具有状态和输入相关不确定性的非线性系统的同步鲁棒模型预测控制和状态估计

IF 2.7 4区 计算机科学 Q2 AUTOMATION & CONTROL SYSTEMS
Farid Badfar, Ali Akbar Safavi
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引用次数: 0

摘要

不确定非线性系统的收敛性和稳定性是非线性控制领域的一个难题。此外,在许多实际情况中,所有状态都是不可测量的,并受到测量噪声的影响。基于这一动机,本文的首要目标是为具有状态和输入相关不确定性以及测量噪声的非线性系统设计一种新的输出反馈鲁棒模型预测控制方法。这种方法将状态估计和鲁棒模型预测控制(MPC)结合到一个最小-最大优化中,通过求解优化,这两项任务可以同时完成。所研究的非线性系统包括线性部分、非线性部分以及表示状态和输入相关不确定性的函数。因此,另一个目标是降低计算复杂度;因此,系统的非线性项和上述不确定性被转换为附加干扰。这样,优化问题就变成了二次方形式,从而在适当选择目标函数权重的情况下实现全局收敛。此外,本文还探讨了闭环系统状态的收敛性以及保证输入到状态稳定性的充分综合条件。在一个数值示例和一个 CSTR 过程中的实施证明了所提方法的适用性和可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Simultaneous robust model predictive control and state estimation for nonlinear systems with state- and input-dependent uncertainties

The convergence and stability of uncertain nonlinear systems is a challenging problem in the nonlinear control area. Besides, in many practical cases, all states are not measurable and are affected by measurement noise. Based on this motivation, the first objective of this paper is to design a novel output feedback robust model predictive control approach for nonlinear systems with state- and input-dependent uncertainties and measurement noise. This approach combines state estimation and robust model predictive control (MPC) into one min–max optimization and by solving the optimization, these two tasks are performed simultaneously. The studied nonlinear system comprises a linear part, a nonlinear part, and a function that denotes the state- and input-dependent uncertainties. Therefore, the other objective is to reduce the computational complexity; thus, the system's nonlinear term and the aforementioned uncertainties are converted into additional disturbances. Subsequently, the optimization problem becomes a quadratic form, which leads to global convergence with the appropriate selection of objective function weights. Besides, this paper explores the convergence of the closed-loop system states and the sufficient synthesis conditions to guarantee input-to-state stability. The implementation on a numerical example and a CSTR process demonstrate the applicability and reliability of the proposed approach.

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来源期刊
Asian Journal of Control
Asian Journal of Control 工程技术-自动化与控制系统
CiteScore
4.80
自引率
25.00%
发文量
253
审稿时长
7.2 months
期刊介绍: The Asian Journal of Control, an Asian Control Association (ACA) and Chinese Automatic Control Society (CACS) affiliated journal, is the first international journal originating from the Asia Pacific region. The Asian Journal of Control publishes papers on original theoretical and practical research and developments in the areas of control, involving all facets of control theory and its application. Published six times a year, the Journal aims to be a key platform for control communities throughout the world. The Journal provides a forum where control researchers and practitioners can exchange knowledge and experiences on the latest advances in the control areas, and plays an educational role for students and experienced researchers in other disciplines interested in this continually growing field. The scope of the journal is extensive. Topics include: The theory and design of control systems and components, encompassing: Robust and distributed control using geometric, optimal, stochastic and nonlinear methods Game theory and state estimation Adaptive control, including neural networks, learning, parameter estimation and system fault detection Artificial intelligence, fuzzy and expert systems Hierarchical and man-machine systems All parts of systems engineering which consider the reliability of components and systems Emerging application areas, such as: Robotics Mechatronics Computers for computer-aided design, manufacturing, and control of various industrial processes Space vehicles and aircraft, ships, and traffic Biomedical systems National economies Power systems Agriculture Natural resources.
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