基于Unscented卡尔曼滤波的非线性状态估计案例研究-非线性过程控制反应器(连续搅拌槽式反应器)

M. Shyamalagowri, R. Rajeswari
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引用次数: 5

摘要

本文将UKF应用于一个高度非线性的CSTR,以研究状态和参数估计器的性能。无气味卡尔曼滤波已经成为许多非线性估计的标准技术。将UKF用于更广泛的非线性估计问题,包括非线性系统识别、神经网络的训练和对偶估计问题。为了保持非线性系统的随机特性,ukf在预测步骤中使用非线性无气味变换(ut)。使用ut的优点是它们能够捕获系统的非线性行为,而不像使用线性化模型的扩展kf (ekf)。基于不同的ut,描述、分析和比较了用于CSTR状态估计的UKF的四种原始变体。这四种变换是基本变换、一般变换、单纯形变换和球面变换。本文讨论了四个ukf的理论方面和实现细节。介绍了非线性过程控制反应器CSTR的实验结果。结果表明,UKF是一种有效的CSTR状态估计工具,基本ut和一般ut比单纯形ut和球面ut给出更准确的结果。通过一个模拟连续搅拌槽式反应器(CSTR)问题,对该非线性装置的4种状态进行了估计。仿真结果表明,与传统的基于ukf的状态估计方法相比,该方法在状态估计方面具有优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unscented Kalman filter based nonlinear state estimation case study — Nonlinear process control reactor (Continuous stirred tank reactor)
In this paper, UKF has been applied to a highly nonlinear CSTR, in order to investigate the performance achieved by the state and parameter estimator. The Unscented Kalman Filter has become a standard technique used in a number of nonlinear estimation. The use of the UKF to a broader class of nonlinear estimation problems, including nonlinear system identification, training of neural networks, and dual estimation problems. UKFs use nonlinear unscented transforms (UTs) in the prediction step in order to preserve the stochastic characteristics of a nonlinear system. The advantage of using UTs is their ability to capture the nonlinear behavior of the system, unlike extended KFs (EKFs) that use linearized models. Four original variants of the UKF for CSTR state estimation, based on different UTs, are described, analyzed, and compared. The four transforms are basic, general, simplex, and spherical UTs. This paper discusses the theoretical aspects and implementation details of the four UKFs. Experimental results for a non linear process control reactor CSTR is presented. It is concluded that the UKF is a viable and powerful tool for CSTR state estimation and that basic and general UTs give more accurate results than simplex and spherical UTs. The proposed methodology is tested on a simulated continuous stirred tank reactor (CSTR) problem to estimate 4 states of this nonlinear plant. The simulation results demonstrate the superiority of the suggested method in state estimation compared with the classical UKF-based approach.
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