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Analytical design optimization of sub-ranging ADC based on stochastic comparator

机译:基于随机比较器的细分ADC的分析设计优化

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摘要

An optimal design method for a sub-ranging Analog to Digital Converter (ADC) based on stochastic comparator is demonstrated by performing theoretical analysis of random fluctuations in the comparator offset voltage. The proposed performance model is based on a simple but rigorous Probability Density Function (PDF) for the effective resolution of a stochastic comparator. It is possible to approximate the yield of a stochastic comparator by assuming that the correlations among different analog steps of the output transfer function are negligible. Comparison with Monte Carlo simulation shows that the proposed model precisely estimates the yield of the ADC when it is designed for a reasonable target yield of > 0.8, which is the most practical case while designing a high performance ADC. Application of this model to a stochastic comparator reveals that an additional calibration can significantly enhance the resolution, i.e. it can increase the Number of Bits (NOB) by approximately 2 bits under the same chip yield. Extending the model to a stochastic-comparator-based sub-ranging ADC indicates that the ADC design parameters can be tuned to find the optimal resource distribution between the deterministic coarse stage and the stochastic fine stage.
机译:通过对比较器失调电压中的随机波动进行理论分析,论证了基于随机比较器的细分模数转换器(ADC)的最佳设计方法。所提出的性能模型基于一个简单但严格的概率密度函数(PDF),用于有效地解决随机比较器的问题。通过假设输出传递函数的不同模拟步长之间的相关性可以忽略不计,可以近似随机比较器的产量。与Monte Carlo仿真的比较表明,当设计的ADC的合理目标良率> 0.8时,该模型可以精确地估计ADC的良率,这是设计高性能ADC时最实际的情况。将该模型应用于随机比较器表明,额外的校准可以显着提高分辨率,即在相同的芯片产量下,它可以将位数(NOB)增加大约2位。将模型扩展到基于随机比较器的子范围ADC可以表明,可以调整ADC设计参数以找到确定性粗阶段和随机精细阶段之间的最佳资源分配。

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