Metallocenium
cations, used as a component in an anion exchange
membrane of a fuel cell, demonstrate excellent thermal and alkaline
stability, which can be improved by the chemical modification of the
cyclopentadienyl rings with substituent groups. In this work, the
relation between the bond dissociation energy (BDE) of the cobaltocenium
(CoCp2+)
derivatives, used as a measure of the cation stability, and chemistry-informed
descriptors obtained from the electronic structural calculations is
established. The analysis of 12 molecular descriptors for 118 derivatives
reveals a nonlinear dependence of the BDE on the electron donating-withdrawing
character of the substituent groups coupled to the energy of the frontier
molecular orbitals. A chemistry-informed feed-forward neural network
trained using k-fold cross-validation over the modest data set is
able to predict the BDE from the molecular descriptors with the mean
absolute error of about 1 kcal/mol. The theoretical analysis suggests
some promising modifications of cobaltocenium for experimental research.
The results demonstrate that even for modest data sets the incorporation
of the chemistry knowledge into the neural network architecture, e.g.,
through mindful selection and screening of the descriptors and their
interactions, paves the way to gain new insight into molecular properties.