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首页> 外文期刊>IEEE transactions on circuits and systems . I , Regular papers >An IoT Endpoint System-on-Chip for Secure and Energy-Efficient Near-Sensor Analytics
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An IoT Endpoint System-on-Chip for Secure and Energy-Efficient Near-Sensor Analytics

机译:物联网端点片上系统,用于安全且节能的近传感器分析

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摘要

Near-sensor data analytics is a promising direction for internet-of-things endpoints, as it minimizes energy spent on communication and reduces network load - but it also poses security concerns, as valuable data are stored or sent over the network at various stages of the analytics pipeline. Using encryption to protect sensitive data at the boundary of the on-chip analytics engine is a way to address data security issues. To cope with the combined workload of analytics and encryption in a tight power envelope, we propose Fulmine, a system-on-chip (SoC) based on a tightly-coupled multi-core cluster augmented with specialized blocks for compute-intensive data processing and encryption functions, supporting software programmability for regular computing tasks. The Fulmine SoC, fabricated in 65-nm technology, consumes less than 20mW on average at 0.8V achieving an efficiency of up to 70pJ/B in encryption, 50pJ/px in convolution, or up to 25MIPS/mW in software. As a strong argument for real-life flexible application of our platform, we show experimental results for three secure analytics use cases: secure autonomous aerial surveillance with a state-of-the-art deep convolutional neural network (CNN) consuming 3.16pJ per equivalent reduced instruction set computer operation, local CNN-based face detection with secured remote recognition in 5.74pJ/op, and seizure detection with encrypted data collection from electroencephalogram within 12.7pJ/op.
机译:近传感器数据分析是物联网端点的一个有前途的方向,因为它可以最大程度地减少在通信上花费的精力并减少网络负载-但由于在网络的各个阶段都通过网络存储或发送了有价值的数据,因此也带来了安全隐患。分析管道。使用加密来保护片上分析引擎边界上的敏感数据是解决数据安全问题的一种方法。为了在紧凑的功率范围内应对分析和加密的合并工作负载,我们提出了Fulmine,这是一种基于紧密耦合的多核集群的片上系统(SoC),该集群具有专用块,用于计算密集型数据处理和加密功能,支持用于常规计算任务的软件可编程性。 Fulmine SoC采用65纳米技术制造,在0.8V电压下平均消耗不到20mW的功率,加密效率高达70pJ / B,卷积效率高达50pJ / px,软件效率高达25MIPS / mW。作为我们平台现实生活中灵活应用的有力论据,我们展示了三种安全分析用例的实验结果:使用最新的深层卷积神经网络(CNN)进行安全等效的自动空中监视,每等效消耗3.16pJ减少了指令集的计算机操作,基于5.74pJ / op的具有安全远程识别功能的基于本地CNN的面部检测以及带有12.7pJ / op的脑电图加密数据收集的癫痫发作检测。

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