Abstract

There is insufficient current understanding of how to apply fully decentralized control to networks of sparsely coupled nonlinear dynamical subsystems subject to noise to track a desired state. As exemplars, this class of problem is motivated by practical requirements of creating decentralized power grids robust to cascade failures, the digital transformation of Industry 4.0 managing IoT connectivity reliably, and controlling transport flow in smart cities by computing at the edge. We demonstrate that an approach utilizing probability theory to characterize and exploit the uncertainty in locally received information, and locally optimized messages passed between neighboring subsystems is sufficient to implicitly infer global knowledge. Thus, control of a global state could be realized through decentralized control signals applied only to local subsystems using only local information without any reference to a global current state. Given a global system that can be decomposed into a set of locally coupled subsystems, we develop a theoretical method of probabilistic message passing and probabilistic control signals all interacting only at the subsystem level, but which promotes a system-wide convergence to a desired state. Our theoretical results are corroborated using computational experiments on a network of a 10-node partially coupled system decomposed into four separated subsystems with control inputs applied and determined at the subsystem level. Comparing the results with a centralized control method utilizing information from all the nodes to achieve global state convergence validates our hypothesis that local decentralized probabilistic control can be affected by the mechanism of local probabilistic message passing without needing access to global centralized information. We also provide a set of numerical experiments increasing the network size showing that the decentralized algorithm is independent of the global system size.

Highlights

  • T HE CURRENT evolution of Web 3.0 the semantic Web, the Internet of Things, and the motivation for peer-to-peer architectures of global decision management require inevitable decentralization of resource

  • 1) The global system was taken as a set of partially coupled subsystems, where each subsystem had its own dynamics, the instantaneous state of which was estimated from a locally self-consistent process

  • 2) Each subsystem can measure its own state, but information on neighboring subsystems was treated as an external variable quantified only as a Gaussian probability distribution of evaluated mean and covariance

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Summary

INTRODUCTION

T HE CURRENT evolution of Web 3.0 the semantic Web, the Internet of Things, and the motivation for peer-to-peer architectures of global decision management require inevitable decentralization of resource. Each subsystem only receives partial information on the current state of its neighboring subsystems, via probabilistic message passing, the form of which is derived in this article. Note that messages passed from a particular subsystem about its state are treated by the neighboring subsystems as external variables, and so cannot be influenced by local control interventions This is the mechanism that allows us to decouple the problem into locally controllable decentralized subsystems. The novelty is in treating the full control problem as intrinsically probabilistic, where the decentralization aspect is achieved by exploiting the statistical independence between subsystems, allowing a decomposition of the joint distribution into locally accessible probability distributions constituting the information in the message passing between connected subsystems

REVIEW OF CURRENT APPROACHES
SYSTEM MODEL
Nomenclature
Architecture
Fully Probabilistic Design of Subsystem
Estimating the Probability Distribution Function of Subsystem Model
Optimal Randomized Controller of Subsystem
PROBABILISTIC MESSAGE PASSING
EXPERIMENT
Scaling Performance
CONCLUSION
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