SYLGNov 8, 2019

Statistical Learning for Analysis of Networked Control Systems over Unknown Channels

arXiv:1911.03422v1
Originality Incremental advance
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This work addresses the challenge of model-based control in IoT applications where channel models are unavailable, providing a data-driven approach for stability analysis, though it is incremental in applying learning concepts to control systems.

The paper tackles the problem of determining stability and performance of networked control systems over unknown wireless channels using only channel sample data, establishing for the first time the sample complexity required to verify stability with high confidence and linking it to system stability margins.

Recent control trends are increasingly relying on communication networks and wireless channels to close the loop for Internet-of-Things applications. Traditionally these approaches are model-based, i.e., assuming a network or channel model they are focused on stability analysis and appropriate controller designs. However the availability of such wireless channel modeling is fundamentally challenging in practice as channels are typically unknown a priori and only available through data samples. In this work we aim to develop algorithms that rely on channel sample data to determine the stability and performance of networked control tasks. In this regard our work is the first to characterize the amount of channel modeling that is required to answer such a question. Specifically we examine how many channel data samples are required in order to answer with high confidence whether a given networked control system is stable or not. This analysis is based on the notion of sample complexity from the learning literature and is facilitated by concentration inequalities. Moreover we establish a direct relation between the sample complexity and the networked system stability margin, i.e., the underlying packet success rate of the channel and the spectral radius of the dynamics of the control system. This illustrates that it becomes impractical to verify stability under a large range of plant and channel configurations. We validate our theoretical results in numerical simulations.

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