Title of article :
A Viscosity Equation of State for R123 in the Form of a Multilayer Feedforward Neural Network
Author/Authors :
G. Scalabrin، نويسنده , , C. Corbetti and G. Cristofoli ، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2001
Abstract :
A multilayer feedforward neural network (MLFN) technique is adopted for
developing a viscosity equation g=g(T, r) for R123.The results obtained are
very promising, with an average absolute deviation (AAD) of 1.02% for the
currently available 169 primary data points, and are a significant improvement
over those of a corresponding conventional equation in the literature.The
method requires a high-accuracy equation of state for the fluid to be known to
convert the experimental P, T into the independent variables r, T, but such
equation may not be available for the target fluid.With a view to overcoming
this difficulty, a viscosity implicit equation of state in the form of T=T(P, g),
avoiding the density variable, is obtained using the MLFN technique, starting
from the same data sets as before.The prediction accuracy achieved is comparable
with that of the former equation, g=g(T, r).
Keywords :
2 , 2-dichloro-1 , 1-trifluoroethane , R123 , viscosity equation. , viscosity correlation techniques , 1 , Feedforward neural networks
Journal title :
International Journal of Thermophysics
Journal title :
International Journal of Thermophysics