Significance Driven Hybrid 8T-6T SRAM for Energy-Efficient Synaptic Storage in Artificial Neural Networks
Gopalakrishnan Srinivasan, Parami Wijesinghe, Syed Shakib Sarwar,, Akhilesh Jaiswal, and Kaushik Roy

TL;DR
This paper introduces a hybrid 8T-6T SRAM design for energy-efficient neural network synaptic storage, leveraging error resilience and sensitivity analysis to reduce power consumption with minimal accuracy loss.
Contribution
It proposes a significance driven hybrid 8T-6T SRAM architecture that improves energy efficiency and area overhead for neural network synaptic storage.
Findings
Achieves 30.91% reduction in memory access power.
Maintains less than 1% accuracy loss.
Provides a 10.41% area overhead.
Abstract
Multilayered artificial neural networks (ANN) have found widespread utility in classification and recognition applications. The scale and complexity of such networks together with the inadequacies of general purpose computing platforms have led to a significant interest in the development of efficient hardware implementations. In this work, we focus on designing energy efficient on-chip storage for the synaptic weights. In order to minimize the power consumption of typical digital CMOS implementations of such large-scale networks, the digital neurons could be operated reliably at scaled voltages by reducing the clock frequency. On the contrary, the on-chip synaptic storage designed using a conventional 6T SRAM is susceptible to bitcell failures at reduced voltages. However, the intrinsic error resiliency of NNs to small synaptic weight perturbations enables us to scale the operating…
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Taxonomy
TopicsAdvanced Memory and Neural Computing · Ferroelectric and Negative Capacitance Devices · Low-power high-performance VLSI design
