Optimizing maritime operations, particularly fuel consumption for vessels, is crucial, considering its significant share in global trade. As fuel consumption is closely related to the shaft power of a vessel, predicting shaft power accurately is a crucial problem that requires careful consideration to minimize costs and emissions. Traditional approaches, which incorporate empirical formulas, often struggle to model dynamic conditions, such as sea conditions or fouling on vessels. In this paper, we present a hybrid, physics-guided neural network-based approach that utilizes empirical formulas within the network to combine the advantages of both neural networks and traditional techniques. We evaluate the presented method using data obtained from four similar-sized cargo vessels and compare the results with those of a baseline neural network and a traditional approach that employs empirical formulas. The experimental results demonstrate that the physics-guided neural network approach achieves lower mean absolute error, root mean square error, and mean absolute percentage error for all tested vessels compared to both the empirical formula-based method and the base neural network.
翻译:优化海上作业,特别是船舶的燃料消耗至关重要,考虑到其在全球贸易中的显著份额。由于燃料消耗与船舶的轴功率密切相关,准确预测轴功率是一个关键问题,需要仔细考量以最小化成本和排放。传统方法通常结合经验公式,但在模拟动态条件(如海况或船舶污底)时往往存在困难。本文提出了一种混合的、基于物理引导神经网络的方法,该方法在网络内部利用经验公式,以结合神经网络和传统技术的优势。我们使用从四艘相似尺寸的货船获取的数据对所提方法进行评估,并将结果与基准神经网络以及采用经验公式的传统方法进行比较。实验结果表明,与基于经验公式的方法和基础神经网络相比,物理引导神经网络方法在所有测试船舶上均实现了更低的平均绝对误差、均方根误差和平均绝对百分比误差。