On the Suitability of Different Representations of Solid Catalysts for Combinatorial Library Design by Genetic Algorithms.

Oliver Gobin, Ferdi Schüth

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Journal Article: Journal of Combinatorial Chemistry (impact factor: 3.45). 09/2008; DOI: 10.1021/cc800046u

Abstract

Genetic algorithms are widely used to solve and optimize combinatorial problems and are more often applied for library design in combinatorial chemistry. Because of their flexibility, however, their implementation can be challenging. In this study, the influence of the representation of solid catalysts on the performance of genetic algorithms was systematically investigated on the basis of a new, constrained, multiobjective, combinatorial test problem with properties common to problems in combinatorial materials science. Constraints were satisfied by penalty functions, repair algorithms, or special representations. The tests were performed using three state-of-the-art evolutionary multiobjective algorithms by performing 100 optimization runs for each algorithm and test case. Experimental data obtained during the optimization of a noble metal-free solid catalyst system active in the selective catalytic reduction of nitric oxide with propene was used to build up a predictive model to validate the results of the theoretical test problem. A significant influence of the representation on the optimization performance was observed. Binary encodings were found to be the preferred encoding in most of the cases, and depending on the experimental test unit, repair algorithms or penalty functions performed best.

Source: PubMed

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Keywords

100 optimization runs
 
Binary encodings
 
combinatorial chemistry
 
combinatorial materials science
 
combinatorial test problem
 
experimental test unit
 
Genetic algorithms
 
nitric oxide
 
noble metal-free solid catalyst system active
 
optimization performance
 
optimize combinatorial problems
 
penalty functions
 
preferred encoding
 
properties common
 
selective catalytic reduction
 
significant influence
 
solid catalysts
 
special representations
 
state-of-the-art evolutionary multiobjective algorithms
 
theoretical test problem