Split-as-a-Pro

behavioral control via operator splitting and alternating projections

Conference Paper (2025)
Author(s)

Yu Tang (ETH Zürich)

Carlo Cenedese (TU Delft - Mechanical Engineering, ETH Zürich)

Alessio Rimoldi (ETH Zürich)

Florian Dorfler (ETH Zürich)

John Lygeros (ETH Zürich)

Alberto Padoan (University of British Columbia)

Research Group
Team Cenedese
DOI related publication
https://doi.org/10.23919/ECC65951.2025.11187008 Final published version
More Info
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Publication Year
2025
Language
English
Research Group
Team Cenedese
Pages (from-to)
1495-1501
Publisher
IEEE
ISBN (electronic)
978-3-907144-12-1
Event
23rd European Control Conference (ECC 2025) (2025-06-24 - 2025-06-27), Thessaloniki, Greece
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Abstract

The paper introduces Split-as-a-Pro, a control framework that integrates behavioral systems theory, operator splitting methods, and alternating projection algorithms. The framework reduces dynamic optimization problems - arising in both control and estimation - to efficient projection computations. Split-as-a-Pro builds on a non-parametric formulation that exploits system structure to separate dynamic constraints imposed by individual subsystems from external ones - such as interconnection constraints and input/output constraints. This enables the use of arbitrary system representations, as long as the associated projection is efficiently computable, thereby enhancing scalability and compatibility with gray-box modeling. We demonstrate the effectiveness of Split-as-a-Pro by developing a distributed algorithm for solving finite-horizon linear quadratic control problems and illustrate its use in predictive control. Our numerical case studies show that algorithms obtained using Split-as-a-Pro significantly outperform their centralized counterparts in runtime and scalability across various standard graph topologies, while seamlessly leveraging both model-based and data-driven system representations.

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