M. Ronchi;S. Di Giacomo;M. Amadori;G. Borghi;M. Carminati;C. Fiorini
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引用次数: 0
摘要
并行计算是加速人工神经网络在数字和模拟实现中的关键。我们的研究重点是模拟人工神经网络(NN),其中并行计算在电压,电荷和电流下执行,使用与原始处理数据的存储器相同的设备作为计算元素。这些模拟内存计算结构可以用于边缘计算应用,因为它们能够以低延迟直接与模拟信号接口,从而降低数据吞吐量和前端复杂性。这项工作提出了一个更大的前馈,全连接模拟神经网络ASIC (ANNA)中使用的单个神经元的具体实现,展示了它的性能和关键。ASIC被设计为一个可重新编程的模拟加速器,用于重建Anger相机中伽马射线相互作用的位置,用于PET和SPECT等医学成像应用。第一个原型已经在0.35 um CMOS工艺上制造,面积为24 mm2,每秒能够处理200,000个事件,实验测量的能量效率为50 GOPS/W。该网络已在Matlab模型上进行了训练,该模型被调整为嵌入许多非理想性以匹配物理芯片,如本工作所示。
Design, Implementation, and Analysis of an Integrated Switched Capacitor Analog Neuron for Edge Computing AI Accelerators
Parallel computing is the key to accelerate artificial neural networks, both in digital and analog implementations. Our research focuses on analog artificial neural networks (NN), where parallel computations are executed with voltages, charges and currents, using as the computing elements the same devices that act as memories for the raw processed data. These analog in-memory computing structures can be exploited for edge computing applications, thanks to their ability to directly interface with analog signals with low latency, reducing data throughput and front-end complexity. This work presents the specific implementation of a single neuron used in a larger feedforward, fully connected analog neural network ASIC (ANNA), showing its performance and criticalities. The ASIC is designed as a re-programmable analog accelerator for the reconstruction of the position of interaction of gamma rays in Anger cameras, for medical imaging applications as PET and SPECT. This first prototype has been fabricated on a 0.35 um CMOS process with an area of 24 mm2, and it is able to process 200,000 events per second, with an experimentally measured energy efficiency of 50 GOPS/W. The network has been trained on a Matlab model, that was adjusted to embed many nonidealities to match the physical chip, as demonstrated in this work.
期刊介绍:
TCAS I publishes regular papers in the field specified by the theory, analysis, design, and practical implementations of circuits, and the application of circuit techniques to systems and to signal processing. Included is the whole spectrum from basic scientific theory to industrial applications. The field of interest covered includes: - Circuits: Analog, Digital and Mixed Signal Circuits and Systems - Nonlinear Circuits and Systems, Integrated Sensors, MEMS and Systems on Chip, Nanoscale Circuits and Systems, Optoelectronic - Circuits and Systems, Power Electronics and Systems - Software for Analog-and-Logic Circuits and Systems - Control aspects of Circuits and Systems.