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In-Line Monitoring of Crystallization processes using a Laser Reflection Sensor and a Neural Network Model

机译:使用激光反射传感器和神经网络模型在线监测结晶过程

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摘要

Laboratory-scale experiments were carried out for measuring the chord length distribution of different particle systems using a laser reflection sensor. Samples consisted of monodisperse, polydisperse and bimodal FCC catalyst and PVC particles of different sizes, ranging from about 20 to 500 μm. The particles were dispersed in water, forming suspensions with solid-phase mass fractions ranging from ca. 0.2% until ca. 30%. The experimental results, consisting of the particle number counting per chord length class, were used in fitting a neural network model for estimating the mass concentration of particles in the suspension and the volume-based size distribution, eliminating the effects of suspension concentration and particle shape. The results indicate the feasibility of using such a model as a software sensor in crystallization processes monitoring.
机译:进行了实验室规模的实验,以使用激光反射传感器测量不同粒子系统的弦长分布。样品由单分散,多分散和双峰FCC催化剂以及大小在20至500μm之间的PVC颗粒组成。将该颗粒分散在水中,形成固相质量分数在约1至3之间的悬浮液。直到大约0.2% 30%。实验结果由每个弦长类别的颗粒数计数组成,用于拟合神经网络模型,以估计悬浮液中颗粒的质量浓度和基于体积的尺寸分布,从而消除了悬浮液浓度和颗粒形状的影响。结果表明在结晶过程监控中使用这种模型作为软件传感器的可行性。

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