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Mitigating multiple single-event upsets during deep neural network inference using fault-aware training

13 February 2025
Toon Vinck
Naïn Jonckers
Gert Dekkers
Jeffrey Prinzie
P. Karsmakers
    AAML
    AI4CE
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Abstract

Deep neural networks (DNNs) are increasingly used in safety-critical applications. Reliable fault analysis and mitigation are essential to ensure their functionality in harsh environments that contain high radiation levels. This study analyses the impact of multiple single-bit single-event upsets in DNNs by performing fault injection at the level of a DNN model. Additionally, a fault aware training (FAT) methodology is proposed that improves the DNNs' robustness to faults without any modification to the hardware. Experimental results show that the FAT methodology improves the tolerance to faults up to a factor 3.

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@article{vinck2025_2502.09374,
  title={ Mitigating multiple single-event upsets during deep neural network inference using fault-aware training },
  author={ Toon Vinck and Naïn Jonckers and Gert Dekkers and Jeffrey Prinzie and Peter Karsmakers },
  journal={arXiv preprint arXiv:2502.09374},
  year={ 2025 }
}
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