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Main Authors: Meibodi, Arya Rashidinejad, Sinaki, Mahbod Gholamali, Alipour, Khalil
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2512.22668
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author Meibodi, Arya Rashidinejad
Sinaki, Mahbod Gholamali
Alipour, Khalil
author_facet Meibodi, Arya Rashidinejad
Sinaki, Mahbod Gholamali
Alipour, Khalil
contents The State-Dependent Riccati Equation (SDRE) technique generalizes the classical algebraic Riccati formulation to nonlinear systems by designing an input to the system that optimally(suboptimally) regulates system states toward the origin while simultaneously optimizing a quadratic performance index. In the SDRE technique, we solve the State-Dependent Riccati Equation to determine the control for regulating a nonlinear input-affine system. Since an analytic solution to SDRE is not straightforward, one method is to linearize the system at every state, solve the corresponding Algebraic Riccati Equation (ARE), and apply optimal control until the next state of the system. Completing this task with high frequency gives a result like the original SDRE technique. Both approaches require a complete model; therefore, here we propose a method that solves ARE in every state of the system using a partially model-free approach that learns optimal control in every state of the system, without explicit knowledge of the drift dynamics, based on Integral Reinforcement Learning (IRL). To show the effectiveness of our proposed approach, we apply it to the second-order nonlinear system in simulation and compare its performance with the classical SDRE method, which relies on the system's model and solves the ARE at each state. Our simulation results demonstrate that, with sufficient iterations, the IRL-based approach achieves approximately the same performance as the conventional SDRE method, demonstrating its capability as a reliable alternative for nonlinear system control that does not require an explicit environmental model. Index Terms-Algebraic Riccati Equation (ARE), Integral Reinforcement Learning (IRL), Nonlinear Input-Affine Systems, Optimal Regulation, State-Dependent Riccati Equation (SDRE)
format Preprint
id arxiv_https___arxiv_org_abs_2512_22668
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Optimal Regulation of Nonlinear Input-Affine Systems via an Integral Reinforcement Learning-Based State-Dependent Riccati Equation Approach
Meibodi, Arya Rashidinejad
Sinaki, Mahbod Gholamali
Alipour, Khalil
Systems and Control
The State-Dependent Riccati Equation (SDRE) technique generalizes the classical algebraic Riccati formulation to nonlinear systems by designing an input to the system that optimally(suboptimally) regulates system states toward the origin while simultaneously optimizing a quadratic performance index. In the SDRE technique, we solve the State-Dependent Riccati Equation to determine the control for regulating a nonlinear input-affine system. Since an analytic solution to SDRE is not straightforward, one method is to linearize the system at every state, solve the corresponding Algebraic Riccati Equation (ARE), and apply optimal control until the next state of the system. Completing this task with high frequency gives a result like the original SDRE technique. Both approaches require a complete model; therefore, here we propose a method that solves ARE in every state of the system using a partially model-free approach that learns optimal control in every state of the system, without explicit knowledge of the drift dynamics, based on Integral Reinforcement Learning (IRL). To show the effectiveness of our proposed approach, we apply it to the second-order nonlinear system in simulation and compare its performance with the classical SDRE method, which relies on the system's model and solves the ARE at each state. Our simulation results demonstrate that, with sufficient iterations, the IRL-based approach achieves approximately the same performance as the conventional SDRE method, demonstrating its capability as a reliable alternative for nonlinear system control that does not require an explicit environmental model. Index Terms-Algebraic Riccati Equation (ARE), Integral Reinforcement Learning (IRL), Nonlinear Input-Affine Systems, Optimal Regulation, State-Dependent Riccati Equation (SDRE)
title Optimal Regulation of Nonlinear Input-Affine Systems via an Integral Reinforcement Learning-Based State-Dependent Riccati Equation Approach
topic Systems and Control
url https://arxiv.org/abs/2512.22668