基于加性神经网络的无先验知识奈奎斯特ADC特性静态和动态失真建模

Danfeng Zhai, P. Li, Jiushan Zhang, Chixiao Chen, Fan Ye, Junyan Ren
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引用次数: 1

摘要

提出了一种Nyquist adc的无先验知识建模方法。目前的ADC建模方法主要基于已知的电路实现和非理想性,因此难以恢复非线性静态和动态失真。该方法采用具有二值输入的加性神经网络,实现了一种数据驱动、无先验知识的建模方法。静态和动态变形均由两个独立的子网络建模。同时,采用批量生成方案增强噪声不敏感性,便于在只有仿真结果的情况下进行小样本训练。通过三种典型的非理想ADC设计,包括电容失配的SAR ADC、带NMOS采样开关的超高速ADC和带宽受限参考源的SAR ADC,验证了所提方法的有效性。所有非线性和FFT频谱图都表明,该模型可以准确地模拟静态和动态失真,且杂散失配小于1dB。
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Additive Neural Network Based Static and Dynamic Distortion Modeling for Prior-Knowledge-Free Nyquist ADC Characterization
This paper presents a prior-knowledge free modeling method for Nyquist ADCs. Current ADC modeling methods mainly base on known circuit implementation and non-idealities, thus hard to recover non-linear static and dynamic distortions. The proposed method adopts an additive neural network with binary inputs to achieve a data driven, prior-knowledge free modeling method. Both static and dynamic distortions are modeled by two separate sub-network. Also, a batch generation scheme is used to enhance the noise insensitivity, facilitating small sample training, when only simulation results are available. The proposed methods are validated by three typical non-ideal ADC designs, including a SAR ADC with capacitor mismatch, an ultra-high speed ADC with NMOS sampling switch, and a SAR ADC with a bandwidth limited reference source. All the non-linearity and FFT spectrum plots show the proposing model can accurately model both static and dynamic distortion with less than 1dB spur mismatch.
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