Power modeling on FPGA
Author(s) -
Yehya Nasser,
Jean-Christophe Prévotet,
Maryline Hélard
Publication year - 2018
Publication title -
hal (le centre pour la communication scientifique directe)
Language(s) - English
Resource type - Conference proceedings
DOI - 10.1145/3203217.3204462
Subject(s) - field programmable gate array , computer science , power (physics) , power optimization , artificial neural network , design flow , embedded system , field (mathematics) , power consumption , computer engineering , artificial intelligence , mathematics , physics , quantum mechanics , pure mathematics
Today reducing power consumption is a major concern especially when it concerns small embedded devices. Power optimization is required all along the design flow but particularly in the first steps where it has the strongest impact. In this work, we propose new power models based on neural networks that predict the power consumed by digital operators implemented on Field Programmable Gate Arrays (FPGAs). These operators are interconnected and the statistical information of data patterns are propagated among them. The obtained results make an overall power estimation of a specific design possible. A comparison is performed to evaluate the accuracy of our power models against the estimations provided by the Xilinx Power Analyzer (XPA) tool. Our approach is verified at system-level where different processing systems are implemented. A mean absolute percentage error which is less than 8% is shown versus the Xilinx classic flow dedicated to power estimation.
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