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Input-to-State Stability in Probability

Preston Culbertson, Ryan K. Cosner, Maegan Tucker, Aaron D. Ames

Year
2023
Citations
10

Abstract

Input-to-State Stability (ISS) is fundamental in mathematically quantifying how stability degrades in the presence of bounded disturbances. If a system is ISS, its trajectories will remain bounded, and will converge to a neighborhood of an equilibrium of the undisturbed system. This graceful degradation of stability in the presence of disturbances describes a variety of real-world control implementations. Despite its utility, this property requires the disturbance to be bounded and provides invariance and stability guarantees only with respect to this worst-case bound. In this work, we introduce the concept of “ISS in probability (ISSp)” which generalizes ISS to discrete-time systems subject to unbounded stochastic disturbances. Using tools from martingale theory, we provide Lyapunov conditions for a system to be exponentially ISSp, and connect ISSp to stochastic stability conditions found in literature. We exemplify the utility of this method through its application to a bipedal robot confronted with step heights sampled from a truncated Gaussian distribution.

Keywords

Bounded functionGaussianControl theory (sociology)Computer scienceLyapunov functionStability (learning theory)Martingale (probability theory)Lyapunov stabilityProbability distributionState (computer science)

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