首页> 外文期刊>Brazilian journal of chemical engineering >SOFT SENSOR MODELS FOR A FRACTIONATION REFORMATE PLANT USING SMALL AND BOOTSTRAPPED DATA SETS
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SOFT SENSOR MODELS FOR A FRACTIONATION REFORMATE PLANT USING SMALL AND BOOTSTRAPPED DATA SETS

机译:使用小型和自动启动数据集进行分馏重整植物的软传感器模型

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In refinery plants key process variables, like contents of process stream and various fuel properties, need to be continuously monitored using adequate on-line measuring devices. Such measuring devices are often unavailable or malfunction and, hence, laboratory assays which are irregular and time consuming and therefore not suitable for process control are inevitable alternatives. This research shows a comparison of different soft sensor models developed from a small industrial data set with soft sensor models developed from data generated by a bootstrap resampling method. Soft sensors were developed applying multiple linear regression, multivariable adaptive regression splines (MARSpline) and neural networks. The purpose of the developed soft sensors is the assessing of benzene content in light reformate of a fractionation reformate plant. The best results were obtained by the neural network-based model developed on bootstrapped data.
机译:在炼油厂植物中,需要使用足够的在线测量装置连续监测过程流和各种燃料特性的关键过程变量。 这种测量装置通常是不可用或故障的,因此,实验室测定是不规则和耗时的,因此不适合过程控制是不可避免的替代方案。 该研究表明,从小型工业数据集开发的不同软传感器模型的比较,该模型与由引导重采样方法产生的数据开发的软传感器模型。 开发了软传感器,应用多元线性回归,多变量自适应回归样条(Marspline)和神经网络。 发育的软传感器的目的是评估分馏重整植物的轻质重整物中的苯含量。 最佳结果是通过在引导数据上开发的基于神经网络的模型获得。

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