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Comparison of subspace and prediction error methods of system identification for cement grinding process

机译:水泥粉磨系统识别的子空间和预测误差方法比较

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摘要

Maintaining product quality in cement grinding process in the presence of clinker heterogeneity is a challenging task. Model predictive controllers (MPC) are argued to be one possible solution to handle the variability, and the lack of models that relates clinker heterogeneity with product quality makes the MPC design challenging. This investigation addresses the suitability of two data-driven modelling approaches for cement grinding process-prediction error and subspace identification methods. Data collected from cement grinding process is used to build the model of the same. The collected data is used to build different candidate state-space models using the prediction error and subspace identification methods. The candidate models were validated using Akaike's information criterion and mean square error to study the suitability of these modelling techniques. The validation tests are used to identify the most suitable candidate models for the prediction error and subspace methods. The models developed in this investigation are inputs to design predictive controllers for cement industries and assure product quality in the presence of clinker grindability variations.
机译:在存在熟料异质性的情况下,在水泥研磨过程中保持产品质量是一项艰巨的任务。人们认为模型预测控制器(MPC)是处理变异性的一种可能的解决方案,而缺乏将熟料异质性与产品质量相关联的模型使MPC设计具有挑战性。这项研究解决了两种数据驱动的建模方法对水泥磨过程预测误差和子空间识别方法的适用性。从水泥研磨过程中收集的数据用于建立模型。收集的数据用于使用预测误差和子空间识别方法构建不同的候选状态空间模型。使用Akaike的信息准则和均方误差对候选模型进行了验证,以研究这些建模技术的适用性。验证测试用于为预测误差和子空间方法识别最合适的候选模型。在这项研究中开发的模型是水泥行业设计预测控制器的输入,并在存在熟料易磨性变化的情况下确保产品质量。

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