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Weighted Null-Space Fitting for Identification of Cascade Networks

机译:加权空空间拟合,用于级联网络的识别

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For identification of systems embedded in dynamic networks, the prediction error method (PEM) with a correct parametrization of the complete network provides asymptotically efficient estimates. However, the network complexity often hinders a successful application of PEM, which requires minimizing a non-convex cost function that can become more intricate for more complex networks. For this reason, identification in dynamic networks often focuses in obtaining consistent estimates of modules of interest. A downside of these approaches is that splitting the network in several modules for identification often costs asymptotic efficiency. In this paper, we consider dynamic networks with the modules connected in serial cascade, with measurements affected by sensor noise. We propose an algorithm that estimates all the modules in the network simultaneously without requiring the minimization of a non-convex cost function. This algorithm is an extension of Weighted Null-Space Fitting (WNSF), a weighted least-squares method that provides asymptotically efficient estimates for single-input single-output systems. We illustrate the performance of the algorithm with simulation studies, which suggest that a network WNSF method may also be asymptotically efficient when applied to cascade structures. Finally, we discuss the possibility of extension to more general networks affected by sensor noise.
机译:为嵌入在动态网络系统识别,预测误差方法(PEM)与完整的网络的正确参数化提供渐近有效估计。然而,网络的复杂性往往阻碍PEM,这需要最小化无凸成本函数可以成为更复杂的网络更复杂的成功应用。出于这个原因,识别动态网络中往往侧重于获取感兴趣的模块的一致估计。这些方法的缺点是,在分割数模块标识对应的网络成本往往渐近效率。在本文中,我们考虑具有串联连接的级联,与受传感器噪声测量模块动态网络。我们建议,估计网络中的所有模块,同时无需非凸成本函数的最小化的算法。该算法是加权零空间接头(WNSF)的延伸,一个加权的最小二乘法,对于单输入单输出系统提供渐近有效估计。我们举例说明与模拟研究,这表明,当应用于级联结构的网络WNSF方法也可能是渐近有效的算法的性能。最后,我们讨论延伸到受传感器噪声更普遍的网络的可能性。

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