A Calibration Scheme for Nonlinearity of the SAR-Pipelined ADCs Based on a Shared Neural Network

Min Chen, Yimin Wu, Jingchao Lan, Fan Ye, Chixiao Chen, Junyan Ren
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引用次数: 1

Abstract

This paper proposes a calibration scheme that compensates the nonlinearity of the SAR-Pipelined analog-to-digital converters(ADCs) based on a shared neural network. Due to the fitting ability of the nonlinear functions, the neural network based ADC calibration scheme requires no prior knowledge. Moreover, the introduction of the sharing mechanism not only guarantees the calibration effect for nonlinearity, but also simplifies the hardware complexity, compared to a calibrator with independent neural networks. We validate the scheme with a 14-bit 60MHz SAR-Pipelined ADC fabricated in 28 nm. The measurement results indicate that the ADCs achieve an SFDR of 93.3 dB and an ENOB of 10.63 b, with the assistance of the proposed calibrator. In the meantime, the memory is reduced by 46.7% due to the decrease of neural network parameters, with a sharing rate (ratio of shared quantity to total) of 93.75%.
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基于共享神经网络的sar流水线adc非线性校正方案
本文提出了一种基于共享神经网络的sar流水线模数转换器(adc)非线性补偿校正方案。由于非线性函数的拟合能力,基于神经网络的ADC校准方案不需要先验知识。此外,与独立神经网络校准器相比,共享机制的引入不仅保证了非线性的校准效果,而且简化了硬件复杂度。我们用28nm制程的14位60MHz sar流水线ADC验证了该方案。测量结果表明,在该校准器的帮助下,adc的SFDR为93.3 dB, ENOB为10.63 b。同时,由于神经网络参数的减少,内存减少了46.7%,共享率(共享数量占总量的比例)为93.75%。
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