Samari, B., Nejati, A., & Lavaei, A. (2024). Data-Driven Control of Large-Scale Networks with Formal Guarantees: A Small-Gain Free Approach. arXiv preprint arXiv:2411.06743.
This paper addresses the challenge of designing controllers for large-scale interconnected networks with unknown mathematical models and interconnection topologies. The authors aim to develop a data-driven approach that leverages the concept of alternating (sub-)bisimulation functions to construct symbolic models of such networks and synthesize controllers guaranteeing desired behaviors.
The authors propose a divide-and-conquer strategy, treating the network as an interconnection of individual subsystems. They formulate a robust optimization problem (ROP) to capture the conditions for alternating sub-bisimulation functions (ASBF) between each subsystem and its symbolic model. To handle the unknown dynamics, they collect data from subsystem trajectories and introduce a scenario optimization program (SOP) derived from the ROP. By solving the SOP, they obtain ASBFs for individual subsystems. Subsequently, they propose a novel data-driven compositional condition to construct an alternating bisimulation function (ABF) for the entire network based on the ASBFs of its subsystems.
The paper presents a practical and scalable framework for data-driven control of large-scale networks with formal guarantees. By leveraging ASBFs and a novel compositional condition, the approach overcomes the limitations of existing methods that require precise model knowledge and suffer from scalability issues.
This research significantly contributes to the field of symbolic control by providing a data-driven framework applicable to complex, large-scale networks with unknown dynamics and interconnection topologies. This opens up new possibilities for formally verifying and controlling a wide range of real-world systems, such as automated vehicles, biological processes, and energy infrastructures.
While the paper provides a comprehensive framework, future research could explore:
Para outro idioma
do conteúdo fonte
arxiv.org
Principais Insights Extraídos De
by Behrad Samar... às arxiv.org 11-12-2024
https://arxiv.org/pdf/2411.06743.pdfPerguntas Mais Profundas