A Phenomenological AI Foundation Model for Physical Signals
The objective of this work is to develop an AI foundation model for physical signals that can generalize across diverse phenomena, domains, applications, and sensing apparatuses. We propose a phenomenological approach and framework for creating and validating such AI foundation models. Based on this...
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Zusammenfassung: | The objective of this work is to develop an AI foundation model for physical
signals that can generalize across diverse phenomena, domains, applications,
and sensing apparatuses. We propose a phenomenological approach and framework
for creating and validating such AI foundation models. Based on this framework,
we developed and trained a model on 0.59 billion samples of cross-modal sensor
measurements, ranging from electrical current to fluid flow to optical sensors.
Notably, no prior knowledge of physical laws or inductive biases were
introduced into the model. Through several real-world experiments, we
demonstrate that a single foundation model could effectively encode and predict
physical behaviors, such as mechanical motion and thermodynamics, including
phenomena not seen in training. The model also scales across physical processes
of varying complexity, from tracking the trajectory of a simple spring-mass
system to forecasting large electrical grid dynamics. This work highlights the
potential of building a unified AI foundation model for diverse physical world
processes. |
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DOI: | 10.48550/arxiv.2410.14724 |