Litcius/Paper detail

Multilinear Control Systems Theory

Can Chen, Amit Surana, Anthony M. Bloch, Indika Rajapakse

2021SIAM Journal on Control and Optimization30 citationsDOIOpen Access PDF

Abstract

In this paper, we provide a system theoretic treatment of a new class of multilinear time-invariant (MLTI) systems in which the states, inputs and outputs are tensors, and the system evolution is governed by multilinear operators. The MLTI system representation is based on the Einstein product and even-order paired tensors. There is a particular tensor unfolding which gives rise to an isomorphism from this tensor space to the general linear group, i.e. the group of invertible matrices. By leveraging this unfolding operation, one can extend classical linear time-invariant (LTI) system notions including stability, reachability and observability to MLTI systems. While the unfolding based formulation is a powerful theoretical construct, the computational advantages of MLTI systems can only be fully realized while working with the tensor form, where hidden patterns/structures can be exploited for efficient representations and computations. Along these lines, we establish new results which enable one to express tensor unfolding based stability, reachability and observability criteria in terms of more standard notions of tensor ranks/decompositions. In addition, we develop a generalized CANDECOMP/PARAFAC decomposition and tensor train decomposition based model reduction framework, which can significantly reduce the number of MLTI system parameters. We demonstrate our framework with numerical examples.

Topics & Concepts

MathematicsReachabilityTensor productObservabilityMultilinear mapTensor (intrinsic definition)Invertible matrixLinear systemRepresentation (politics)Isomorphism (crystallography)Algebra over a fieldProduct (mathematics)ControllabilitySpace (punctuation)Canonical formClass (philosophy)Pure mathematicsHybrid systemSystems theoryGroup (periodic table)Discrete mathematicsControl systemReduction (mathematics)Linear subspaceController (irrigation)Tensor algebraTensor product of Hilbert spacesModel Reduction and Neural NetworksTensor decomposition and applicationsControl and Stability of Dynamical Systems