基于频率特征的TIADC非线性校正神经网络研究
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1.电子科技大学(深圳)高等研究院成都611731; 2.电子科技大学自动化工程学院成都611731

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TN407TH701

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四川省自然科学基金面上项目(2024NSFSC0469)资助


Frequency characteristics based neural network for TIADC nonlinearity calibration
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1.Shenzhen Institute for Advanced Study, University of Electronic Science and Technology of China, Chengdu 611731, China; 2.School of Automation Engineering, University of Electronic Science and Technology of China, Chengdu 611731, China

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    摘要:

    模数转换器(ADC)的性能决定了采集系统的性能优劣,随着采集系统采样率和采样带宽的提升,ADC的非线性误差相较于线性误差具有更大的危害。针对频率相关的ADC非线性误差,提出了一种基于人工神经网络(ANN)校正的方法,对ADC采样数据进行数字后校正处理。该方法首先对ADC所采集的单音正弦信号进行频谱分析去除其中包含的非线性谐波失真,并以该结果作为参考真值,从频域角度对神经网络进行训练。所提方法以采集信号频谱的幅度信息作为神经网络的训练对象,将相位信息保留并在校正后对输出的幅度结果进行补偿,随后将幅度校正结果与保留的相位信息重构为复数频谱,并进行逆傅里叶变换以恢复时域信号。在实验验证中,以时间交织(TI)ADC系统为应用场景,将时间交织采样架构子ADC间的多种失配误差与子ADC的非线性误差一同校正。采用多组不同频率的单音正弦信号,按照频率分层抽样与时间分段采样相结合的策略进行数据划分与神经网络训练,并针对多音信号的校正进行了神经网络泛化性能验证,验证所提校正方法在ADC校正应用中的普适性。在一个4通道的20 GSPS采样率的TIADC硬件平台对神经网络的ADC校正性能进行了验证,所提方法保证了多音信号可以维持正确相位关系,且系统无杂散动态范围提升了36 dB。

    Abstract:

    The performance of an analog-to-digital converter (ADC) determines the quality of the entire acquisition system. As system sampling rates and bandwidths increase, nonlinear errors become significantly more detrimental than linear errors. To address frequency-dependent nonlinear errors in ADCs, this paper proposes a novel digital post-calibration method based on an artificial neural network (ANN). This method first conducts spectral analysis on the single-tone signal sampled by the ADC to remove nonlinear harmonics, and takes this result as the reference true value to train the artificial neural network from the perspective of the frequency domain. The proposed method takes the amplitude information of the signal spectrum as the training object of the artificial neural network, retains the phase information, and compensates the output amplitude result after calibration. The amplitude result is reconstructed with the retained phase information to form a complex frequency spectrum, and an inverse Fourier transform is performed to restore the time-domain signal. For experimental validation, a time-interleaved (TI) ADC system is utilized as the application scenario, where various inter-channel mismatch errors and the non-linear error of the ADC are jointly calibrated. Using multiple sets of single-tone signals with different frequencies, the data is divided and the neural network training is conducted by combining the strategy of frequency-layered sampling and time-segmented sampling. Furthermore, the generalization performance of the multi-tone signals is also verified. The universality of the proposed method in ADC nonlinear calibration applications is demonstrated. The network is also verified on a 4-channel TIADC hardware platform with a sampling rate of 20 GSPS, resulting in an overall improvement in the spurious-free dynamic range of the system by about 36 dB while ensuring that the multi-tone signals could maintain the correct phase relationship.

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王煜森,张益,梅思涛,王言立,赵贻玖.基于频率特征的TIADC非线性校正神经网络研究[J].仪器仪表学报,2026,47(2):95-104

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  • 在线发布日期: 2026-04-08
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