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Prediction of Complexation Properties of Crown Ethers Using Computational Neural Networks
Authors:Andrei A Gakh  Bobby G Sumpter  Donald W Noid  Richard A Sachleben  Bruce A Moyer
Institution:(1) Chemical and Analytical Sciences Division, Oak Ridge National Laboratory, P.O. Box 2008, Oak Ridge, TN, 37831-6197, U.S.A
Abstract:A computational neural network method was used for the prediction of stability constants of simple crown ether complexes. The essence of the method lies in the ability of a computer neural network to recognize the structure-property relationships in these host-guest systems. Testing of the computational method has demonstrated that stability constants of alkali metal cation (Na+, K+, Cs+)-crown ether complexes in methanol at 25 °C can be predicted with an average error of ±0.3 log K units based on the chemical structure of the crown ethers alone. The computer model was then used for the preliminary analysis of trends in the stabilities of the above complexes.
Keywords:Crown ethers  complexes  stability constants  structure-property relationships  computational neural networks
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