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Experimental Study and Parallel Neural Network Modeling of Hydrocyclones for Efficiency Prediction

机译:水力旋流器效率预测的实验研究和并行神经网络建模

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摘要

The hydrocyclone is one of the most widely used industrial devices for separation of particles. The main objective of this article is to build a generalized neural network-based model for describing cyclones in laboratory and industrial environments and unusual configurations, covering a wide range of pressures and flow rates, angles, and lengths of cyclone nozzle. A wide range of parameters were investigated in laboratory-scale cyclones and used for training networks for final accurate estimations. A parallel neural network (NN) model was developed for finding different parameters' effects on efficiency and other possible expected results. Our tests show that parallel processing provides faster and more accurate results than simple NNs. The results show that significant efficiency improvement comes with length increments. Also, efficiency is strongly affected by the geometry parameter and feed condition.
机译:水力旋流器是用于分离颗粒的最广泛使用的工业设备之一。本文的主要目的是建立一个基于广义神经网络的模型,用于描述实验室和工业环境中的旋风分离器以及不同寻常的配置,涵盖了广泛的压力和流量,旋风分离器喷嘴的角度和长度。在实验室规模的旋风分离器中研究了各种参数,并将其用于训练网络以进行最终的准确估算。开发了并行神经网络(NN)模型,以查找不同参数对效率的影响以及其他可能的预期结果。我们的测试表明,并行处理比简单的NN可以提供更快,更准确的结果。结果表明,随着长度的增加,效率显着提高。而且,效率受几何参数和进料条件的强烈影响。

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