Approximate optimal control design for nonlinear one-dimensional parabolic PDE systems using empirical eigenfunctions and neural network.

Biao Luo, Huai-Ning Wu
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引用次数: 66

Abstract

This paper addresses the approximate optimal control problem for a class of parabolic partial differential equation (PDE) systems with nonlinear spatial differential operators. An approximate optimal control design method is proposed on the basis of the empirical eigenfunctions (EEFs) and neural network (NN). First, based on the data collected from the PDE system, the Karhunen-Loève decomposition is used to compute the EEFs. With those EEFs, the PDE system is formulated as a high-order ordinary differential equation (ODE) system. To further reduce its dimension, the singular perturbation (SP) technique is employed to derive a reduced-order model (ROM), which can accurately describe the dominant dynamics of the PDE system. Second, the Hamilton-Jacobi-Bellman (HJB) method is applied to synthesize an optimal controller based on the ROM, where the closed-loop asymptotic stability of the high-order ODE system can be guaranteed by the SP theory. By dividing the optimal control law into two parts, the linear part is obtained by solving an algebraic Riccati equation, and a new type of HJB-like equation is derived for designing the nonlinear part. Third, a control update strategy based on successive approximation is proposed to solve the HJB-like equation, and its convergence is proved. Furthermore, an NN approach is used to approximate the cost function. Finally, we apply the developed approximate optimal control method to a diffusion-reaction process with a nonlinear spatial operator, and the simulation results illustrate its effectiveness.

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基于经验特征函数和神经网络的非线性一维抛物型PDE系统近似最优控制设计。
研究一类具有非线性空间微分算子的抛物型偏微分方程系统的近似最优控制问题。提出了一种基于经验特征函数和神经网络的近似最优控制设计方法。首先,基于从PDE系统中收集的数据,采用karhunen - lo分解法计算EEFs。利用这些EEFs, PDE系统被表述为一个高阶常微分方程(ODE)系统。为了进一步降维,利用奇异摄动(SP)技术推导出能准确描述PDE系统主导动力学的降阶模型(ROM)。其次,应用Hamilton-Jacobi-Bellman (HJB)方法合成了基于ROM的最优控制器,其中SP理论可以保证高阶ODE系统的闭环渐近稳定性。将最优控制律分成两部分,通过求解代数Riccati方程得到线性部分,并推导出设计非线性部分的一类类hpb方程。第三,提出了一种基于逐次逼近的控制更新策略来求解类hjb方程,并证明了其收敛性。此外,采用神经网络方法对成本函数进行近似。最后,将所提出的近似最优控制方法应用于具有非线性空间算子的扩散反应过程,仿真结果表明了该方法的有效性。
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