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Wavelet based Steglitz Mc-Bride algorithm for Identification of Multiscale Output-Error Models

机译:基于小波的Steglitz Mc-Bride算法识别多尺度输出误差模型

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Identification of output-error models for systems with multiple time scales is known to be a challenging problem due to the spread of dynamics across a wide range of time scales. The wide separation in time constants of the system forces one to deal with unusually fast sampling rates for slow dynamics. In general, output-error model identification of multiscale systems using prediction-error minimization suffers whenever they are initialized with auto-regressive exogenous (ARX) model parameter estimates owing to the sensitivity of ARX models at fast sampling. In the present work, it is observed that the classical Steglitz Mc-Bride (SM) algorithm can serve as an excellent alternative for identification of simple multiscale systems. Despite its advantages, it is seen to yield unstable models at times (related to the sensitivity of ARX estimation) and sometimes converges to a secondary optima. In this work, a multiscale SM algorithm, which respects the multiscale nature of data generating process, is proposed in order to reduce the sensitivity issues arising due to fast sampling. The proposed methodology is observed to yield good results for multiscale systems in terms of obtaining stable models and faster convergence. The performance of the proposed method is demonstrated on three simulation examples and the results are compared with traditional methods.
机译:由于动态分布在广泛的时间范围内,因此识别具有多个时间范围的系统的输出误差模型是一个具有挑战性的问题。系统时间常数的广泛分隔迫使人们应对慢速动力学中异常快的采样率。通常,由于ARX模型在快速采样时的敏感性,每当使用自回归外生(ARX)模型参数估计值对其进行初始化时,使用预测误差最小化对多尺度系统进行输出错误模型识别都会受到影响。在当前的工作中,可以观察到经典的Steglitz Mc-Bride(SM)算法可以作为识别简单多尺度系统的绝佳选择。尽管有其优点,但有时仍会产生不稳定的模型(与ARX估算的灵敏度有关),有时会收敛至次要最优值。在这项工作中,提出一种考虑数据生成过程的多尺度性质的多尺度SM算法,以减少由于快速采样而引起的灵敏度问题。在获得稳定的模型和更快的收敛方面,观察到所提出的方法对于多尺度系统产生了良好的结果。在三个仿真实例上证明了该方法的性能,并将结果与​​传统方法进行了比较。

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