Title :
An Experimentation Platform for On-Chip Integration of Analog Neural Networks: A Pathway to Trusted and Robust Analog/RF ICs
Author :
Maliuk, Dzmitry ; Makris, Yiorgos
Author_Institution :
Dept. of Electr. Eng., Yale Univ., New Haven, CT, USA
Abstract :
We discuss the design of an experimentation platform intended for prototyping low-cost analog neural networks for on-chip integration with analog/RF circuits. The objective of such integration is to support various tasks, such as self-test, self-tuning, and trust/aging monitoring, which require classification of analog measurements obtained from on-chip sensors. Particular emphasis is given to cost-efficient implementation reflected in: 1) low energy and area budgets of circuits dedicated to neural networks; 2) robust learning in presence of analog inaccuracies; and 3) long-term retention of learned functionality. Our chip consists of a reconfigurable array of synapses and neurons operating below threshold and featuring sub-μW power consumption. The synapse circuits employ dual-mode weight storage: 1) a dynamic mode, for fast bidirectional weight updates during training and 2) a nonvolatile mode, for permanent storage of learned functionality. We discuss a robust learning strategy, and we evaluate the system performance on several benchmark problems, such as the XOR2-6 and two-spirals classification tasks.
Keywords :
analogue integrated circuits; neural nets; radiofrequency integrated circuits; RF IC; XOR2-6; analog integrated circuits; analog measurements; analog neural networks; dual-mode weight storage; on-chip sensors; power consumption; synapse circuits; Biological neural networks; Logic gates; Neurons; Radio frequency; Robustness; System-on-chip; Training; Analog neural network; chip-in-the-loop training; multilayer perceptron; nonvolatile weight storage; ontogenic neural network; reconfigurable array; translinear circuits;
Journal_Title :
Neural Networks and Learning Systems, IEEE Transactions on
DOI :
10.1109/TNNLS.2014.2354406