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Stochastic Averaging for Identification of Feedback Nonlinearities in Thermoacoustic Systems

机译:随机平均在热声系统中识别反馈非线性

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摘要

We present algorithms based on stochastic averaging for estimating nonlinear feedback parameters obtained from time series data with application to noise-driven nonlinear vibration systems, with particular emphasis on limit-cycling thermo-acoustic systems. The harmonic and Gaussian components of relevant signals are estimated from the probability density function (pdf) of an output signal from a single experiment. The respective feedback gains, along with a phase-shifting element are fit to a nominal (given) linear oscillator model from which the parameters of a nonlinearity are fit. When input-output data are available from multiple experiments, the feedback nonlinearity can be estimated point-wise via an iterative algorithm, applicable when the appropriate input signals have a constant (Gaussian) variance. The estimation procedures are demonstrated on a benchmark thermo-acoustic model and applied to time-series data obtained from a limit-cycling combustor rig experiment. In the latter case, relations between the feedback parameters and the fuel to air ratio are briefly discussed.
机译:我们提出了基于随机平均的算法,用于估计从时间序列数据中获得的非线性反馈参数,并将其应用于噪声驱动的非线性振动系统,尤其着重于极限循环热声系统。根据单个实验输出信号的概率密度函数(pdf)估算相关信号的谐波分量和高斯分量。各个反馈增益与相移元件一起被拟合到标称(给定的)线性振荡器模型中,从该模型中可以拟合非线性参数。当可以从多个实验获得输入输出数据时,可以通过迭代算法逐点估计反馈非线性,当适当的输入信号具有恒定(高斯)方差时,可以应用该算法。估算程序在基准热声模型上进行了演示,并应用于从极限循环燃烧器试验获得的时间序列数据。在后一种情况下,将简要讨论反馈参数与燃油与空气比率之间的关系。

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