水泥回转窑熟料质量预测的机器学习方法及非线性模型预测控制设计

Asem M. Ali, Juan David Tabares, Mark W. McGinley
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引用次数: 4

摘要

水泥制造是能源密集型的(5Gj/t),占混凝土系统能源足迹的很大一部分。结合现代监测,模拟和控制系统将允许更低的能源使用,更低的环境影响,并降低这种广泛使用的建筑材料的成本。CESMII关于水泥智能制造的路线图项目的目标之一包括开发熟料质量的分析过程模型,该模型包括窑料的化学成分和关键过程变量。该预测模型将用于非线性模型预测控制系统,旨在显著减少过程能耗,同时保持或提高产品质量。在本研究中使用的水泥厂中,每12小时测试一次窑料(粗料),并使用基于化学计量学的Bogue模型和工厂操作员的专业知识来估计水泥窑产出(熟料)的矿物组成。在窑炉运行过程中,每隔2小时对窑出物(熟料)进行取样和检测,以测定其化学和矿物成分。熟料组成的预测值和实测值供工厂操作人员用来调整窑炉的投入流量和生产工艺特性,以保持稳定的运行和均匀的产品质量。然而,预测和测试之间的时间延迟,以及Bogue模型固有的不准确性,使得任何旨在最大限度地减少能源使用的工艺变化都存在问题,特别是考虑到工艺变化经常带来的潜在熟料质量问题。一个新的分析模型集成了质量信息和工艺操作信息,该模型是根据一家水泥工厂2年的生产数据开发的。为了使模型与燃料类型无关,在模型中计算的是消耗的热能,而不是燃料类型和数量。根据收集的数据对前馈网络进行训练和定制。我们进行了许多基于数据的模拟来定量评估所提出的模型,并使用5倍交叉验证程序来测试模型。结果表明,与使用行业标准“Bogue”模型相比,预测模型在估计熟料矿物成分方面具有较低的均方根误差(MSE)。这项工作的最终目标是开发一个单一的机器学习工具,允许使用质量控制数据和过程控制变量,以持续的方式提高过程的能源效率。提出的非线性模型预测控制系统(NMPC)能够基于被控变量生成预测窑生产特性,准确跟踪目标产品质量值。仿真结果还表明,所提出的模型在典型操作范围内操纵控制变量的同时,对窑炉产量进行了准确的预测,该预测落在所需的约束范围内。
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A machine learning approach for clinker quality prediction and nonlinear model predictive control design for a rotary cement kiln

Cement manufacturing is energy-intensive (5Gj/t) and comprises a significant portion of the energy footprint of concrete systems. Incorporating modern monitoring, simulation and control systems will allow lower energy use, lower environmental impact, and lower costs of this widely used construction material. One of the goals of the CESMII roadmap project on the Smart Manufacturing of Cement included developing an analytical process model for clinker quality that includes the chemistry of the kiln feed and accounts for critical process variables. This predictive model will be used in nonlinear model predictive control system designed to significantly reduce process energy use while maintaining or improving product quality. In the cement manufacturing plant used in this study, the kiln feed (meal) is tested every 12 h and used to estimate the mineral composition of the cement kiln output (clinker) using the stoichiometry-based Bogue's model and the expertise of the plant operators. During kiln operation, kiln output (clinker) is sampled and tested every 2 h to measure its chemical and mineral composition. The predicted and measured values of the clinker composition are used by the plant operators to adjust the kiln input stream and the production process characteristics to maintain stable operation and uniform product quality. However, the time delay between prediction and testing, along with inaccuracies inherent in the Bogue's model have made any process changes designed to minimize energy use problematic, especially in-light of potential clinker quality issues that process changes often pose. A new analytical model that integrates quality information and process operation information has been developed from data collected from 2 years of production from an operating cement facility. To make the model fuel-type-independent, consumed heat energy was computed in the model instead of fuel type and amount. A Feedforward Network was trained and tailored from collected data. Many data-based simulations were conducted to quantitatively evaluate the proposed model and the 5-fold cross-validation procedure was used to test the models. The resulting predictive model was shown to have a low root mean square error (MSE) with respect to the estimated clinker mineral composition compared to that using the industry standard “Bogue’ model”. The end goal of this work was to develop a single machine learning tool that allows the use of quality control data and process control variables to improve energy efficiency of the process in a continuous fashion. The proposed nonlinear model predictive control system (NMPC) can generate predicted kiln production characteristics based on manipulated variables in manner that accurately follows the target product quality values. Simulation results also show that the proposed model produced accurate predictions of kiln outputs that fell within the required constraints, while manipulating control variables within typical operational ranges.

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