Iterative Learning Control of Fast, Nonlinear, Oscillatory Dynamics (Preprint)
- URL: http://arxiv.org/abs/2405.20045v1
- Date: Thu, 30 May 2024 13:27:17 GMT
- Title: Iterative Learning Control of Fast, Nonlinear, Oscillatory Dynamics (Preprint)
- Authors: John W. Brooks, Christine M. Greve,
- Abstract summary: nonlinear, chaotic, and are often too fast for active control schemes.
We develop an alternative active controls system using an iterative, trajectory-optimization and parameter-tuning approach.
We demonstrate that the controller is robust to missing information and uncontrollable parameters as long as certain requirements are met.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The sudden onset of deleterious and oscillatory dynamics (often called instabilities) is a known challenge in many fluid, plasma, and aerospace systems. These dynamics are difficult to address because they are nonlinear, chaotic, and are often too fast for active control schemes. In this work, we develop an alternative active controls system using an iterative, trajectory-optimization and parameter-tuning approach based on Iterative Learning Control (ILC), Time-Lagged Phase Portraits (TLPP) and Gaussian Process Regression (GPR). The novelty of this approach is that it can control a system's dynamics despite the controller being much slower than the dynamics. We demonstrate this controller on the Lorenz system of equations where it iteratively adjusts (tunes) the system's input parameters to successfully reproduce a desired oscillatory trajectory or state. Additionally, we investigate the system's dynamical sensitivity to its control parameters, identify continuous and bounded regions of desired dynamical trajectories, and demonstrate that the controller is robust to missing information and uncontrollable parameters as long as certain requirements are met. The controller presented in this work provides a framework for low-speed control for a variety of fast, nonlinear systems that may aid in instability suppression and mitigation.
Related papers
- Controlling Chaotic Maps using Next-Generation Reservoir Computing [0.0]
We combine nonlinear system control techniques with next-generation reservoir computing, a best-in-class machine learning approach for predicting the behavior of dynamical systems.
We demonstrate the performance of the controller in a series of control tasks for the chaotic H'enon map.
We show that our controller succeeds in these tasks, requires only 10 data points for training, can control the system to a desired trajectory in a single iteration, and is robust to noise and modeling error.
arXiv Detail & Related papers (2023-07-07T19:44:16Z) - Data-Driven Control with Inherent Lyapunov Stability [3.695480271934742]
We propose Control with Inherent Lyapunov Stability (CoILS) as a method for jointly learning parametric representations of a nonlinear dynamics model and a stabilizing controller from data.
In addition to the stabilizability of the learned dynamics guaranteed by our novel construction, we show that the learned controller stabilizes the true dynamics under certain assumptions on the fidelity of the learned dynamics.
arXiv Detail & Related papers (2023-03-06T14:21:42Z) - Learning Control-Oriented Dynamical Structure from Data [25.316358215670274]
We discuss a state-dependent nonlinear tracking controller formulation for general nonlinear control-affine systems.
We empirically demonstrate the efficacy of learned versions of this controller in stable trajectory tracking.
arXiv Detail & Related papers (2023-02-06T02:01:38Z) - Controlling quantum many-body systems using reduced-order modelling [0.0]
We propose an efficient approach for solving a class of control problems for many-body quantum systems.
Simulating dynamics of such a reduced-order model, viewed as a digital twin" of the original subsystem, is significantly more efficient.
Our results will find direct applications in the study of many-body systems, in probing non-trivial quasiparticle properties, as well as in development control tools for quantum computing devices.
arXiv Detail & Related papers (2022-11-01T13:58:44Z) - Neural optimal feedback control with local learning rules [67.5926699124528]
A major problem in motor control is understanding how the brain plans and executes proper movements in the face of delayed and noisy stimuli.
We introduce a novel online algorithm which combines adaptive Kalman filtering with a model free control approach.
arXiv Detail & Related papers (2021-11-12T20:02:00Z) - Finite-time System Identification and Adaptive Control in Autoregressive
Exogenous Systems [79.67879934935661]
We study the problem of system identification and adaptive control of unknown ARX systems.
We provide finite-time learning guarantees for the ARX systems under both open-loop and closed-loop data collection.
arXiv Detail & Related papers (2021-08-26T18:00:00Z) - DySMHO: Data-Driven Discovery of Governing Equations for Dynamical
Systems via Moving Horizon Optimization [77.34726150561087]
We introduce Discovery of Dynamical Systems via Moving Horizon Optimization (DySMHO), a scalable machine learning framework.
DySMHO sequentially learns the underlying governing equations from a large dictionary of basis functions.
Canonical nonlinear dynamical system examples are used to demonstrate that DySMHO can accurately recover the governing laws.
arXiv Detail & Related papers (2021-07-30T20:35:03Z) - Controlling nonlinear dynamical systems into arbitrary states using
machine learning [77.34726150561087]
We propose a novel and fully data driven control scheme which relies on machine learning (ML)
Exploiting recently developed ML-based prediction capabilities of complex systems, we demonstrate that nonlinear systems can be forced to stay in arbitrary dynamical target states coming from any initial state.
Having this highly flexible control scheme with little demands on the amount of required data on hand, we briefly discuss possible applications that range from engineering to medicine.
arXiv Detail & Related papers (2021-02-23T16:58:26Z) - Continuous Lyapunov Controller and Chaotic Non-linear System
Optimization using Deep Machine Learning [0.0]
We present a novel approach for detecting early failure indicators of non-linear highly chaotic system.
The approach proposed continuously monitors the system and controller signals.
The deep neural model predicts the parameter values that would best counteract the expected system in-stability.
arXiv Detail & Related papers (2020-10-28T04:45:12Z) - Learning Stabilizing Controllers for Unstable Linear Quadratic
Regulators from a Single Trajectory [85.29718245299341]
We study linear controllers under quadratic costs model also known as linear quadratic regulators (LQR)
We present two different semi-definite programs (SDP) which results in a controller that stabilizes all systems within an ellipsoid uncertainty set.
We propose an efficient data dependent algorithm -- textsceXploration -- that with high probability quickly identifies a stabilizing controller.
arXiv Detail & Related papers (2020-06-19T08:58:57Z) - Adaptive Control and Regret Minimization in Linear Quadratic Gaussian
(LQG) Setting [91.43582419264763]
We propose LqgOpt, a novel reinforcement learning algorithm based on the principle of optimism in the face of uncertainty.
LqgOpt efficiently explores the system dynamics, estimates the model parameters up to their confidence interval, and deploys the controller of the most optimistic model.
arXiv Detail & Related papers (2020-03-12T19:56:38Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.