A neural
network-based group contribution method was developed
in order to estimate the temperature-dependent surface tension of
pure ionic liquids. A metaheuristic algorithm called gravitational
search algorithm was employed in substitution of the traditional backpropagation
learning algorithm to optimize the update weights of our neural network
model. A total of 2307 experimental data points from 229 data sets
of 162 different ionic liquid types, such as imidazolium, ammonium,
phosphonium, pyridinium, pyrrolidinium, piperidinium, and sulfonium,
were collected from the specialized literature. In this database,
a wide temperature range from 263 to 533 K, and a wide surface tension
range from 0.015 to 0.062 N·m–1, were covered.
The input parameters contained the following properties: absolute
temperature, the molecular weight of the ionic liquid, and 46 structural
groups that composed the molecule. The accuracy of the proposed method
was checked using the mean absolute percentage error (MAPE) and the
correlation coefficient (R) between the calculated
and experimental values. The results show that, for the training phase,
our method presents a MAPE = 1.17% and R= 0.998,
while for the prediction phase, the method shows a MAPE = 1.29% and R = 0.991. In addition, the relative contribution of each
input parameter was calculated from the optimal weights of the network.
Also, the effects of the temperature, molecular weight, and cation
and anion types on the estimation of the surface tension were analyzed.
Finally, the proposed method was compared with other methods available
in the literature. All results demonstrated the high accuracy of our
method to estimate the temperature-dependent surface tension for several
ionic liquid types.
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