4.5 Article Proceedings Paper

High Energy and Thermal Neutron Sensitivity of Google Tensor Processing Units

Journal

IEEE TRANSACTIONS ON NUCLEAR SCIENCE
Volume 69, Issue 3, Pages 567-575

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TNS.2022.3142092

Keywords

Neutrons; Image edge detection; Reliability; Convolutional neural networks; Performance evaluation; Error analysis; Software; AI; convolutional neural network (CNN); embedded applications; neutron experiment; reliability; tensor processing units (TPUs)

Funding

  1. European Union [886202]
  2. Coordenacao de Aperfeicoamento de Pessoal de Nivel Superior-Brazil (CAPES) [001]
  3. French National Program Program d'Investissements d'Avenir, Institut de Recherche Technologique (IRT) Nanoelec [ANR-10-AIRT-05]

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In this study, we investigate the reliability of Google's coral TPUs in different neutron irradiation environments, and find that despite high error rates, most neutron-induced errors only have a slight impact on convolution outputs and do not alter the detection or classification of CNNs. The study provides valuable information for designing CNNs to prevent neutron-induced events from leading to misdetections or misclassifications.
In this article, we investigate the reliability of Google's coral tensor processing units (TPUs) to both high-energy atmospheric neutrons (at ChipIR) and thermal neutrons from a pulsed source [at equipment materials and mechanics analyzer (EMMA)] and from a reactor [at Thermal and Epithermal Neutron Irradiation Station (TENIS)]. We report data obtained with an overall fluence of 3.41 x 10(12) n/cm(2) for atmospheric neutrons (equivalent to more than 30 million years of natural irradiation) and of 7.55 x 10(12) n/cm(2) for thermal neutrons. We evaluate the behavior of TPUs executing elementary operations with increasing input sizes (standard convolutions or depthwise convolutions) as well as eight convolutional neural networks (CNNs) configurations (single-shot multibox detection (SSD) MobileNet v2 and SSD MobileDet, trained with COCO dataset, and Inception v4 and ResNet-50, with ILSVRC2012 dataset). We found that, despite the high error rate, most neutron-induced errors only slightly modify the convolution output and do not change the detection or classification of CNNs. By reporting details about the error model, we provide valuable information on how to design the CNNs to avoid neutron-induced events to lead to misdetections or classifications.

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