A Nonlinear System State Estimation Method Based on Adaptive Fusion of Multiple Kernel Functions

With the development of the industry, the physical model of controlled object tends to be complicated and unknown. It is particularly important to estimate the state variables of a nonlinear system when the model is unknown. This paper proposes a state estimation method based on adaptive fusion of m...

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Main Authors: Daxing Xu, Aiyu Hu, Xuelong Han, Lu Zhang
Format: Article
Language:English
Published: Hindawi-Wiley 2021-01-01
Series:Complexity
Online Access:http://dx.doi.org/10.1155/2021/5124841
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spelling doaj-75c27ecadffc4413b60629c8e89429192021-07-05T00:02:07ZengHindawi-WileyComplexity1099-05262021-01-01202110.1155/2021/5124841A Nonlinear System State Estimation Method Based on Adaptive Fusion of Multiple Kernel FunctionsDaxing Xu0Aiyu Hu1Xuelong Han2Lu Zhang3College of Electrical and Information EngineeringZhejiang Juhua Group Co., Ltd.College of Electrical and Information EngineeringCollege of Electrical and Information EngineeringWith the development of the industry, the physical model of controlled object tends to be complicated and unknown. It is particularly important to estimate the state variables of a nonlinear system when the model is unknown. This paper proposes a state estimation method based on adaptive fusion of multiple kernel functions to improve the accuracy of system state estimation. First, a dynamic neural network is used to build the system state model, where the kernel function node is constructed by a weighted linear combination of multiple local kernel functions and global kernel functions. Then, the state of the system and the weight of the kernel functions are put together to form an augmented state vector, which can be estimated in real time by using high-degree cubature Kalman filter. The high-degree cubature Kalman filter performs adaptive fusion of the kernel function weights according to specific samples, which makes the neural network function approximate the real system model, and the state estimate follows the real value. Finally, the simulation results verify the feasibility and effectiveness of the proposed algorithm.http://dx.doi.org/10.1155/2021/5124841
collection DOAJ
language English
format Article
sources DOAJ
author Daxing Xu
Aiyu Hu
Xuelong Han
Lu Zhang
spellingShingle Daxing Xu
Aiyu Hu
Xuelong Han
Lu Zhang
A Nonlinear System State Estimation Method Based on Adaptive Fusion of Multiple Kernel Functions
Complexity
author_facet Daxing Xu
Aiyu Hu
Xuelong Han
Lu Zhang
author_sort Daxing Xu
title A Nonlinear System State Estimation Method Based on Adaptive Fusion of Multiple Kernel Functions
title_short A Nonlinear System State Estimation Method Based on Adaptive Fusion of Multiple Kernel Functions
title_full A Nonlinear System State Estimation Method Based on Adaptive Fusion of Multiple Kernel Functions
title_fullStr A Nonlinear System State Estimation Method Based on Adaptive Fusion of Multiple Kernel Functions
title_full_unstemmed A Nonlinear System State Estimation Method Based on Adaptive Fusion of Multiple Kernel Functions
title_sort nonlinear system state estimation method based on adaptive fusion of multiple kernel functions
publisher Hindawi-Wiley
series Complexity
issn 1099-0526
publishDate 2021-01-01
description With the development of the industry, the physical model of controlled object tends to be complicated and unknown. It is particularly important to estimate the state variables of a nonlinear system when the model is unknown. This paper proposes a state estimation method based on adaptive fusion of multiple kernel functions to improve the accuracy of system state estimation. First, a dynamic neural network is used to build the system state model, where the kernel function node is constructed by a weighted linear combination of multiple local kernel functions and global kernel functions. Then, the state of the system and the weight of the kernel functions are put together to form an augmented state vector, which can be estimated in real time by using high-degree cubature Kalman filter. The high-degree cubature Kalman filter performs adaptive fusion of the kernel function weights according to specific samples, which makes the neural network function approximate the real system model, and the state estimate follows the real value. Finally, the simulation results verify the feasibility and effectiveness of the proposed algorithm.
url http://dx.doi.org/10.1155/2021/5124841
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