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首页> 外文期刊>Journal of Electronic Testing: Theory and Applications: Theory and Applications >A Low-cost Dithering Method for Improving ADC Linearity Test Applied in uSMILE Algorithm
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A Low-cost Dithering Method for Improving ADC Linearity Test Applied in uSMILE Algorithm

机译:一种用于改进USMILE算法应用ADC线性度测试的低成本抖动方法

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Analog-to-digital converters (ADCs) are an important component in electronics design. One of the difficulties being faced is to be able to accurately and cost-effectively test the continually higher performance of ADCs under budget constraints. Test time for static linearity is a major portion of the total test cost. Our group proposed an ultrafast segmented model identification of linearity error (uSMILE) algorithm for estimating linearity, which reduces test time dramatically compared to the conventional method. However, this algorithm produces large estimation errors in low resolution ADCs (10-12 bits) when the input is a ramp signal, for which the quantization noise of ADC becomes a dominant part in the total noise. In this study, we propose three types of distribution dithering methods added to the ramp input signal to reduce the estimation error when uSMILE was applied to low resolution ADCs. Fixed pattern was proved to be the most efficient and cost-effective method by comparing with the Gaussian, uniform, and fixed-pattern distributions. The simulation results indicate that the estimation error can be significantly reduced in a 12-bit SAR ADC with effective dithering. Furthermore, a hardware evaluation board with commercial ADC products was used to validate the effectiveness of the fixed-pattern dithering methods, and our measurement shows the INL estimation error can be reduced to less than 0.1 LSB. Such dithering method relaxes the input requirement of uSMILE algorithm which dramatically reduces the test setup cost.
机译:模数转换器(ADCS)是电子设计中的重要组成部分。所面临的困难之一是能够准确且成本有效地测试预算限制下的ADC的不断更高的性能。静态线性度的测试时间是总测试成本的主要部分。我们的集团提出了一种超快分段模型识别线性误差(USMILE)算法的用于估计线性度,其与传统方法显着降低了测试时间。然而,当输入是斜坡信号时,该算法在低分辨率ADC(10-12位)中产生大的估计误差,其中ADC的量化噪声变为总噪声的主要部分。在这项研究中,我们提出了三种类型的分布抖动方法,添加到斜坡输入信号中,以减少应用于低分辨率ADC时的估计误差。通过与高斯,统一和固定模式分布相比,证明了固定模式是最有效和最具成本效益的方法。仿真结果表明,在具有有效抖动的12位SAR ADC中可以显着降低估计误差。此外,使用具有商业ADC产品的硬件评估板用于验证固定模式抖动方法的有效性,我们的测量值显示INL估计误差可以降低到小于0.1LSB。这种抖动方法放宽USMILE算法的输入要求,从而大大降低了测试设置成本。

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