迈向完全独立的模拟/射频BIST:一个经济有效的神经分类器实现

Dzmitry Maliuk, Nathan Kupp, Y. Makris
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引用次数: 4

摘要

最近提出的模拟/射频电路内置自检(BIST)方法要求将刺激发生器、测量采集和决策电路与被测设备(DUT)集成在芯片上。这种方法的实际实现取决于满足专用测试电路的严格面积和功率限制的能力。在这项工作中,我们研究了神经分类器的成本效益实现,这是该BIST方法的核心组成部分。我们提出了一个可重构模拟神经网络(ANN)实验平台的设计,并解决了有关其成本效率的关键问题:具有严格面积和功耗预算的完全模拟实现,所提出的架构的学习能力,训练期间权值记忆的快速动态规划,以及在运行或待机期间权值系数的高精度非易失性存储。利用这个平台,我们实现了一个个体神经网络(ONN)以及相应的训练算法。最后,我们通过实际案例研究证明了所提出架构的学习能力,其中我们训练人工神经网络来预测德州仪器制造的大量射频收发器芯片的生产规格测试结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards a fully stand-alone analog/RF BIST: A cost-effective implementation of a neural classifier
A recently proposed Built-In Self-Test (BIST) method for analog/RF circuits requires stimuli generator, measurement acquisition, and decision making circuits to be integrated on-chip along with the Device Under Test (DUT). Practical implementation of this approach hinges on the ability to meet strict area and power constraints of the circuits dedicated to test. In this work, we investigate a cost-efficient implementation of a neural classifier, which is the central component of this BIST method. We present the design of a reconfigurable analog neural network (ANN) experimentation platform and address the key questions concerning its cost-efficiency: a fully analog implementation with strict area and power budgets, a learning ability of the proposed architecture, fast dynamic programming of the weight memory during training, and high precision non-volatile storage of weight coefficients during operation or standby. Using this platform, we implement an ontogenic neural network (ONN) along with the corresponding training algorithms. Finally, we demonstrate the learning ability of the proposed architecture with a real-world case study wherein we train the ANN to predict the results of production specification testing for a large number of RF transceiver chips fabricated by Texas Instruments.
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