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Application of ultrasound and neural networks in the determination of filler dispersion during polymer extrusion processes

机译:超声和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 dispersion is important information for the production of mineral-charged polymers. In order to achieve timely control of product quality, a technique capable of providing real-time information on filler dispersion is highly desirable. In this work, ultrasound, temperature, and pressure sensors as well as an amperemeter of the extruder motor drive were used to monitor the extrusion of mineral-filled polymers under various experimental conditions in terms of filler type, filler concentration, feeding rate, screw rotation speed, and barrel temperature. Then, neural network relationships were established among the filler dispersion index and three categories of variables, namely, control variables of the extruder, extruder-dependent measured variables, and extruder-independent measured variables (based on ultrasonic measurement). Of the three categories of variables, the process control variables and extruder-independent ultrasonically measured variables performed best in inferring the dispersion index through a neural network model. While the neural network model based on control variables could help determine the optimal experimental conditions to achieve a dispersion index, the extruder-independent network model based on ultrasonic measurement is suitable for in-line measurement of the quality of dispersion. This study has demonstrated the feasibility of using ultrasound and neural networks for in-line monitoring of dispersion during extrusion processes of mineral-charged polymers. (c) 2005 Society of Plastics Engineers.
机译:矿物填料分散体是生产带电荷聚合物的重要信息。为了实现对产品质量的及时控制,非常需要一种能够提供关于填料分散的实时信息的技术。在这项工作中,使用了超声波,温度和压力传感器以及挤出机电机驱动器的安培计,以监测填料类型,填料浓度,进料速度,螺杆旋转等各种实验条件下矿物填充聚合物的挤出情况。速度和机筒温度。然后,在填料分散指数和三类变量之间建立了神经网络关系,这三类变量分别是挤出机的控制变量,与挤出机有关的测量变量和与挤出机无关的测量变量(基于超声测量)。在这三类变量中,过程控制变量和独立于挤出机的超声测量变量在通过神经网络模型推断分散指数方面表现最佳。虽然基于控制变量的神经网络模型可以帮助确定实现分散指数的最佳实验条件,但基于超声测量的独立于挤出机的网络模型适用于在线测量分散质量。这项研究证明了在矿物质充填的聚合物挤压过程中使用超声和神经网络在线监测分散的可行性。 (c)2005年塑料工程师学会。

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