cs.AI updates on arXiv.org 10月10日
船舶燃油消耗预测模型研究
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本文提出一种基于TabPFN的船舶燃油消耗预测模型,通过引入新数据集和标准化基准,验证了在船载数据驱动燃油预测的可行性,并展示了环境条件与时间上下文对预测准确性的影响。

arXiv:2510.08217v1 Announce Type: cross Abstract: In the shipping industry, fuel consumption and emissions are critical factors due to their significant impact on economic efficiency and environmental sustainability. Accurate prediction of ship fuel consumption is essential for further optimization of maritime operations. However, heterogeneous methodologies and limited high-quality datasets hinder direct comparison of modeling approaches. This paper makes three key contributions: (1) we introduce and release a new dataset (https://huggingface.co/datasets/krohnedigital/FuelCast) comprising operational and environmental data from three ships; (2) we define a standardized benchmark covering tabular regression and time-series regression (3) we investigate the application of in-context learning for ship consumption modeling using the TabPFN foundation model - a first in this domain to our knowledge. Our results demonstrate strong performance across all evaluated models, supporting the feasibility of onboard, data-driven fuel prediction. Models incorporating environmental conditions consistently outperform simple polynomial baselines relying solely on vessel speed. TabPFN slightly outperforms other techniques, highlighting the potential of foundation models with in-context learning capabilities for tabular prediction. Furthermore, including temporal context improves accuracy.

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船舶燃油消耗 TabPFN模型 数据驱动预测
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