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Online monitoring of cement clinker quality using multivariate statistics and Takagi-Sugeno fuzzy-inference technique

机译:使用多元统计和Takagi-Sugeno模糊推理技术在线监测水泥熟料质量

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摘要

This article addresses the issue of outlier detection in industrial data using robust multivariate techniques and soft sensing of clinker quality in cement industries. Feed-forward artificial neural network (back propagation, radial basis function and regression neural network) and fuzzy inference (Mamdani and Takagi-Sugeno (T-S)) based soft sensor models are developed for simultaneous prediction of eight clinker quality parameters (free lime, lime saturation factor, silica modulus, alumina modulus, alite, belite, aluminite and ferrite). Required input-output data for cement clinkerization process were obtained from a cement plant with a production capacity of 10000 t of clinker per day. In the initial data preprocessing activity, various distance based robust multivariate outlier detection techniques were applied and their performances were compared. The developed soft-sensors were investigated for their performance by computing various statistical model performance parameters. Results indicate that the accuracy and computation time of the T-S fuzzy inference model is quite acceptable for online monitoring of clinker quality.
机译:本文解决了使用健壮的多元技术和水泥行业熟料质量的软检测对工业数据进行异常检测的问题。开发了基于前馈人工神经网络(反向传播,径向基函数和回归神经网络)和模糊推理(Mamdani和Takagi-Sugeno(TS))的软传感器模型,用于同时预测八个熟料质量参数(游离石灰,石灰饱和系数,二氧化硅模量,氧化铝模量,珍珠岩,珍珠岩,铝矾土和铁氧体)。水泥熟料工艺所需的投入产出数据是从水泥厂获得的,该水泥厂的日产能为10000吨熟料。在初始数据预处理活动中,应用了各种基于距离的鲁棒多元离群值检测技术,并对它们的性能进行了比较。通过计算各种统计模型的性能参数,对开发的软传感器的性能进行了研究。结果表明,T-S模糊推理模型的准确性和计算时间对于在线监测熟料质量是可以接受的。

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