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Probing of Neural Networks as a Bridge from Ab Initio Relevant Characteristics to Differential Scanning Calorimetry Measurements of High‐Energy Compounds

N. V. BondarevDepartment of Physical Chemistry V. N. Karazin Kharkiv National University 4 Svobody Sq. Kharkiv 61022 UkraineKonstantin P. KatinDepartment of Condensed Matter Physics National Research Nuclear University “MEPhI” Kashirskoe Sh. 31 Moscow 115409 Russian FederationВ. Б. МериновDepartment of Condensed Matter Physics National Research Nuclear University “MEPhI” Kashirskoe Sh. 31 Moscow 115409 Russian FederationA. I. KochaevResearch and Education Center “Silicon and Carbon Nanotechnologies” Ulyanovsk State University 42 Leo Tolstoy Str. Ulyanovsk 432017 Russian FederationSavaş KayaFaculty of Science Department of Chemistry Cumhuriyet University Sivas 58140 TurkeyMikhail M. MaslovDepartment of Condensed Matter Physics National Research Nuclear University “MEPhI” Kashirskoe Sh. 31 Moscow 115409 Russian Federation
2021en
ABI

Аннотация

The relationships between the theoretical values calculated using density functional theory and experimental data derived from the differential scanning calorimetry of high‐energy organic compounds are studied. The theoretical values are the number of atoms and bonds of different types and their lengths, minimum eigenfrequencies, atomization energies, ionization potentials, electron affinities, and frontier orbital energies. The experimental data are the amounts of releasing heat (the first peaks higher than 1 kJ g −1 ) and corresponding temperatures. Neural networks and regression, factor, discriminant, and cluster analysis are applied to find the dependencies between theoretical values and experimental data. It is found that the heat amount cannot be predicted in the general cases, whereas the corresponding temperature can be predicted with a neural network with an accuracy of ≈30 °C. Cluster and discriminant analysis provides the way for the classification of high‐energy compounds into three groups. Some of these groups require particular rules for the prediction of experimental data from the theoretical values.

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