Tsallis model-based separation of overlapped peak signals

被引:0
|
作者
YuanLu Li
YingChao Zhang
HuiQiang Tang
机构
[1] Nanjing University of Information Science & Technology,College of Information and Control
来源
关键词
fractional differentials filter; overlapped peak signal; Tsallis model; separation of overlapped peak signals;
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学科分类号
摘要
A simple scheme for separating overlapped peak signals (OPS) is proposed, with the Tsallis distribution as the model for OPS processing and fractional-order differentiation as tool for the signal analysis, the relationships of the maxima and zero-crossing values of the Tsallis peak signal, separately, to the order of differentiation are established, leading to two types of parameter estimators, which are utilized, by adjusting the peak-shape parameter, to calculate the parameters of position, height and width of the Gaussian, Lorentzian and Tsallis distribution. The obtained characteristic parameters can be employed to fit the peak signals to be treated, thereby fulfilling the OPS decomposition.
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页码:823 / 832
页数:9
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