Stochastic Optimal Linear Quadratic Regulation Control of Discrete-time Systems with Delay and Quadratic Constraints
Stochastic Optimal Linear Quadratic Regulation Control of Discrete-time Systems with Delay and Quadratic Constraints
This article explores the discrete-time stochastic optimal LQR control with delay and quadratic constraints. The inclusion of delay, compared to delay-free optimal LQR control with quadratic constraints, significantly increases the complexity of the problem. Using Lagrangian duality, the optimal control is obtained by solving the Riccati-ZXL equation in conjunction with a gradient ascent algorithm. Specifically, the parameterized optimal controller and cost function are derived by solving the Riccati-ZXL equation, with a gradient ascent algorithm determining the optimal parameter. The primary contribution of this work is presenting the optimal control as a feedback mechanism based on the state's conditional expectation, wherein the gain is determined using the Riccati-ZXL equation and the gradient ascent algorithm. Numerical examples demonstrate the effectiveness of the obtained results.
Dawei Liu、Juanjuan Xu、huanshui Zhang
自动化基础理论
Dawei Liu,Juanjuan Xu,huanshui Zhang.Stochastic Optimal Linear Quadratic Regulation Control of Discrete-time Systems with Delay and Quadratic Constraints[EB/OL].(2024-11-16)[2025-08-02].https://arxiv.org/abs/2411.10795.点此复制
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