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Identification of respiratory parameters in frequency and time domain with Forced Oscillation Technique

机译:强迫振荡技术在频域和时域识别呼吸参数

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Respiratory impedance was measured in healthy subjects using Forced Oscillation Technique (FOT). Measurements with a FOT system were performed for five healthy male adults. Based on these measurements, we compared parameter estimation approaches in frequency and time domain. In frequency domain, the fast Fourier transform and windowed cosine fitting methods were applied to calculate respiratory complex impedance. Using these resulting impedance, we performed parameter identification with least squares fitting for RLC lung model and some models with more complex structures. In time domain, the extended Kalman filter was applied for online parameter estimation. We introduced the approach Sum of Frequencies for a stable convergence of the algorithm. Finally, a comparison between our results of different methods with some literature references is presented and an interesting conclusion on the frequency dependence of lung compliance is given.
机译:使用强制振荡技术(FOT)在健康受试者中测量呼吸阻抗。用FOT系统对五名健康的男性成年人进行了测量。基于这些测量,我们比较了频域和时域中的参数估计方法。在频域中,应用快速傅里叶变换和加窗余弦拟合方法来计算呼吸复阻抗。使用这些结果阻抗,我们对RLC肺模型和某些结构更复杂的模型进行了最小二乘拟合的参数识别。在时域中,将扩展的卡尔曼滤波器应用于在线参数估计。为了使算法稳定收敛,我们引入了频率求和方法。最后,我们将不同方法的结果与一些文献参考进行了比较,并得出了关于肺顺应性频率依赖性的有趣结论。

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