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Noise-Shaping Gradient Descent-Based Online Adaptation Algorithms for Digital Calibration of Analog Circuits

机译:基于噪声整形梯度下降的在线自适应算法,用于模拟电路的数字校准

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摘要

Analog circuits that are calibrated using digital-to-analog converters (DACs) use a digital signal processor-based algorithm for real-time adaptation and programming of system parameters. In this paper, we first show that this conventional framework for adaptation yields suboptimal calibration properties because of artifacts introduced by quantization noise. We then propose a novel online stochastic optimization algorithm called noise-shaping or $SigmaDelta$ gradient descent, which can shape the quantization noise out of the frequency regions spanning the parameter adaptation trajectories. As a result, the proposed algorithms demonstrate superior parameter search properties compared to floating-point gradient methods and better convergence properties than conventional quantized gradient-methods. In the second part of this paper, we apply the $SigmaDelta$ gradient descent algorithm to two examples of real-time digital calibration: 1) balancing and tracking of bias currents, and 2) frequency calibration of a band-pass Gm-C biquad filter biased in weak inversion. For each of these examples, the circuits have been prototyped in a 0.5- $mu{rm m}$ complementary metal–oxide–semiconductor process, and we demonstrate that the proposed algorithm is able to find the optimal solution even in the presence of spurious local minima, which are introduced by the nonlinear and non-monotonic response of calibration DACs.
机译:使用数模转换器(DAC)进行校准的模拟电路使用基于数字信号处理器的算法来实时适配和编程系统参数。在本文中,我们首先表明,由于量化噪声引入了伪像,因此这种传统的自适应框架会产生次优的校准属性。然后,我们提出了一种称为噪声整形或$ SigmaDelta $梯度下降的新颖的在线随机优化算法,该算法可以在跨越参数自适应轨迹的频率区域中形成量化噪声。结果,与浮点梯度方法相比,所提出的算法表现出了优越的参数搜索性能,并且与常规的量化梯度方法相比,具有更好的收敛性。在本文的第二部分中,我们将$ SigmaDelta $梯度下降算法应用于两个实时数字校准示例:1)偏置电流的平衡和跟踪,以及2)带通Gm-C双二阶的频率校准滤波器偏向于弱反演。对于这些示例中的每一个,电路均采用0.5-μm(rm m} $的互补金属-氧化物-半导体工艺进行原型设计,并且我们证明了所提出的算法即使在存在杂散的情况下也能够找到最佳解决方案。局部最小值,由校准DAC的非线性和非单调响应引入。

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