Physics-Aware Machine Learning for Seismic and Volcanic Signal Interpretation
arXiv cs.LG / 3/19/2026
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Key Points
- The paper surveys recent ML approaches for seismic and volcanic signal interpretation, highlighting the role of physics-informed biases and traditional signal processing inductive biases.
- It emphasizes the need for models to remain reliable under domain shift, provide uncertainty, and output physically meaningful constraints to support operational decision-making.
- The authors discuss self-supervision and generative modeling as means to reduce labeled data requirements and improve robustness.
- The work examines evaluation protocols for transfer across regions and outlines open challenges in making AI-assisted monitoring robust, interpretable, and maintainable.
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