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Methodology of data reconciliation and parameter estimation for process systems with multi-operating conditions

机译:具有多个操作条件的过程系统的数据协调和参数估计方法

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The economic performance of the real time optimization and process control is influenced by the accuracy of the process model. Data reconciliation and parameter estimation (DRPE) is a crucial technique to obtain reliable process models. In real industrial processes with multi-operating conditions, the effects of contaminated measured data, nonlinear characteristics of model parameters with operating conditions and different types of gross errors increase the difficulty to tune the process models. This paper focuses on the influence of those factors on DRPE problems. A practical DRPE methodology is proposed for the process system with multi-operating conditions to decrease the impact of those factors. The methodology contains the principal component analysis (PCA) based steady state detection, the clustering of multi-operating conditions and the maximum-correntropy estimate based DRPE with multiple data sets. PCA based steady state detection, which is a novel method for steady state detection, is used to choose useful and reliable measured data for DRPE. Clustering partitions the steady state data sets into multi-operating conditions. Maximum-correntropy estimate based DRPE for the data of each operating condition is used to reconcile the measured process data. The proposed methodology is finally applied to a typical real industrial process with multi-operating conditions: the air separation process. The effectiveness of the proposed methodology can be demonstrated by the results of DRPE.
机译:实时优化和过程控制的经济性能受过程模型的准确性影响。数据协调和参数估计(DRPE)是获得可靠流程模型的关键技术。在具有多个操作条件的实际工业过程中,受污染的测量数据,具有操作条件的模型参数的非线性特性以及不同类型的总误差的影响增加了调整过程模型的难度。本文重点关注这些因素对DRPE问题的影响。针对具有多个操作条件的过程系统,提出了一种实用的DRPE方法,以减少这些因素的影响。该方法包括基于主成分分析(PCA)的稳态检测,多种操作条件的聚类以及基于最大熵估计的具有多个数据集的DRPE。基于PCA的稳态检测是一种用于稳态检测的新方法,用于为DRPE选择有用且可靠的测量数据。聚类将稳态数据集划分为多个操作条件。针对每个工况数据的基于最大熵估计的DRPE用于协调测得的过程数据。最终将所提出的方法应用于具有多种操作条件的典型实际工业过程:空气分离过程。 DRPE的结果可以证明所提出方法的有效性。

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