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Autores principales: Park, Joseph, Sugihara, George, Pao, Gerald
Formato: Preprint
Publicado: 2023
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Acceso en línea:https://arxiv.org/abs/2311.17324
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author Park, Joseph
Sugihara, George
Pao, Gerald
author_facet Park, Joseph
Sugihara, George
Pao, Gerald
contents Effective control requires knowledge of the process dynamics to guide the system toward desired states. In many control applications this knowledge is expressed mathematically or through data-driven models, however, as complexity grows obtaining a satisfactory mathematical representation is increasingly difficult. Further, many data-driven approaches consist of abstract internal representations that may have no obvious connection to the underlying dynamics and control, or, require extensive model design and training. Here, we remove these constraints by demonstrating model predictive control from generalized state space embedding of the process dynamics providing a data-driven, explainable method for control of nonlinear, complex systems. Generalized embedding and model predictive control are demonstrated on nonlinear dynamics generated by an agent based model of 1200 interacting agents. The method is generally applicable to any type of controller and dynamic system representable in a state space.
format Preprint
id arxiv_https___arxiv_org_abs_2311_17324
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Control of complex systems with generalized embedding and empirical dynamic modeling
Park, Joseph
Sugihara, George
Pao, Gerald
Systems and Control
Effective control requires knowledge of the process dynamics to guide the system toward desired states. In many control applications this knowledge is expressed mathematically or through data-driven models, however, as complexity grows obtaining a satisfactory mathematical representation is increasingly difficult. Further, many data-driven approaches consist of abstract internal representations that may have no obvious connection to the underlying dynamics and control, or, require extensive model design and training. Here, we remove these constraints by demonstrating model predictive control from generalized state space embedding of the process dynamics providing a data-driven, explainable method for control of nonlinear, complex systems. Generalized embedding and model predictive control are demonstrated on nonlinear dynamics generated by an agent based model of 1200 interacting agents. The method is generally applicable to any type of controller and dynamic system representable in a state space.
title Control of complex systems with generalized embedding and empirical dynamic modeling
topic Systems and Control
url https://arxiv.org/abs/2311.17324