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PET Viscosity Prediction Using JIT-based Extreme Learning Machine

机译:使用基于JIT的极限学习机进行PET粘度预测

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摘要

As a key stage in polyester production, polymerization process is difficult to model due to its complex reaction mechanism. As a result, online viscosity prediction in industrial polyester polymerization processes is not an easy task. An efficient data-driven prediction model is considered in this work. In order to solve the problem of low accuracy of the online viscosity measuring instrument and considerably time-consuming laboratory analysis, variables that are easily monitored during the polymerization process, i.e. temperature and pressure in the main reactor as well as the viscometer values, are selected to establish an Extreme Learning Machine (ELM) viscosity prediction model. A Just-in-time-based ELM model was established to predict the viscosity values under multi-mode operating and multi-standard production conditions. Consequently, without relying on the time-consuming laboratory analysis process, the PET viscosity can be predicted online. The industrial PET viscosity prediction results show the improved prediction performance of the proposed modeling approach in comparison with ELM and JPCR (Just-in-time principal component regression) approaches.
机译:作为聚酯生产的关键阶段,聚合过程由于其复杂的反应机理而难以建模。结果,工业聚酯聚合过程中的在线粘度预测不是一件容易的事。在这项工作中考虑了有效的数据驱动的预测模型。为了解决在线粘度测量仪精度低和耗时的实验室分析的问题,选择了在聚合过程中易于监控的变量,即主反应器中的温度和压力以及粘度计值建立极限学习机(ELM)粘度预测模型。建立了基于即时的ELM模型,以预测在多模式操作和多标准生产条件下的粘度值。因此,无需依赖耗时的实验室分析过程,就可以在线预测PET粘度。工业PET粘度预测结果表明,与ELM和JPCR(及时主成分回归)方法相比,所提出的建模方法具有更高的预测性能。

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