利用变压器预测渔船目的港

IF 3.9 Q2 TRANSPORTATION
Andreas Berntsen Løvland, Helge Fredriksen, John Markus Bjørndalen
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引用次数: 0

摘要

关于历史船舶交通的庞大数据库目前以AIS(自动识别系统)信息的形式免费提供,最早可追溯到2002年。这为训练用于预测船舶各种行为的深度学习模型提供了丰富的资源,在这种情况下,这些模型是由渔业资源管理驱动的。在本文中,我们探索了将变压器模型强大的长期路径预测能力与附加逻辑相结合的可能性,以推断渔船可能的目的地港口。还根据历史上船舶的首选港口开发了一个额外的基线模型进行比较。使用来自挪威Troms和Finnmark地区的AIS数据,发现训练模型的预测精度高度依赖于船只过去跟踪位置的数量。我们预计,在训练和推理过程中,一个新的、更精确的模型不仅需要包含动态AIS数据,还需要包含有关港口和船舶类型的静态信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting the destination port of fishing vessels utilizing transformers
Vast databases on historical ship traffic are currently freely available in the form of AIS (Automatic Identification System) messages dating back to as early as 2002. This provides a rich source for training deep learning models for predicting various behaviors of vessels, which in this context is motivated by resource management of fisheries. In this paper, we explore the possibility for combining a transformer model’s powerful capabilities for long-term path prediction with added logic to infer probable destination harbors for fishing vessels. An additional baseline model is also developed for comparison, based on historically preferred harbors for the vessels. With AIS data from the Troms and Finnmark region of Norway, the prediction accuracy of the trained model is found to be highly dependent on the number of past tracked positions of the vessel. We foresee that a new and more precise model will need to incorporate not only dynamic AIS data, but static information about harbors and vessel types during training and inference.
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CiteScore
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