Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

A Metaheuristic-Based Tool for Function Minimization

View through CrossRef
During the last decade, metaheuristic algorithms have occupied an important place in the field of optimization. Function minimization is of importance to researchers since many real-world problems can be modeled mathematically and be solved effectively through metaheuristic algorithms. Due to the growing scientific interest in the field of optimization and the good performances shown by the algorithms on function minimization, the practical and quick implementation concept is necessary to select the most appropriate algorithms on function minimization, and to assist researchers in analyzing the performance of the algorithms. In this study, a tool is developed to minimize user-defined functions in a specified range according to the chosen metaheuristic algorithms, which allows analyzing the algorithms in the general experimental environment. The tool, which has a user-friendly interface, can provide single and comparative solutions by simultaneously executing the algorithms. Each solution and computational time obtained by the algorithms is given numerically, and the convergence behavior of the algorithms is shown graphically in the tool interface. Minimization of functions can be made fast, easily and effectively through the developed tool.
Title: A Metaheuristic-Based Tool for Function Minimization
Description:
During the last decade, metaheuristic algorithms have occupied an important place in the field of optimization.
Function minimization is of importance to researchers since many real-world problems can be modeled mathematically and be solved effectively through metaheuristic algorithms.
Due to the growing scientific interest in the field of optimization and the good performances shown by the algorithms on function minimization, the practical and quick implementation concept is necessary to select the most appropriate algorithms on function minimization, and to assist researchers in analyzing the performance of the algorithms.
In this study, a tool is developed to minimize user-defined functions in a specified range according to the chosen metaheuristic algorithms, which allows analyzing the algorithms in the general experimental environment.
The tool, which has a user-friendly interface, can provide single and comparative solutions by simultaneously executing the algorithms.
Each solution and computational time obtained by the algorithms is given numerically, and the convergence behavior of the algorithms is shown graphically in the tool interface.
Minimization of functions can be made fast, easily and effectively through the developed tool.

Related Results

Optimising tool wear and workpiece condition monitoring via cyber-physical systems for smart manufacturing
Optimising tool wear and workpiece condition monitoring via cyber-physical systems for smart manufacturing
Smart manufacturing has been developed since the introduction of Industry 4.0. It consists of resource sharing and networking, predictive engineering, and material and data analyti...
The mechanisms of minimization: How interrogation tactics suggest lenient sentencing through pragmatic implication
The mechanisms of minimization: How interrogation tactics suggest lenient sentencing through pragmatic implication
Objective: Minimization is a legal interrogation tactic in which an interrogator attempts to decrease a suspect's resistance to confessing by, for example, downplaying the seriousn...
Robot tool use: A survey
Robot tool use: A survey
Using human tools can significantly benefit robots in many application domains. Such ability would allow robots to solve problems that they were unable to without tools. However, r...
Optimization framework for DFG-based automated process discovery approaches
Optimization framework for DFG-based automated process discovery approaches
AbstractThe problem of automatically discovering business process models from event logs has been intensely investigated in the past two decades, leading to a wide range of approac...
Optimizing Skin Disease Diagnosis using Metaheuristic Algorithms: A Comparative Study
Optimizing Skin Disease Diagnosis using Metaheuristic Algorithms: A Comparative Study
Skin disease, having a wide range of symptoms and appearances, has been putting stern challenge in the field of dermatology. In deep demand, the work reveals the potential of metah...
Q-Learning based Metaheuristic Optimization Algorithms: A short review and perspectives
Q-Learning based Metaheuristic Optimization Algorithms: A short review and perspectives
Abstract In recent years, reinforcement learning (RL) has garnered a great deal of interest from researchers because of its success in handling some complicated issues. Spe...
An Effective Hybrid Metaheuristic Algorithm for Solving Global Optimization Algorithms
An Effective Hybrid Metaheuristic Algorithm for Solving Global Optimization Algorithms
AbstractRecently, the Honey Badger Algorithm (HBA) was proposed as a metaheuristic algorithm. Honey badger hunting behaviour inspired the development of this algorithm. In the expl...
Optimizing the extreme gradient boosting algorithm through the use of metaheuristic algorithms in sales forecasting
Optimizing the extreme gradient boosting algorithm through the use of metaheuristic algorithms in sales forecasting
Abstract Accurate forecasting of future demand is essential for decision-makers and institutions in order to utilize the sources effectively and gain competitive advantages...

Back to Top