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Application of principal component analysis and artificial neural networks in the determination of filler dispersion during polymer extrusion processes.

机译:主成分分析和人工神经网络在聚合物挤出过程中确定填料分散性中的应用。

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Mineral filler-reinforced polymer is an important family of polymers designed to achieve high mechanical impact strength. The state of mineral filler dispersion in a polymer matrix strongly affects the mechanical properties of the product and is an important information for the extrusion-based fabrication process. In this work, a measurement system consists of two ultrasonic sensors, three pressure sensors, a thermocouple, and an amperometer of the extruder motor drive were used to monitor the extrusion of a calcium carbonate powder-filled polypropylene system. Three principal components, most correlated to the state of filler dispersion, were extracted from the data set collected by the multiple sensors and fed as inputs to an artificial neural network model designed to determine the dispersion state of the filler. By using this approach, one is able to achieve an accuracy of better than 0.05 on the dispersion index. This work has demonstrated the feasibility of combining our multi-sensor monitoring system with principal component analysis and artificial neural networks for on-line determination of mineral-filled dispersion in polymers.
机译:矿物填料增强的聚合物是一种重要的聚合物系列,旨在实现高机械冲击强度。矿物填料在聚合物基体中的分散状态会严重影响产品的机械性能,并且是基于挤出的制造过程的重要信息。在这项工作中,一个测量系统由两个超声波传感器,三个压力传感器,一个热电偶和一个挤出机电机驱动器的安培计组成,用于监控填充碳酸钙粉末的聚丙烯系统的挤出。从多个传感器收集的数据集中提取了与填充物分散状态最相关的三个主要成分,并将其作为输入输入到人工神经网络模型中,该模型被设计为确定填充物的分散状态。通过使用这种方法,可以达到优于分散指数0.05的精度。这项工作证明了将我们的多传感器监测系统与主成分分析和人工神经网络相结合以在线测定聚合物中矿物填充分散体的可行性。

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