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- Title
Crystal Structure Prediction in Orthorhombic ABO<sub>3</sub> Perovskites by Multiple Linear Regression and Artificial Neural Networks.
- Authors
Aleksovska, Slobotka; Dimitrovska, Sandra; Kuzmanovski, Igor
- Abstract
The unit cell parameters and the fractional atomic coordinates of the orthorhombic perovskites of ABO3 type are expressed as a function of the effective ionic radii of the constituents using two approaches: multiple linear regression and artificial neural networks. For this purpose, 46 orthorhombic perovskites of GdFeO3 type (spa ce group Pnma) with accurately refined structures are included in the analysis: 41 in calibration set, and 5 in test set. The predictive strength of the proposed model is very high. This is shown by the values of the coefficients of correlation (Radj)² which are higher than 0.9 for all dependent variables and by the agreement between the actual and predicted values for the dependent variables, obtained by both methods. This simple mathematical model can be used: to predict the crystal structure of members in this series; as starting model for crystal structure refinement; to test the actual crystallographic data of ABO3 perovskites.
- Subjects
CRYSTALS; PEROVSKITE; REGRESSION analysis; ARTIFICIAL neural networks; MATHEMATICAL models; CRYSTALLOGRAPHY
- Publication
Acta Chimica Slovenica, 2007, Vol 54, Issue 3, p574
- ISSN
1318-0207
- Publication type
Article