OCCVJan 19, 2022

Nonlinear Unknown Input Observability and Unknown Input Reconstruction: The General Analytical Solution

arXiv:2201.07610v512 citations
AI Analysis

This solves a fundamental limitation in control theory and system analysis for researchers and engineers dealing with nonlinear systems with unknown inputs, though it builds upon prior work.

The paper tackles the problem of automatically checking state observability in nonlinear dynamic systems driven by unknown inputs, providing a general analytical solution through a systematic procedure based on differentiation and matrix rank determination. It also addresses unknown input reconstruction as a consequence, illustrating the algorithm with a visual-inertial sensor fusion example involving two unknown inputs.

Observability is a fundamental structural property of any dynamic system and describes the possibility of reconstructing the state that characterizes the system from observing its inputs and outputs. Despite the huge effort made to study this property and to introduce analytical criteria able to check whether a dynamic system satisfies this property or not, there is no general analytical criterion to automatically check the state observability when the dynamics are also driven by unknown inputs. Here, we introduce the general analytical solution of this fundamental problem, often called the unknown input observability problem. This paper provides the general analytical solution of this problem, namely, it provides the systematic procedure, based on automatic computation (differentiation and matrix rank determination), that allows us to automatically check the state observability even in the presence of unknown inputs (Algorithm 6.1). A first solution of this problem was presented in the second part of the book: "Observability: A New Theory Based on the Group of Invariance" [45]. The solution presented by this paper completes the previous solution in [45]. In particular, the new solution exhaustively accounts for the systems that do not belong to the category of the systems that are "canonic with respect to their unknown inputs". The analytical derivations largely exploit several new concepts and analytical results introduced in [45]. Finally, as a simple consequence of the results here obtained, we also provide the answer to the problem of unknown input reconstruction which is intimately related to the problem of state observability. We illustrate the implementation of the new algorithm by studying the observability properties of a nonlinear system in the framework of visual-inertial sensor fusion, whose dynamics are driven by two unknown inputs and one known input.

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