Automated Cross Channel Temperature Predictions for the PFR Lime Kiln Operating Support

A. Kychkin, Georgios C. Chasparis, S. Ellero
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Abstract

The Parallel Flow Regenerative (PFR) lime kiln process is challenging with respect to the energy efficiency, product quality and production stops, due to the inability of the human operators to accurately predict the evolution of the process. Monitoring and controlling of such processes encounter several issues, related to the high mass and heat inertia of the process, data quality, production stops, operator’s experience, as well as unknown exogenous factors (e.g., quality of the fuel, and raw material properties). Hence, an automated control/optimization mechanism for properly configuring the process is not straightforward. In this paper, we present a selection of mechanisms for data preprocessing together with domain specific feature analysis that allow for capturing the short-term changes of the critical parameters of the process. Through these mechanisms, automated predictive modeling can be performed that can be used by the kiln operator or a predictive-based controller to modify fuel feed strategies to meet energy efficiency and product quality requirements. We validate the proposed data-based preprocessing and modeling approaches through experiments in real-world data sources.
PFR石灰窑运行支持的自动跨通道温度预测
由于操作人员无法准确预测工艺的演变,平行流再生(PFR)石灰窑工艺在能源效率、产品质量和生产停止方面具有挑战性。这些过程的监测和控制遇到了几个问题,涉及到过程的高质量和热惯性,数据质量,生产停止,操作员的经验,以及未知的外部因素(例如,燃料的质量,原材料的性质)。因此,正确配置流程的自动控制/优化机制并不简单。在本文中,我们提出了一种数据预处理机制的选择,以及特定领域的特征分析,可以捕获过程中关键参数的短期变化。通过这些机制,可以执行自动预测建模,窑操作员或基于预测的控制器可以使用该模型来修改燃料供给策略,以满足能源效率和产品质量要求。我们通过真实数据源的实验验证了所提出的基于数据的预处理和建模方法。
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