Molecular-based artificial neural network for predicting the electrical conductivity of deep eutectic solvents
Abir Boublia(University Ferhat Abbas of Setif), Inas M. AlNashef(Khalifa University of Science and Technology), Yacine Benguerba(University Ferhat Abbas of Setif), Ahmad S. Darwish(Khalifa University of Science and Technology), Fawzi Banat(Khalifa University of Science and Technology), Tarek Lemaoui(University Ferhat Abbas of Setif), Farah Abu Hatab(Khalifa University of Science and Technology)
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