燃料效率
修剪
人工神经网络
汽车工程
过程(计算)
推力比油耗
工程类
计算机科学
人工智能
结构工程
操作系统
作者
Kangli Wang,Defu Zhang,Zhenyu Shen,Wei Zhu,H. Ye,Dong Li
标识
DOI:10.1016/j.oceaneng.2023.115520
摘要
An accurate fuel consumption model is essential for optimising ship operations. This study examined the impact of main engine data on the precision of ship fuel consumption models. When compared to models constructed without engine data, models utilising engine data can decrease prediction errors by 18.49%–31.25%. However, since speed and trim optimisation tasks necessitate control variables which are not available before the voyage, they cannot be employed as inputs to the fuel consumption model developed for the optimisation task. The first approach involves a two-stage process, while the second entails incorporating an auxiliary branch into a deep neural network. In the experimental findings of the second strategy, the mean absolute error was 0.001139, signifying a 20.9% reduction in fuel consumption model error compared to not utilising the main engine data. These strategies present novel methods for establishing precise fuel consumption models in ship operation optimisation research.
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