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Development and comparison of neural network based soft sensors for online estimation of cement clinker quality

机译:在线估算水泥熟料质量的基于神经网络的软传感器的开发和比较

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摘要

The online estimation of process outputs mostly related to quality, as opposed to their belated measurement by means of hardware measuring devices and laboratory analysis, represents the most valuable feature of soft sensors. As of now there have been very few attempts for soft sensing of cement clinker quality which is mostly done by offline laboratory analysis resulting at times in low quality clinker. In the present work three different neural network based soft sensors have been developed for online estimation of cement clinker properties. Different input and output data for a rotary cement kiln were collected from a cement plant producing 10,000 tons of clinker per day. The raw data were pre-processed to remove the outliers and the resulting missing data were imputed. The processed data were then used to develop a back propagation neural network model, a radial basis network model and a regression network model to estimate the clinker quality online. A comparison of the estimation capabilities of the three models has been done by simulation of the developed models. It was observed that radial basis network model produced better estimation capabilities than the back propagation and regression network models.
机译:与通过硬件测量设备和实验室分析进行迟来的测量相反,在线估计与质量有关的过程输出代表了软传感器的最有价值的功能。到目前为止,很少有水泥熟料质量软检测的尝试,这主要是通过离线实验室分析完成的,有时会导致质量低下的熟料。在当前的工作中,已经开发了三种基于神经网络的软传感器,用于在线评估水泥熟料的性能。从一家每天生产10,000吨熟料的水泥厂收集了旋转水泥窑的不同输入和输出数据。对原始数据进行预处理,以消除异常值,并估算得出的缺失数据。然后将处理后的数据用于开发反向传播神经网络模型,径向基网络模型和回归网络模型,以在线估算熟料质量。通过对已开发模型的仿真,可以对三个模型的估计能力进行比较。据观察,径向基网络模型比反向传播和回归网络模型产生更好的估计能力。

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