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Constitutive models of magnetorheological fluids having temperature-dependent prediction parameter

机译:具有温度依赖性预测参数的磁流变液的本构模型

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摘要

This work presents constitutive models of magnetorheological (MR) fluids, which can predict the shear and dynamic yield stress depending on temperature. Two existing models, the Herschel-Bulkley rheological and power law model, which are frequently used in MR fluid research, are adopted and modified to take the temperature into account. A new constitutive model of MR fluids is developed using the extreme learning machine (ELM) method. In this development, among many machine learning approaches, a simple and efficient learning algorithm for a single hidden layer feed-forward neural network (SLFN) is adopted and applied to the rheological model of MR fluids. The temperature, shear rate, and magnetic field are treated as inputs, and the shear stress is taken as an output. After formulating the models associated with experimental coefficients, the two most important properties of MR fluids; the shear and yield stress are predicted and compared with the measured values. The prediction accuracy for the field-dependent rheological properties of MR fluids in several different temperatures is evaluated and compared. It is shown that the ELM model developed in this work provides the best accuracy, followed by two other modified constitutive equations.
机译:该工作提供了磁流变(MR)流体的本构模型,其可以根据温度预测剪切和动态屈服应力。使用并修改了经常用于MR Fine Research的Herschel-Bulkley流变和动力法模型,以将温度考虑在内。使用极端学习机(ELM)方法开发了新的MR流体的新组成模型。在该开发中,在许多机器学习方法中,采用简单且高效地学习了单个隐藏层前馈神经网络(SLFN)并应用于MR流体的流变模型。温度,剪切速率和磁场被视为输入,并将剪切应力作为输出。制定与实验系数相关的模型后,MR液的两个最重要的特性;预测剪切和屈服应力并与测量值进行比较。评估并比较了几种不同温度下MR流体的现场依赖性流变性质的预测精度。结果表明,在本工作中开发的ELM模型提供了最佳精度,其次是另外两个修改的本构方程。

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