Application of the Mean Spherical Approximation to Describe the Gibbs Solvation Energies of Monovalent Monoatomic Ions in Non-Aqueous Solvents

Abstract

The mean spherical approximation for the ion-dipole mixture is used to study the solvation energies of monovalent monoatomic ions in polar solvents. From the structure of the analytical solution it is inferred that there are two parameters that should be used to describe the solvation: the dielectric constant and a polarization parameter which plays the role of a mean field parameter to account for non-sphericity, chemical interactions, and other effects related to failure of the hard sphere model for the system. The model was successfully fitted to data for the Gibbs solvation energy of five alkali metal cations and their halide ions in 17 different solvents including water. On the basis of this analysis, it was shown that a single value of the polarization parameter describes the data for the cations in each solvent, a quite different value being appropriate for the anions. The polarization parameters were found to be linearly correlated with empirical parameters characterizing the solvents basicity in the case of cations, and its acidity in the case of anions.

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Document Details

Document Type
Technical Report
Publication Date
Nov 09, 1991
Accession Number
ADA243200

Entities

People

  • Lesser Blum
  • W. R. Fawcett

Organizations

  • University of Puerto Rico

Tags

Communities of Interest

  • Energy and Power Technologies

DTIC Thesaurus Topics

  • Alkali Metals
  • Aqueous Solutions
  • Carbonate Esters
  • Chemical Synthesis
  • Chemistry
  • Data Analysis
  • Dielectric Permittivity
  • Dipole Moments
  • Equations
  • Experimental Data
  • Free Energy
  • Metals
  • Military Research
  • Mixtures
  • Physical Chemistry
  • Puerto Rico
  • Thermodynamic Properties

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  • Chemistry

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  • Electrochemical Engineering/ Fuel Cell Technologies
  • Quantum Chemistry

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  • AI & ML
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