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An Efficient Supervised Learning Method to Predict Power Supply Noise During At-speed Test

机译:一种高效的监督学习方法,可在速度测试期间预测电源噪声

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The Power Distribution Network (PDN) is designed for worst-case power-hungry functional use-cases. Most often Design for Test (DFT) scenarios are not accounted for, while optimizing the PDN design. Automatic Test Pattern Generation (ATPG) tools typically follow a greedy algorithm to achieve maximum fault coverage with short test times. This causes Power Supply Noise (PSN) during scan testing to be much higher than functional mode since switching activity is higher by an order of magnitude. Understanding the noise characteristics through exhaustive pattern simulation is extremely machine and memory intensive and requires unsustainably long runtimes. Hence, we aggressively limit switching factors to conservative estimates and rely on post-silicon noise characterization to optimize test vectors. In this work, we propose a novel method to predict simultaneous switching noise using fast Deep Neural Networks (DNNs) such as Fully Connected Network, Convolutional Neural Network, and Natural Language Processing. Our approach, that is based on pre-silicon ATPG vectors, is significantly faster than conventional estimation methods and can potentially reduce the test time.
机译:配电网络(PDN)专为最坏情况耗电功能使用情况而设计。最常进行测试(DFT)方案的设计不会占,同时优化PDN设计。自动测试模式生成(ATPG)工具通常遵循贪婪算法,以实现具有短测试时间的最大故障覆盖范围。这导致扫描测试期间的电源噪声(PSN)远高于功能模式,因为切换活动较高的数量级。通过详尽的模式模拟了解噪声特性是极其机器和内存密集,需要不可持续的长次。因此,我们积极地限制切换因素以保守估计,并依赖于后硅噪声特性来优化测试向量。在这项工作中,我们提出了一种新的方法来预测使用快速深度神经网络(DNN)的同时开关噪声,例如完全连接的网络,卷积神经网络和自然语言处理。我们的方法,即基于硅预静电载体,明显比传统估计方法更快,并且可能会降低测试时间。

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