Blind subspace system identification with Riemannian optimization

Cassiano O. Becker, V. Preciado
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Abstract

Subspace identification methods provide a reliable set of methods to recover system parameters of linear dynamical systems based on the observation of their inputs and outputs. However, in the common case where one does not have access to the inputs, the identification problem becomes harder, and is referred to as blind system identification. On the other hand, if the inputs can be assumed to lie on a known subspace, identification techniques based on low-rank matrix recovery can be applied. In this case, blind subspace system identification has been formulated as the problem of simultaneously recovering structured low-rank matrices associated with both the system and inputs. Notwithstanding, the convex relaxation approach to this problem, where the objective function is defined as a sum of the nuclear norms of two matrices, has been shown to be significantly sub-optimal as it typically favors one of the objective terms. In this work, we propose a method for the joint identification of system and inputs using optimization over Riemann manifolds. Riemannian optimization defines operators that allow low-rank matrix constraints to be incorporated in the search space, producing feasible solutions by construction. Our approach takes advantage of this capability and formulates blind subsystem identification as a low-rank matrix approximation problem over the product manifold of fixed-rank matrices.
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黎曼优化盲子空间系统辨识
子空间辨识方法基于对线性动力系统输入输出的观测,为恢复系统参数提供了一套可靠的方法。然而,在无法访问输入的常见情况下,识别问题变得更加困难,并且被称为盲系统识别。另一方面,如果可以假设输入位于已知的子空间上,则可以应用基于低秩矩阵恢复的识别技术。在这种情况下,盲子空间系统识别被表述为同时恢复与系统和输入相关的结构化低秩矩阵的问题。尽管如此,这个问题的凸松弛方法,其中目标函数被定义为两个矩阵的核规范的和,已经被证明是显著次优的,因为它通常倾向于一个目标项。在这项工作中,我们提出了一种利用黎曼流形上的优化来联合识别系统和输入的方法。黎曼优化定义了允许将低秩矩阵约束纳入搜索空间的算子,通过构造产生可行的解。我们的方法利用了这种能力,并将盲子系统识别表述为固定秩矩阵积流形上的低秩矩阵逼近问题。
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