Shenzhen Institute for Advanced Study, UESTC, Shenzhen, China.
Testing Center The 58th Research Institute of China Electronics Technology Corporation, Wuxi, China.
Rev Sci Instrum. 2022 Aug 1;93(8):084701. doi: 10.1063/5.0093709.
In the analog-to-digital converter (ADC) test process, the static and dynamic performance parameters are the most important, and the tests for these parameters account for the bulk of the ADC test cost. These two types of parameters follow certain relationships, which are incorporated into the ADC test to reduce the cost. In this paper, we focus on the signal-to-noise ratio (SNR), a key indicator of the dynamic performances of ADCs. A statistical neural network (SNN) with two hidden layers was constructed to predict the SNR from the feature variables, which were extracted from the static parameters. A 16-bit, 125-MSPS ADC was used to evaluate the proposed prediction model. Compared to the measured SNR obtained by traditional fast Fourier transform based test methods, the predicted value had a mean average error of only 0.75 dB. In addition, the Shapley additive explanations interpreter was adopted to analyze the feature dependences of the SNN model, and the results demonstrated that the deterioration of the integral nonlinearity-curve-related features could significantly decrease the SNR, which is consistent with previous research results. The reported results demonstrated that, at the cost of a slight loss of accuracy, the proposed SNN can significantly reduce the test complexity, avoid dynamic parameter measurements, and reduce the total test time by about 4%.
在模数转换器 (ADC) 测试过程中,静态和动态性能参数是最重要的,这些参数的测试占据了 ADC 测试成本的大部分。这两种类型的参数遵循一定的关系,这些关系被纳入 ADC 测试中以降低成本。在本文中,我们重点研究了 SNR,这是 ADC 动态性能的关键指标。构建了一个具有两个隐藏层的统计神经网络 (SNN),从静态参数中提取的特征变量来预测 SNR。使用 16 位、125-MSPS ADC 对所提出的预测模型进行了评估。与传统基于快速傅里叶变换的测试方法获得的测量 SNR 相比,预测值的平均误差仅为 0.75dB。此外,采用 Shapley 加法解释器分析了 SNN 模型的特征依赖性,结果表明与积分非线性曲线相关的特征恶化会显著降低 SNR,这与先前的研究结果一致。报告的结果表明,在略微降低准确性的代价下,所提出的 SNN 可以显著降低测试复杂性,避免动态参数测量,并将总测试时间缩短约 4%。