非线性控制随机系统椭球分析与滤波方法的发展

IF 1.3 Q4 AUTOMATION & CONTROL SYSTEMS International Journal of Automation and Control Pub Date : 2020-02-13 DOI:10.5772/intechopen.90732
I. Sinitsyn, V. Sinitsyn, Edward R. Korepanov
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引用次数: 0

摘要

基于分布参数化的控制随机系统(CStS)研究方法允许设计实际简单的软件工具。这些方法给出了矩、半不变量、状态向量Y的截断正交展开式的系数以及所涉及的矩的最大阶数的方程数量的快速增加。对于概率密度(归一化和非归一化)的结构参数化,我们将应用椭球密度。正态分布具有椭球状结构。这种分布的显著特征在于它们的密度是中心状态向量正定二次型的函数。椭球近似法(EAM)从根本上减少了参数的数量。对于椭球线性化方法(ELM),方程数与正态近似法(NAM)重合。考虑了用于CStS分析和CStS滤波的EAM (ELM)的发展。基于非归一化密度,设计了新型滤波器。提出了椭球普加乔夫条件最优控制理论。考虑基本应用。
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Development of Ellipsoidal Analysis and Filtering Methods for Nonlinear Control Stochastic Systems
The methods of the control stochastic systems (CStS) research based on the parametrization of the distributions permit to design practically simple software tools. These methods give the rapid increase of the number of equations for the moments, the semiinvariants, coefficients of the truncated orthogonal expansions of the state vector Y, and the maximal order of the moments involved. For structural parametrization of the probability (normalized and nonnormalized) densities, we shall apply the ellipsoidal densities. A normal distribution has an ellipsoidal structure. The distinctive characteristics of such distributions consist in the fact that their densities are the functions of positively determined quadratic form of the centered state vector. Ellipsoidal approximation method (EAM) cardinally reduces the number of parameters. For ellipsoidal linearization method (ELM), the number of equations coincides with normal approximation method (NAM). The development of EAM (ELM) for CStS analysis and CStS filtering are considered. Based on nonnormalized densities, new types of filters are designed. The theory of ellipsoidal Pugachev conditionally optimal control is presented. Basic applications are considered.
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来源期刊
International Journal of Automation and Control
International Journal of Automation and Control AUTOMATION & CONTROL SYSTEMS-
自引率
41.70%
发文量
50
期刊介绍: IJAAC addresses the evolution and realisation of the theory, algorithms, techniques, schemes and tools for any kind of automation and control platforms including macro, micro and nano scale machineries and systems, with emphasis on implications that state-of-the-art technology choices have on both the feasibility and practicability of the intended applications. This perspective acknowledges the complexity of the automation, instrumentation and process control methods and delineates itself as an interface between the theory and practice existing in parallel over diverse spheres. Topics covered include: -Control theory and practice- Identification and modelling- Mechatronics- Application of soft computing- Real-time issues- Distributed control and remote monitoring- System integration- Fault detection and isolation (FDI)- Virtual instrumentation and control- Fieldbus technology and interfaces- Agriculture, environment, health applications- Industry, military, space applications
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