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首页> 外文期刊>Russian Journal of Numerical Analysis and Mathematical Modelling >Practical implementation of extended Kalman filtering in chemical systems with sparse measurements
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Practical implementation of extended Kalman filtering in chemical systems with sparse measurements

机译:稀疏测量在化学系统中扩展卡尔曼滤波的实际实现

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摘要

Chemical systems are often characterized by a number of peculiar properties that create serious challenges to state estimator algorithms. They may include hard nonlinear dynamics, states subject to some constraints arising from a physical nature of the process (for example, all chemical concentrations must be nonnegative), and so on. The classical Extended Kalman Filter (EKF), which is considered to be the most popular state estimator in practice, is shown to be ineffective in chemical systems with infrequent measurements. In this paper, we discuss a recently designed version of the EKF method, which is grounded in a high-order Ordinary Differential Equation (ODE) solver with automatic global error control. The implemented global error control boosts the quality of state estimation in chemical engineering and allows this newly built version of the EKF to be an accurate and efficient state estimator in chemical systems with both short and long waiting times (i.e., with frequent and infrequent measurements). So chemical systems with variable sampling periods are algorithmically admitted and can be treated as well.
机译:化学系统通常具有许多独特的特性,这给状态估计器算法带来了严峻的挑战。它们可能包括硬非线性动力学,受制于过程物理性质的约束(例如,所有化学浓度必须为非负数)的状态,等等。经典的扩展​​卡尔曼滤波器(EKF)在实践中被认为是最流行的状态估计器,但在很少测量的化学系统中显示无效。在本文中,我们讨论了EKF方法的最新设计版本,该方法基于具有自动全局误差控制的高阶常微分方程(ODE)求解器。实施的全局错误控制提高了化学工程中状态估计的质量,并使这种新构建的EKF版本可以在化学系统中具有短而长的等待时间(即,频繁和不频繁的测量)的准确高效的状态估计器。因此,具有可变采样周期的化学系统在算法上是允许的,也可以对其进行处理。

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