The paper presents a novel application of non-dominated sorting genetic algorithms
(NSGA-II) to optimise the performance of plate-type electrostatic separator; an environmental
friendly technique for selective sorting of conductive from nonconductive constituents of a
granular mixture. As several decision variables control detachment of the particles from the
plate; hence the separator’s selectivity, NSGA-II is applied to determine their optimal values
subject to simultaneous satisfaction of two proposed objective functions. These functions aim to
maximise the separation distances, while maintaining the detachment fields, for different species.
A GA-optimised charge simulation algorithm was developed to enable computations of
detachment fields and positions of the particles. Two extreme solutions encompassing the other
Pareto results are examined and analysed. The study illustrates the applicability of NSGA-II in
solving the complex multiobjective optimisation problem of electrostatic separators in order to
facilitate new development and designs of this environmental friendly technology. |