首页> 外文期刊>Open Journal of Physical Chemistry >Data Consistency Tests through the Use of Neural Networks and Virial Equation. Application of the Proposed Methodology to Critical Study of Density Data
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Data Consistency Tests through the Use of Neural Networks and Virial Equation. Application of the Proposed Methodology to Critical Study of Density Data

机译:通过使用神经网络和Virial方程进行数据一致性测试。拟议方法在密度数据临界研究中的应用

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This paper focuses on a very important point which consists in evaluating experimental data prior to their use for chemical process designs. Hexafluoropropylene P, ρ, T data measured at 11 temperatures from 263 to 362 K and at pressures up to 10 MPa have been examined through a consistency test presented herein and based on the use of a methodology implying both neural networks and Virial equation. Such a methodology appears as very powerful to identify erroneous data and could be conveniently handled for quick checks of databases previously to modeling through classical thermodynamic models and equations of state. As an application to liquid and vapor phase densities of hexafluoropropylene, a more reliable database is provided after removing out layer data.
机译:本文的重点是非常重要的一点,即在将实验数据用于化学过程设计之前对其进行评估。六氟丙烯P,ρ,T数据在11个温度从263到362 K且压力高达10 MPa的条件下通过本文提出的一致性测试进行了检查,并使用了暗示神经网络和Virial方程的方法。这种方法看起来非常强大,可以识别错误数据,并且可以方便地进行处理,以便在通过经典热力学模型和状态方程进行建模之前对数据库进行快速检查。作为六氟丙烯的液相和气相密度的一种应用,在除去层数据之后,提供了一个更可靠的数据库。

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