An adaptation, inspired by the concept of jumping genes in biology, is developed for the binary-coded elitist nondominated sorting genetic algorithm (NSGA-II). This helps in obtaining global-optimal solutions faster, particularly for problems involving networks. This is because the optimal values of some decision variables in such problems may be 0 or 1, e.g., some streams may be nonexistent in the optimal configuration. It is difficult to generate such chromosomes in the binary-coded NSGA-II (or the unmodified version of the real coded NSGA-II) using the three conventional operations of reproduction, crossover, and mutation. The algorithm developed is used to solve a few sample simple problems involving froth flotation circuits, which repr...
Existing plant designs are often conservative and as a consequence the opportunity to achieve full v...
Recently, a wealthy of research works has been dedicated to the design of effective and efficient ge...
Abstract:- Evolutionary Algorithms (EAs) are deployed for multi-objective Pareto optimal design of G...
The elitist non-dominated sorting genetic algorithm with the modified jumping gene operator (NSGA-II...
The binary-coded elitist non-dominated sorting genetic algorithm with the modified jumping gene oper...
A modelnig, simulation and optimization study of a complex industrial fluorspar beneficiation plant ...
Column flotation is a multivariable process. Its optimization guarantees the metallurgical yield of ...
It is customary to use more than one stage of flotation to obtain an acceptable level of separation ...
Froth flotation is a widely used and versatile mineral processing method for concentrating metal ore...
Several of the recent optimization techniques have been adapted from nature. The elitist nondominate...
The authors describe the general problem of cut-off grade optimisation for multi-mineral deposits an...
Multi-objective optimization of industrial chemical engineering operations using simulated annea...
The design of a flotation circuit based on optimization techniques requires a superstructure for rep...
Two new jumping gene (JG) adaptations of the binary-coded, elitist non-dominated sorting genetic alg...
The performance of the evolutionary technique, multiobjective simulated annealing (MOSA), is improve...
Existing plant designs are often conservative and as a consequence the opportunity to achieve full v...
Recently, a wealthy of research works has been dedicated to the design of effective and efficient ge...
Abstract:- Evolutionary Algorithms (EAs) are deployed for multi-objective Pareto optimal design of G...
The elitist non-dominated sorting genetic algorithm with the modified jumping gene operator (NSGA-II...
The binary-coded elitist non-dominated sorting genetic algorithm with the modified jumping gene oper...
A modelnig, simulation and optimization study of a complex industrial fluorspar beneficiation plant ...
Column flotation is a multivariable process. Its optimization guarantees the metallurgical yield of ...
It is customary to use more than one stage of flotation to obtain an acceptable level of separation ...
Froth flotation is a widely used and versatile mineral processing method for concentrating metal ore...
Several of the recent optimization techniques have been adapted from nature. The elitist nondominate...
The authors describe the general problem of cut-off grade optimisation for multi-mineral deposits an...
Multi-objective optimization of industrial chemical engineering operations using simulated annea...
The design of a flotation circuit based on optimization techniques requires a superstructure for rep...
Two new jumping gene (JG) adaptations of the binary-coded, elitist non-dominated sorting genetic alg...
The performance of the evolutionary technique, multiobjective simulated annealing (MOSA), is improve...
Existing plant designs are often conservative and as a consequence the opportunity to achieve full v...
Recently, a wealthy of research works has been dedicated to the design of effective and efficient ge...
Abstract:- Evolutionary Algorithms (EAs) are deployed for multi-objective Pareto optimal design of G...