historical records as the source domain, it supports FC prediction for target ships with limited data. Experimental results show that the performance of both transfer learning models is superior to that of the baseline model and the mixed data model. Compared with the baseline model, the MAE of the TL-BiLSTM and TL-RF models is reduced by 42 % and 36 %, respectively. The paper also innovatively and systematically analyzes the influence mechanism of the freezing strategy and the source-target sample ratio on the transfer performance. The proposed method provides an effective solution for FC prediction in data-scarce situations, can provide practical guidance for ship energy efficiency management.

Random-forest algorithm

Long short-term memory neural network

Freezing strategy

Data scarce

Ship fuel consumption prediction

Transfer learning

Författare

Ailong Fan

Wuhan University of Technology

East Lake Lab

Siyang Sun

Wuhan University of Technology

Zhihui Hu

Jimei University

Nikola Vladimir

Sveučilište u Zagrebu

Wengang Mao

Chalmers, Mekanik och maritima vetenskaper, Marin teknik

Ocean Engineering

0029-8018 (ISSN)

Vol. 351 124398

Ämneskategorier (SSIF 2025)

Marinteknik

Energiteknik

DOI

10.1016/j.oceaneng.2026.124398

Mer information

Senast uppdaterat

2026-02-20