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An Energy-Efficient Bayesian Neural Network Implementation Using Stochastic Computing Method

Xiaotao Jia, Huiyi Gu, Yuhao Liu, Jianlei Yang, Xueyan Wang, Weitao Pan, Youguang Zhang, Sorin Cotöfană, Weisheng Zhao

2023IEEE Transactions on Neural Networks and Learning Systems24 citationsDOI

Abstract

The robustness of Bayesian neural networks (BNNs) to real-world uncertainties and incompleteness has led to their application in some safety-critical fields. However, evaluating uncertainty during BNN inference requires repeated sampling and feed-forward computing, making them challenging to deploy in low-power or embedded devices. This article proposes the use of stochastic computing (SC) to optimize the hardware performance of BNN inference in terms of energy consumption and hardware utilization. The proposed approach adopts bitstream to represent Gaussian random number and applies it in the inference phase. This allows for the omission of complex transformation computations in the central limit theorem-based Gaussian random number generating (CLT-based GRNG) method and the simplification of multipliers as AND operations. Furthermore, an asynchronous parallel pipeline calculation technique is proposed in computing block to enhance operation speed. Compared with conventional binary radix-based BNN, SC-based BNN (StocBNN) realized by FPGA with 128-bit bitstream consumes much less energy consumption and hardware resources with less than 0.1% accuracy decrease when dealing with MNIST/Fashion-MNIST datasets.

Topics & Concepts

Stochastic computingMNIST databaseComputer scienceRobustness (evolution)BitstreamEnergy consumptionField-programmable gate arrayAsynchronous communicationInferenceEfficient energy useArtificial neural networkComputer engineeringAlgorithmComputationEmbedded systemArtificial intelligenceGeneBiochemistryComputer networkChemistryEcologyElectrical engineeringDecoding methodsBiologyEngineeringError Correcting Code TechniquesNeural Networks and ApplicationsEvolutionary Algorithms and Applications