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Rheological wall slip velocity prediction model based on artificial neural network

机译:基于人工神经网络的流变壁滑移速度预测模型

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摘要

Wall slip is a phenomenon in which particles migrate from solid bound-aries, leaving a thin liquid rich layer adjacent to a wall, which can affect the measurement of the rheological properties. Currently, analyses of wall slip are normally carried out through experimental study using a rheometer. These traditional methods are generally time consuming,as several experiment sets are usually required. The aim of this research is to develop an alternative, more efficient approach, by formulating a mathematical model able to predict the wall slip velocity with an acceptable level of accuracy. Specifically, this study investigates a Multi-Layer Perceptron Neural Network (MLP-NN) as an advanced method to predict wall slip velocity. It develops and tests several MLP-NN architec-tures that accommodate a range of fixed input variables including shear stress, concentration, temperature and particle sizes, with estimated wall slip velocity as the output variable. Using this method, users can perform wall slip velocity analyses by simply plugging different patterns of the proposed input variables into the recommended architecture. Our tests show an MLP-NN model with one hidden layer consisting of nine hidden neurons to be the best architecture for such purposes, producing a strong overall performance with an R~2 value of 0.9994 and maximum error of 28%. This research study is innovative in its use of artificial intelligence to predict wall slip velocity in theological applications.
机译:壁板是一种现象,其中颗粒从固体绑定中迁移,留下与壁相邻的薄液体富液体,这会影响流变性质的测量。目前,通常通过使用流变仪进行实验研究进行壁板的分析。这些传统方法通常是耗时的,因为通常需要几种实验组。该研究的目的是通过制定能够以可接受的精度水平预测壁滑速的数学模型来开发替代,更有效的方法。具体地,本研究研究了多层的Perceptron神经网络(MLP-NN)作为预测壁滑速的先进方法。它开发和测试几种MLP-NN architec-Tures,其容纳一系列固定输入变量,包括剪切应力,浓度,温度和粒度,估计壁滑速作为输出变量。使用此方法,通过简单地将所提出的输入变量的不同模式插入推荐的体系结构,用户可以通过简单地将壁滑速度分析执行墙壁滑移速度分析。我们的测试显示了一个MLP-NN模型,其中一个隐藏层由九个隐藏神经元组成,以获得这种目的的最佳架构,产生强大的整体性能,R〜2值为0.9994,最大误差为28%。该研究在利用人工智能来预测神学应用中的墙壁滑移速度的创新性。

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