用于空间应用的具有混合突触器件的抗辐射内存处理交叉棒阵列

Shin-Uk Kang, Jin-Woo Han, Min-Seong Choo
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引用次数: 0

摘要

本文提出了一种多层感知器(MLP),该感知器在考虑辐射引起的钻头失效的情况下对MNIST手写图像进行分类,具有很高的精度。通过引入理想无误差MLP辐射效应的随机模型,神经网络在空间应用中性能下降是不可避免的。应该以最少的硬件添加剂开发内存中的抗辐射处理(PIM),以便在空间中更实际地利用边缘设备。在以往针对数字突触器件克服辐射相关副作用的研究中,随着单位存储器件中晶体管数量的增加,对辐射的耐受性也会提高。然而,当所有的重量设备都被笨重的设备所取代时,处理器的整体体积就会增加。本研究提出一种数字混合突触装置,当考虑辐射效应时,该装置仅在最高有效位(MSB)上使用较大的装置。以最小的突触硬件开销,提高了MNIST分类的性能。从具有单个隐藏层的Neurosim框架来看,在牺牲1位权重信息的同时,准确性得到了显着提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Radiation-Hardened Processing-In-Memory Crossbar Array With Hybrid Synapse Devices for Space Application
This paper presents a multilayer perceptron (MLP) that offers excellent accuracy for classifying MNIST handwritten images considering radiation-induced bit failures. By introducing a stochastic model for radiation effect on ideal error-free MLP, the performance degradation of the neural network on space application is inevitable. Radiation-hardened processing in memory (PIM) should be developed with minimum hardware additives to utilize edge devices more practically in space. In the previous studies on digital synaptic devices to overcome radiation-related side effects, as the number of transistors in the unit storage device increases, more tolerance to radiation is expected. However, when all weight devices are replaced with bulky ones, the overall volume of the processor increases. This work proposes a digital hybrid synaptic device that only uses a larger device on the most significant bit (MSB) when the radiation effect is considered. With minimum hardware overhead for synapses, improved performance in the classification of MNIST is obtained. From the Neurosim framework with a single hidden layer, the accuracy is dramatically improved while sacrificing 1-bit weight information.
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