شماره ركورد كنفرانس :
5048
عنوان مقاله :
A new approach using adaptive neuro-fuzzy inference system for estimation of vapour liquid equilibria for the system Carbon Dioxide–Difluoromethane
Author/Authors :
mojtaba ،hoseini nasab Department of chemical engineerin - Tarbiat Modares University - Gisha bridge - Tehran, Iran , Mohsen ،Vafaei Department of chemical engineerin - Tarbiat Modares University - Gisha bridge - Tehran, Iran , Behnaz ،Parviz Department of chemical engineerin - Semnan University - Semnan, Iran , Abolfazl ،Mohammadi Department of chemical engineerin - Tarbiat Modares University - Gisha bridge - Tehran, Iran
كليدواژه :
VLE , ANFIS , Estimation , Binary mixture , Refrigerants
عنوان كنفرانس :
ششمين كنگره بين المللي مهندسي شيمي
چكيده لاتين :
(Vapour + liquid) equilibrium (VLE) data on environmentally acceptable refrigerant fluids are of the utmost interest for
the refrigeration industry and, in particular, for designing and optimizing refrigeration equipment. Since it is not always
possible to carry out experiments at all possible temperatures and pressures, generally thermodynamic models based on
equations of state are used for estimation of VLE. New models are then highly required. Therefore, an effort has been
made to develop an alternative to a classical equation of state. This paper a new approach using neural fuzzy model
based on adaptive network-based fuzzy inference system (ANFIS) was proposed to high-pressure VLE related literature
data to develop and validate a model capable of predicting VLE for the binary system, carbon dioxide–difluoromethane,
which is an attractive alternative to chlorofluorocarbons and hydrochlorofluorocarbons, normally used as refrigerants.
Furthermore, the comparison in terms of statistical values between the predicted results for each binary for the whole
temperature range and literature results predicted by Peng–Robinson equation of state using the Mathias Copeman alpha
function and the Wong–Sandler mixing rules involving the NRTL model shows that the ANFIS model gives far better
results.