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Voltage and Temperature-Aware SSTA Using Neural Network Delay Model

机译:使用神经网络延迟模型的电压和温度感知SSTA

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摘要

With the emergence of voltage scaling as one of the most powerful power reduction techniques, it has been important to support voltage scalable statistical static timing analysis (SSTA) in deep submicrometer process nodes. In this paper, we propose a single delay model of logic gate using neural network which comprehensively captures process, voltage, and temperature variation along with input slew and output load. The number of simulation programs with integrated circuit emphasis (SPICE) required to create this model over a large voltage and temperature range is found to be modest and $4times$ less than that required for a conventional table-based approach with comparable accuracy. We show how the model can be used to derive sensitivities required for linear SSTA for an arbitrary voltage and temperature. Our experimentation on ISCAS 85 benchmarks across a voltage range of 0.9–1.1 V shows that the average error in mean delay is less than 1.08% and average error in standard deviation is less than 2.85%. The errors in predicting the 99% and 1% probability point are 1.31% and 1%, respectively, with respect to SPICE. The two potential applications of voltage-aware SSTA have been presented, i.e., one for improving the accuracy of timing analysis by considering instance-specific voltage drops in power grids and the other for determining optimum supply voltage for target yield for dynamic voltage scaling applications.
机译:随着电压缩放成为最强大的功率降低技术之一,在深亚微米工艺节点中支持电压可扩展统计静态定时分析(SSTA)变得很重要。在本文中,我们提出了使用神经网络的逻辑门的单个延迟模型,该模型可以全面捕获过程,电压和温度变化以及输入压摆和输出负载。发现在较大的电压和温度范围内创建此模型所需的带有集成电路重点(SPICE)的仿真程序数量不多,并且比具有相当准确性的传统基于表格的方法所需的仿真程序少$ 4倍。我们展示了如何使用该模型得出任意电压和温度下线性SSTA所需的灵敏度。我们在0.9–1.1 V的电压范围内对ISCAS 85基准进行的实验表明,平均延迟的平均误差小于1.08%,标准偏差的平均误差小于2.85%。相对于SPICE,预测99%和1%概率点的误差分别为1.31%和1%。提出了电压感知SSTA的两种潜在应用,即一种通过考虑电网中实例特定的压降来提高时序分析的准确性,另一种用于确定动态电压缩放应用的目标产量的最佳电源电压。

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