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首页> 外文期刊>Sensors and Actuators, A. Physical >A SENSOR FOR ON-LINE MEASUREMENT OF THE VISCOSITY OF NON-NEWTONIAN FLUIDS USING A NEURAL NETWORK APPROACH
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A SENSOR FOR ON-LINE MEASUREMENT OF THE VISCOSITY OF NON-NEWTONIAN FLUIDS USING A NEURAL NETWORK APPROACH

机译:利用神经网络方法在线测量非牛顿流体粘度的传感器

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摘要

Non-Newtonian fluids are characterized by a nonlinear relationship between viscosity and shear rate. Typical examples are some emulsions. The graph of viscosity as a function of the shear rate is known as the rheogram or the theological chart. In this work, a very simple mechanical device with minimal moving parts has been used as a sensor for measuring both the viscosity and the shear rate. A mathematical model to measure the viscosity in Newtonian fluids has been confirmed. However, a mathematical model of the sensor for the case of non-Newtonian fluids is difficult because several variables defining the transducing properties are not independent and the measurement is made during transient dynamic conditions. In solving this problem, a neural network approach has been used. The input consists of two voltages representing the sensor response and the temperature. The outputs are the viscosity and the shear rate. The measurement system is made out of a sensor head, an electronic circuit for powering the sensor and signal conditioning, and a neural network software, based in the back propagation learning algorithm. The neural net has been trained using experimental data from laboratory viscometer and a simplified mathematical correlation relating the viscosity and input voltages. The sensor has been tested by measurement of the viscosity and the shear rate for emulsions of heavy crude oil (bitumen) and water. Good correlation between experimental data and the system output was observed after the neural net training. On-line tests of the sensor are being conducted. [References: 8]
机译:非牛顿流体的特征在于粘度和剪切速率之间的非线性关系。典型的例子是一些乳液。粘度作为剪切速率的函数的图被称为流变图或神学图。在这项工作中,具有最小移动部件的非常简单的机械设备已被用作传感器,用于测量粘度和剪切速率。已经证实了测量牛顿流体中粘度的数学模型。但是,对于非牛顿流体情况,传感器的数学模型很困难,因为定义换能特性的几个变量不是独立的,并且在瞬态动态条件下进行测量。为了解决这个问题,使用了神经网络方法。输入由代表传感器响应和温度的两个电压组成。输出是粘度和剪切速率。基于反向传播学习算法,测量系统由传感器头,为传感器供电和信号调节的电子电路以及神经网络软件组成。使用来自实验室粘度计的实验数据以及与粘度和输入电压相关的简化数学关系对神经网络进行了训练。该传感器已通过测量重质原油(沥青)和水的乳化液的粘度和剪切速率进行了测试。在神经网络训练后,观察到实验数据与系统输出之间的良好相关性。正在进行传感器的在线测试。 [参考:8]

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