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Interpretable Spatial-Temporal Fusion Transformers: Multi-Output Prediction for Parametric Dynamical Systems with Time-Varying Inputs

1 May 2025
Shuwen Sun
Lihong Feng
P. Benner
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Abstract

We explore the promising performance of a transformer model in predicting outputs of parametric dynamical systems with external time-varying input signals. The outputs of such systems vary not only with physical parameters but also with external time-varying input signals. Accurately catching the dynamics of such systems is challenging. We have adapted and extended an existing transformer model for single output prediction to a multiple-output transformer that is able to predict multiple output responses of these systems. The multiple-output transformer generalizes the interpretability of the original transformer. The generalized interpretable attention weight matrix explores not only the temporal correlations in the sequence, but also the interactions between the multiple outputs, providing explanation for the spatial correlation in the output domain. This multiple-output transformer accurately predicts the sequence of multiple outputs, regardless of the nonlinearity of the system and the dimensionality of the parameter space.

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@article{sun2025_2505.00473,
  title={ Interpretable Spatial-Temporal Fusion Transformers: Multi-Output Prediction for Parametric Dynamical Systems with Time-Varying Inputs },
  author={ Shuwen Sun and Lihong Feng and Peter Benner },
  journal={arXiv preprint arXiv:2505.00473},
  year={ 2025 }
}
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