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On the use of Bayesian Networks for Resource-Efficient Self-Calibration of Analog/RF ICs

机译:使用贝叶斯网络进行资源高效的模拟/ RF IC自校准

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Over the past few years, several self-calibration methodologies have proven their efficiency to calibrate analog and radio-frequency circuits against process variations. Specifically, statistical techniques based on machine-learning have been proposed to recover yield loss and even enhance circuit performances. In addition, these techniques enable to calibrate circuits after a single performance test, i.e. in one-shot. However, towards fully-integrated calibration techniques, the inference part of the machine learning algorithm needs to be performed as energy-efficiently as possible to reduce calibration cost to a minimum. Following the path of resource-efficient machine learning, this work explores an alternative to state-of-the-art Neural Network based statistical techniques. Specifically, we investigate the opportunities of using Bayesian Networks for resource-efficient on-chip statistical calibration of analog/RF circuits. Results will show that several improvements can be achieved using Bayesian Networks: (a) provide a comprehensive calibration framework with explicit relationships between parameters (b) demonstrate similar prediction accuracies that neural networks (c) optimize across several performance parameters with a single network and in a single query and (d) enable a more energy-efficient hardware implementation. The proposed self-calibration algorithm is applied to a low-noise amplifier fabricated with IBM's 130nm CMOS process, leading to a significant reduction in the number of operations required to obtain the best tuning knob setting.
机译:在过去的几年中,几种自校准方法已经证明了其针对过程变化校准模拟和射频电路的效率。具体而言,已经提出了基于机器学习的统计技术来恢复良率损失,甚至增强电路性能。另外,这些技术能够在单次性能测试后即一次完成校准电路。但是,对于完全集成的校准技术,机器学习算法的推理部分需要尽可能高效地执行,以将校准成本降至最低。遵循资源高效机器学习的道路,这项工作探索了基于最新神经网络的统计技术的替代方法。具体而言,我们调查了使用贝叶斯网络进行资源节约型模拟/ RF电路片上统计校准的机会。结果将表明,使用贝叶斯网络可以实现一些改进:(a)提供具有参数之间显式关系的综合校准框架(b)证明相似的预测精度,神经网络(c)使用单个网络在多个性能参数之间进行优化单个查询,并且(d)支持更节能的硬件实现。所提出的自校准算法被应用于采用IBM 130nm CMOS工艺制造的低噪声放大器,从而显着减少了获得最佳调谐旋钮设置所需的操作数量。

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