Dynamic Power Control in a Hardware Neural Network with Error-Configurable MAC Units
Maedeh Ghaderi, Arvin Delavari, Faraz Ghoreishy, Sattar Mirzakuchaki

TL;DR
This paper presents a hardware neural network with error-configurable MAC units that reduces power consumption by up to 24.78% with minimal accuracy loss, demonstrating an efficient implementation for AI applications.
Contribution
It introduces a novel hardware MLP with error and power controllable approximate multipliers in 45nm CMOS technology for improved efficiency.
Findings
Power consumption reduced by up to 24.78%.
Accuracy decreases by only 0.92%.
Achieved efficient classification on MNIST dataset.
Abstract
Multi-Layer Perceptrons (MLP) are powerful tools for representing complex, non-linear relationships, making them essential for diverse machine learning and AI applications. Efficient hardware implementation of MLPs can be achieved through many hardware and architectural design techniques. These networks excel at predictive modeling and classification tasks like image classification, making them a popular choice. Approximate computing techniques are increasingly used to optimize critical path delay, area, power, and overall hardware efficiency in high-performance computing systems through controlled error and related trade-offs. This study proposes a hardware MLP neural network implemented in 45nm CMOS technology, in which MAC units of the neurons incorporate error and power controllable approximate multipliers for classification of the MNIST dataset. The optimized network consists of 10…
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Taxonomy
TopicsNeural Networks and Applications · Industrial Technology and Control Systems · Advanced Algorithms and Applications
