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Soft-sensing using recurrent neural networks

机译:使用经常性神经网络进行软感

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This paper focuses on the use of a neural network-based soft-sensing concept for process variables which cannot be measured on-line. An approach is proposed which performs particularly well in circumstances where the relationship between themeasurable process variables and the variables to be estimated is difficult to establish or in cases where there are no sufficient data to construct a model. The method involves the modeling of an alternative relationship and the use of an a prioriknowledge from which the unmeasured variable may be determined. To demonstrate this, a simulation model of a drying drum is considered, whose purpose is to increase the percentage of dry substance contained in pressed pulp. Among the process variables,the dry substance content of the pressed pulp at the inlet of the drum is assumed to be on-line immeasurable. A recurrent neural network is trained to predict the dry substance content of the pulp at the outlet of the drum, which is considered as ameasurable output variable. The estimation of the unmeasured variable is carried out based on the prediction of the recurrent network and an a priori knowledge about the effect of the unmeasured variable on the output variable in relation to a measuredinput variable
机译:本文侧重于使用基于神经网络的软感测概念,用于无法在线测量的过程变量。提出一种方法,该方法在难以赎回的过程变量与待估计变量之间的关系的情况下表现出特别良好的情况,或者在没有足够的数据来构造模型的情况下难以建立或在这种情况下。该方法涉及替代关系的建模和使用优先考虑,可以确定未测量的变量。为了证明这一点,认为干燥鼓的模拟模型,其目的是增加压制纸浆中含有的干物质的百分比。在过程变量中,假设滚筒入口处的压制纸浆的干燥物质含量在线不可估量。训练复发性神经网络以预测滚筒在滚筒的出口处的干燥物质含量,其被认为是可批量的输出变量。根据经常性网络的预测来执行未测量变量的估计,以及关于在ReportyInput变量的输出变量上的对输出变量上的未测量变量的效果的先验知识

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