Abstract
Artificial neural networks (ANNs), one of the most important artificial intelligence techniques, are used extensively in modeling many types of problems. A successful training process is required to create effective models with ANN. An effective training algorithm is essential for a successful training process. In this study, a new neural network training algorithm called the hybrid artificial bee colony algorithm based on effective scout bee stage (HABCES) was proposed. The HABCES algorithm includes four fundamental changes. Arithmetic crossover was used in the solution generation mechanisms of the employed bee and onlooker bee stages. The knowledge of the global best solution was utilized by arithmetic crossover. Again, this solution generation mechanism also has an adaptive step size. Limit is an important control parameter. In the standard ABC algorithm, it is constant throughout the optimization. In the HABCES algorithm, it was determined dynamically depending on the number of generations. Unlike the standard ABC algorithm, the HABCES algorithm used a solution generation mechanism based on the global best solution in the scout bee stage. Through these features, the HABCES algorithm has a strong local and global convergence ability. Firstly, the performance of the HABCES algorithm was analyzed on the solution of global optimization problems. Then, applications on the training of the ANN were carried out. ANN was trained using the HABCES algorithm for the identification of nonlinear static and dynamic systems. The performance of the HABCES algorithm was compared with the standard ABC, aABC and ABCES algorithms. The results showed that the performance of the HABCES algorithm was better in terms of solution quality and convergence speed. A performance increase of up to 69.57% was achieved by using the HABCES algorithm in the identification of static systems. This rate is 46.82% for the identification of dynamic systems.
Subject
General Mathematics,Engineering (miscellaneous),Computer Science (miscellaneous)
Reference46 articles.
1. State-of-the-art in artificial neural network applications: A survey;Heliyon,2018
2. Review of meta-heuristic optimization based artificial neural networks and its applications;J. Phys. Conf. Ser.,2019
3. Artificial neural network weight optimization: A review;TELKOMNIKA Indones. J. Electr. Eng.,2014
4. Meta-heuristic Techniques to Train Artificial Neural Networks for Medical Image Classification: A Review;Recent Adv. Comput. Sci. Commun. (Former. Recent Pat. Comput. Sci.),2022
5. Meta-heuristic algorithms in car engine design: A literature survey;IEEE Trans. Evol. Comput.,2014
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