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Propylene Polymerization Reactor Control and Estimation Using a Particle Filter and Neural Network

机译:丙烯聚合反应器的控制和粒子过滤和神经网络估计

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摘要

Polymeric materials are present in various industrial sectors and in daily life, presenting advantages such as low cost and durability. Several processes for manufacturing have been developed. To achieve safety and operational goals measurement methods for proper process monitoring and effective control are needed. However, in real polymer plants, measuring devices are subject to uncertainties and are not always available. Hence, this paper proposes a virtual sensor scheme based on a particle filter and artificial neural network (ANN) that is applied to a simulated polymerization reactor. This scheme reduces uncertainties and enables the observation of latent variables. The ANN is also used for predicting the final properties of the polymer. The goal is to provide controllers with more complete and improved information. The results show that the virtual sensor scheme improves the process control, providing accurate estimates and action times that are consistent with industrial sampling intervals, which highlights its potential for practical applications.
机译:聚合物材料存在于各种工业领域和日常生活中,具有诸如低成本和耐用性的优点。已经开发了几种制造方法。为了实现安全和操作目标,需要用于适当过程监控和有效控制的测量方法。但是,在实际的聚合物工厂中,测量设备存在不确定性,并不总是可用。因此,本文提出了一种基于粒子滤波器和人工神经网络(ANN)的虚拟传感器方案,并将其应用于模拟聚合反应器。该方案减少了不确定性,并使得能够观察潜在变量。人工神经网络还用于预测聚合物的最终性能。目的是为控制器提供更完整和改进的信息。结果表明,虚拟传感器方案改善了过程控制,提供了与工业采样间隔一致的准确估计和动作时间,从而突出了其在实际应用中的潜力。

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