A Machine Learning-Based Error Model of Voltage-Scaled Circuits

Dongning Ma, Xun Jiao
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引用次数: 2

Abstract

Various approximation methods demonstrate the effectiveness of voltage scaling in digital circuits in order to explore the energy-error trade-off. An accurate error model is of critical importance for assessing the error behavior of voltage-scaled circuits and its effects on the application quality. However, existing error models of voltage-scaled circuits overlook the effects of input data and error rate disparity among different bits. To tackle this challenge, we propose a machine learning-based error model of voltage-scaled circuits that can predict the timing error rate for each output bit. We train this model using random forest methods with input features and output labels extracted from gate-level simulation. We evaluate the model accuracy on different circuits. Across all bit positions, voltage levels, and circuits, the model achieves on average a relative error of 1.06%. The model also achieves an average per-voltage Root Mean Square Error (RMSE) of 0.92% and per-bit RMSE of 1.02%. Exposing this error rate even up to the application level, the model can estimate the quality of an image processing application under voltage scaling with an average accuracy of 97.5%.
基于机器学习的电压比例电路误差模型
各种近似方法证明了数字电路中电压缩放的有效性,以探索能量误差权衡。准确的误差模型对于评估电压标度电路的误差特性及其对应用质量的影响至关重要。然而,现有的电压比例电路误差模型忽略了输入数据和不同位之间错误率差异的影响。为了应对这一挑战,我们提出了一种基于机器学习的电压比例电路误差模型,该模型可以预测每个输出位的定时错误率。我们使用随机森林方法训练该模型,并从门级仿真中提取输入特征和输出标签。我们在不同的电路上评估了模型的精度。在所有位位置、电压水平和电路中,该模型的平均相对误差为1.06%。该模型还实现了平均每电压均方根误差(RMSE)为0.92%和每比特RMSE为1.02%。将错误率暴露到应用级别,该模型可以估计电压缩放下图像处理应用的质量,平均精度为97.5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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