This study proposes a self-adaptive penalty function algorithm for solving constrained optimization problems using genetic algorithm (GA). Constrained optimization is a practically relevant and challenging field that deals with optimization of real world problems that involve complex constraints that make them difficult to tackle. GA is a stochastic search method based on the evolutionary ideas of natural selection and genetic. In GA candidate solutions to a certain problem, called individuals, will evolve from generation to generation toward finding better solutions. In this research GA based constraint handling algorithm is proposed that combines the merits of previously designed algorithms. In the proposed method a new fitness value, cal...
Machine learning models have achieved impressive predictive performance in various applications such...
Optimization plays an essential role in modern Engineering. Current Finite Element and CAD Software ...
In my dissertation I develop and evaluate methods for gene-mapping that can extract useful informati...
The purpose of this dissertation was to provide a review of the theory of Optimization, in particula...
In mathematics and computer science, solving an optimization problem is to find the best solution fr...
Dr. James Keller, Dissertation Supervisor.Includes vita.Field of study: Electrical and computer engi...
Immobile location-allocation (LA) problems is a type of LA problem that consists in determining the ...
Instance selection plays an important role in improving scalability of data mining algorithms, but i...
This thesis introduces a comprehensive approach for making a particular class of embedded processors...
Combinatorial testing has been an active research area in recent years. One challenge in this area ...
This paper proposes two evolutionary algorithms. Firstly, a dynamic evolutionary algorithm is propos...
Active inference is a normative principle underwriting perception, action, planning, decision-making...
The placement problem of two-dimensional objects over planar surfaces optimizing given utility func...
Thesis ini mempersembahkan satu model umum pengoptimuman berlapisan berdasarkan perkomputeran evolu...
Duo to technology downscaling, embedded systems have increased in complexity and heterogeneity. Incr...
Machine learning models have achieved impressive predictive performance in various applications such...
Optimization plays an essential role in modern Engineering. Current Finite Element and CAD Software ...
In my dissertation I develop and evaluate methods for gene-mapping that can extract useful informati...
The purpose of this dissertation was to provide a review of the theory of Optimization, in particula...
In mathematics and computer science, solving an optimization problem is to find the best solution fr...
Dr. James Keller, Dissertation Supervisor.Includes vita.Field of study: Electrical and computer engi...
Immobile location-allocation (LA) problems is a type of LA problem that consists in determining the ...
Instance selection plays an important role in improving scalability of data mining algorithms, but i...
This thesis introduces a comprehensive approach for making a particular class of embedded processors...
Combinatorial testing has been an active research area in recent years. One challenge in this area ...
This paper proposes two evolutionary algorithms. Firstly, a dynamic evolutionary algorithm is propos...
Active inference is a normative principle underwriting perception, action, planning, decision-making...
The placement problem of two-dimensional objects over planar surfaces optimizing given utility func...
Thesis ini mempersembahkan satu model umum pengoptimuman berlapisan berdasarkan perkomputeran evolu...
Duo to technology downscaling, embedded systems have increased in complexity and heterogeneity. Incr...
Machine learning models have achieved impressive predictive performance in various applications such...
Optimization plays an essential role in modern Engineering. Current Finite Element and CAD Software ...
In my dissertation I develop and evaluate methods for gene-mapping that can extract useful informati...