Towards Explainable Deep Learning for Ship Trajectory Prediction in Inland Waterways
Tom Legel, Dirk S\"offker, Roland Sch\"atzle, Kathrin Donandt

TL;DR
This paper proposes an interpretable LSTM-based model for ship trajectory prediction in inland waterways, balancing accuracy with explainability by incorporating ship domain parameters and attention mechanisms.
Contribution
It introduces a novel approach combining attention-based fusion with ship domain parameters to enhance interpretability in maritime trajectory prediction models.
Findings
Prediction error around 40 meters in 5 minutes
Attention weights deviate from expected, affecting interpretability
Model performance is comparable to existing methods
Abstract
Accurate predictions of ship trajectories in crowded environments are essential to ensure safety in inland waterways traffic. Recent advances in deep learning promise increased accuracy even for complex scenarios. While the challenge of ship-to-ship awareness is being addressed with growing success, the explainability of these models is often overlooked, potentially obscuring an inaccurate logic and undermining the confidence in their reliability. This study examines an LSTM-based vessel trajectory prediction model by incorporating trained ship domain parameters that provide insight into the attention-based fusion of the interacting vessels' hidden states. This approach has previously been explored in the field of maritime shipping, yet the variety and complexity of encounters in inland waterways allow for a more profound analysis of the model's interpretability. The prediction…
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Taxonomy
TopicsMaritime Navigation and Safety · Maritime Transport Emissions and Efficiency · Ship Hydrodynamics and Maneuverability
