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首页> 外文期刊>Powder Technology: An International Journal on the Science and Technology of Wet and Dry Particulate Systems >Soft sensing of particle size in a grinding process: Application of support vector regression, fuzzy inference and adaptive neuro fuzzy inference techniques for online monitoring of cement fineness
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Soft sensing of particle size in a grinding process: Application of support vector regression, fuzzy inference and adaptive neuro fuzzy inference techniques for online monitoring of cement fineness

机译:磨削过程中粒径的软传感:支持向量回归,模糊推理和自适应神经模糊推理技术在水泥细度在线监测中的应用

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摘要

Use of soft sensors for online particle size monitoring in a grinding process is a viable alternative since physical sensors for the same are not available for many such processes. Cement fineness is an important quality parameter in the cement grinding process. However, very few studies have been done for soft sensing of cement fineness in the grinding process. Moreover, most of the grinding process modeling approaches have been reported for ball mills and rarely any modeling of vertical roller mill is available. In this research, modeling of vertical roller mill . used for clinker grinding has been done using support vector regression (SVR), fuzzy inference and adaptive neuro fuzzy inference(ANFIS) techniques since these techniques have not yet been largely explored for particle size soft sensing. The modeling has been done by collection of the real industrial data from a cement grinding process followed by data cleaning and a structured method of dividing the data into training and validation data sets. using the Kennard-Stone subset selection algorithm. Optimum SVR hyper parameters were determined using a combined approach of analytical method and grid search plus cross validation. The models were developed , using MATLAB from the training data and were tested with the validation data. Results reveal that the proposed ANFIS model of the clinker grinding process shows much superior performance compared with the other types of model. The ANFIS model was implemented in the SIMULINK environment for real-time monitoring of , cement fineness from the knowledge of input variables and the model computation time was determined. It is observed that the model holds good promise to be implemented online for real-time estimation of cement fineness which will certainly help the plant operators in maintaining proper cement quality and in reducing losses.
机译:在研磨过程中使用软传感器进行在线粒度监控是一种可行的替代方法,因为对于许多此类过程而言,物理传感器并不适用。水泥细度是水泥粉磨过程中重要的质量参数。但是,在研磨过程中对水泥细度的软感测的研究很少。而且,已经报道了大多数球磨机的研磨工艺建模方法,很少有立式辊磨机的建模方法可用。在这项研究中,立式辊磨机的建模。用于水泥熟料磨削的技术已经使用支持向量回归(SVR),模糊推理和自适应神经模糊推理(ANFIS)技术完成,因为尚未对粒度软传感进行大量探索。通过从水泥粉磨过程中收集真实的工业数据,然后进行数据清洗以及将数据分为训练和验证数据集的结构化方法,来完成建模。使用Kennard-Stone子集选择算法。使用分析方法和网格搜索以及交叉验证的组合方法确定了最佳SVR超参数。使用MATLAB从训练数据中开发模型,并使用验证数据进行测试。结果表明,与其他类型的模型相比,所提出的熟料磨削过程的ANFIS模型表现出非常优越的性能。 ANFIS模型是在SIMULINK环境中实现的,可根据输入变量的知识实时监测水泥细度,并确定模型的计算时间。可以观察到该模型具有良好的前景,可以在线实施以实时评估水泥细度,这无疑将有助于工厂运营商保持适当的水泥质量并减少损失。

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