非线性系统辨识与补偿的采样频率要求

J. Tsimbinos, K. Lever
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引用次数: 21

摘要

非线性系统通常会引起频谱扩频,导致输出信号带宽大于输入信号带宽。当通过数字处理方法识别和补偿这样的系统时,通常的做法是看到输出信号的奈奎斯特速率的采样频率。本文的目的是表明,通常不需要以输出信号的奈奎斯特速率采样,并且可以以输入信号的奈奎斯特速率识别和补偿非线性系统。我们通过调用Zhu的(参见IEEE Trans。电路与系统ii:模拟与数字信号处理。第39卷,没有。(8, p.587-588, 1992)广义抽样定理,并给出三个非线性系统辨识与补偿的例子。前两个例子涉及已知的非线性,第一个是无记忆的,第二个是有记忆的。第三个例子处理来自射频放大器中未知非线性的真实数据。对于每个示例,对两个输入信号带宽进行识别和补偿,其中一个导致感兴趣的失真项被混叠,而另一个则不会。结果表明,在这两种情况下,识别和补偿都是成功的。
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Sampling frequency requirements for identification and compensation of nonlinear systems
Nonlinear systems usually cause spectral spreading resulting in an output signal bandwidth that is greater than the input signal bandwidth. When identifying and compensating such systems by digital processing methods, it has been common practice to see the sampling frequency at the Nyquist rate of the output signal. The aim of this paper is to show that sampling at the Nyquist rate of the output signal is usually not necessary, and that a nonlinear system can be identified and compensated at the Nyquist rate of the input signal. We do this by invoking Zhu's (see IEEE Trans. on Circuits and Systems-II: Analog and Digital Signal Processing., vol.39, no.8, p.587-588, 1992) generalised sampling theorem, and by giving three examples of nonlinear system identification and compensation. The first two examples involve known nonlinearities, the first memoryless, the second with memory. The third example deals with real data from an unknown nonlinearity in a radio frequency amplifier. For each example, identification and compensation are carried out for two input signal bandwidths, one causing the distortion terms of interest to be aliased, while for the other, they are not. The results show successful identification and compensation in both cases.<>
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