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Improved method for SNR prediction in machine-learning-based test

机译:基于机器学习的测试中SNR预测的改进方法

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This paper applies an improved method for testing the signal-to-noise ratio (SNR) of Analogue-to-Digital Converters (ADC). In previous work, a noisy and nonlinear pulse signal is exploited as the input stimulus to obtain the signature results of ADC. By applying a machine-learning-based approach, the dynamic parameters can be predicted by using the signature results. However, it can only estimate the SNR accurately within a certain range. In order to overcome this limitation, an improved method based on work is applied in this work. It is validated on the Labview model of a 12-bit 80 Ms/s pipelined ADC with a pulse- wave input signal of 3 LSB noise and 7-bit nonlinear rising and falling edges.
机译:本文采用了一种改进的方法来测试模数转换器(ADC)的信噪比(SNR)。在先前的工作中,有噪声的非线性脉冲信号被用作输入激励以获得ADC的签名结果。通过应用基于机器学习的方法,可以通过使用签名结果来预测动态参数。但是,它只能在一定范围内准确估计SNR。为了克服该限制,在这项工作中应用了一种基于工作的改进方法。它在12位80 Ms / s流水线ADC的Labview模型上进行了验证,该ADC具有3 LSB噪声和7位非线性上升沿和下降沿的脉搏波输入信号。

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