Optimization of Quantized Analog Signal Processing Using Genetic Algorithms and μ-Law

IEEE Open Journal of Circuits and Systems(2022)

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摘要
Digital mismatch calibration for quantized analog (QA) signal processing is proposed for the first time. Since the proposed calibration mechanism does not require uniform QA slicer levels, non-uniform quantization can be applied to improve the system performance. We propose two methods utilizing the genetic algorithm and $\mu $ -law to find non-uniform slicer levels offering superior performance compared to uniform levels. Simulations show that for a QA amplifier consisting of 32 slices, the signal-to-noise-and-distortion ratio (SNDR) under a multitone input can be doubled by adjusting only the quantization levels while maintaining the same structure and same power, compared to uniform quantization levels that provide 54 dB of SNDR.
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关键词
Quantized analog (QA),digital calibration,adaptive linear combiner (ALC),non-uniform quantization,peak-to-average power ratio (PAPR),genetic algorithms,μ-law
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