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Particle filter combined with data reconciliation for nonlinear state estimation with unknown initial conditions in nonlinear dynamic process systems

机译:粒子滤波器结合非线性动态过程系统中未知初始条件的非线性状态估计的数据协调

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摘要

State estimation is very crucial for process control and optimization in dynamic processes. The particle filter (PF) is a novel and suitable technique for state estimation of nonlinear dynamic process systems. Conventional PFs for nonlinear dynamic process systems rely on the known initial conditions for state variables, such as the known probability density function (PDF) of initial states or the known values of initial states, but the initial conditions of a nonlinear dynamical system are usually unknown in actual industrial processes. In this paper, a novel methodology, PF combined with data reconciliation, is proposed and applied to nonlinear dynamic process systems for state estimation with unknown initial conditions. The measurement test criterion and data reconciliation with sequentially increasing data information are proposed to derive reliable initial values of the state variables under sufficient information of measurements. The interactive information between PF and data reconciliation problems can improve the initial values iteratively. Finally, accurate results of state estimation can be achieved. The effectiveness of the methodology is demonstrated through two nonlinear dynamic systems. (C) 2020 ISA. Published by Elsevier Ltd. All rights reserved.
机译:状态估计对于动态过程中的过程控制和优化非常重要。粒子滤波器(PF)是非线性动态过程系统的状态估计的新颖和合适的技术。非线性动态过程系统的传统PFS依赖于状态变量的已知初始条件,例如初始状态的已知概率密度函数(PDF)或初始状态的已知值,但是非线性动力系统的初始条件通常是未知的在实际的工业过程中。本文提出了一种新颖的PF与数据协调结合的方法,并应用于具有未知初始条件的状态估计的非线性动态过程系统。提出了利用顺序增加数据信息的测量测试标准和数据协调,以在测量的足够信息下导出状态变量的可靠初始值。 PF和数据和解问题之间的交互式信息可以迭代地提高初始值。最后,可以实现状态估计的准确结果。通过两个非线性动态系统证明了方法的有效性。 (c)2020 ISA。 elsevier有限公司出版。保留所有权利。

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