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Model-based quality monitoring of batch and semi-batch processes

机译:基于模型的批量和半批量过程质量监控

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In this paper, a model-based inferential quality monitoring approach for a class of batch systems is investigated. Given the appropriate model form, the batch quality monitoring problem can be reduced to the problem of state estimation for batch and semi-batch processes. Because feed upsets are often a major source of disturbance in this type of system, it is shown that estimating the initial conditions can lead to improved state estimates throughout the batch as well as improved monitoring and control of end-use quality in many cases. The approach taken in this paper is to reduce the effects of the initial uncertainty resulting from feed disturbances by using algorithms designed to perform on-line smoothing of the initial conditions. First, an Extended Kalman Filter-based fixed-point smoothing algorithm is presented and compared to a popular approach to estimating the initial conditions. Subsequently, a nonlinear optimization-based approach is introduced and analyzed. A sub-optimal on-line approximation to the optimization problem is developed and shown to be directly related to the Extended Kalman Filter-based results. Finally, some practical implementation aspects are discussed, along with simulation results from an industrially relevant example application. (C) 2000 Published by Elsevier Science Ltd. All rights reserved. [References: 25]
机译:本文研究了一类批处理系统的基于模型的推理质量监控方法。给定适当的模型形式,可以将批处理质量监视问题简化为批处理和半批处理状态估计的问题。因为在这种类型的系统中,进料失调通常是主要的干扰源,因此表明,估计初始条件可以改善整个批次的状态估计,并且在许多情况下可以改善对最终使用质量的监控。本文采用的方法是通过使用旨在对初始条件进行在线平滑的算法来减少由进料干扰引起的初始不确定性的影响。首先,提出了一种基于扩展卡尔曼滤波器的不动点平滑算法,并将其与一种流行的估计初始条件的方法进行了比较。随后,引入并分析了基于非线性优化的方法。对优化问题的次优在线近似得到了开发,并显示与基于扩展卡尔曼滤波器的结果直接相关。最后,讨论了一些实际的实现方面,以及来自与工业相关的示例应用程序的仿真结果。 (C)2000由Elsevier Science Ltd.出版。保留所有权利。 [参考:25]

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