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Subspace identification of 1D spatially-varying systems using Sequentially Semi-Separable matrices

机译:使用顺序半可分离矩阵的一维空间变化系统的子空间识别

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We consider the problem of identifying 1D spatially-varying systems that exhibit no temporal dynamics. The spatial dynamics are modeled via a mixed-causal, anti-causal state space model. The methodology is developed for identifying the input-output map of e.g a 1D flexible beam described by the Euler-Bernoulli beam equation and equipped with a large number of actuators and sensors. It is shown that the static input-output map between the lifted inputs and outputs possess a so-called Sequentially Semi-Separable (SSS) matrix structure. This structure is of key importance to derive algorithms with linear computational complexity for controller synthesis of large-scale systems. A nuclear norm subspace identification method of the N2SID class is developed for estimating these state space models from input-output data. To enable the method to deal with a large number of repeated experiments a dedicated Alternating Direction Method of Multipliers (ADMM) algorithm is derived. It is shown in this paper that a nuclear norm relaxation on the SSS structure can be imposed which improves the estimates of the system matrices.
机译:我们考虑确定没有时间动态的一维空间变化系统的问题。通过混合因果,反因果状态空间模型对空间动力学进行建模。开发了用于识别例如由Euler-Bernoulli光束方程描述的一维柔性梁的输入输出图的方法,该一维柔性梁配备有大量的致动器和传感器。结果表明,提升后的输入和输出之间的静态输入输出映射具有所谓的顺序半分离(SSS)矩阵结构。对于大型系统的控制器综合而言,这种结构对于推导具有线性计算复杂度的算法至关重要。开发了N2SID类的核规范子空间识别方法,用于从输入输出数据估计这些状态空间模型。为了使该方法能够处理大量重复实验,推导了专用的乘数交替方向方法(ADMM)算法。本文表明,可以对SSS结构施加核规范松弛,从而改善系统矩阵的估计。

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