A 2-d State Observer Using Particle Filter by Incorporation of Batch-to-Batch Dynamics

He Cai, Sun Zhou
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Abstract

In batch processes with unmeasured states, state estimation problem is essential for control, monitoring and optimization of the process. In solving that problem, most state observers are inherently confined within a single batch. In this work, a 2-d state observer algorithm is designed taking into account the relations between adjacent batches in addition. First, A state-space model is introduced to characterize the state transitions over time and along the batch dimension as well. Then, an on-line alignment method that deals with the batch-to-batch shift problem is suggested. As in real world applications the environments are possibly be nonlinear and the process noise, measurement noise may be non-Gaussian, a 2-d particle filter method is presented, based on the 2-d state space model, to approximate the optimal solution of the Bayesian state estimation equations. The performance of the proposed state observer is evaluated by an application on a simulated chemical batch process.
结合批对批动力学的粒子滤波二维状态观测器
在状态不可测的批处理过程中,状态估计问题是过程控制、监控和优化的关键。在解决这个问题时,大多数状态观察者本质上被限制在单个批处理中。本文设计了一种考虑相邻批之间关系的二维状态观测器算法。首先,引入状态空间模型来描述状态随时间和批处理维度的转换。在此基础上,提出了一种在线对齐方法来解决批量到批量的移位问题。在实际应用中,环境可能是非线性的,过程噪声、测量噪声可能是非高斯的,因此提出了一种基于二维状态空间模型的二维粒子滤波方法来逼近贝叶斯状态估计方程的最优解。通过一个模拟化工批处理过程的应用,对所提出的状态观测器的性能进行了评价。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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