Teaching-learning-based optimization (TLBO) is a population-based metaheuristic algorithm which simulates the teaching and learning mechanisms in a classroom. The TLBO algorithm has emerged as one of the most efficient and attractive optimization techniques. Even though the TLBO algorithm has an acceptable exploration capability and fast convergence speed, there may be a possibility to converge into a local optimum during solving complex optimization problems and there is a need to keep a balance between exploration and exploitation capabilities. Hence, a Balanced Teaching-Learning-Based Optimization (BTLBO) algorithm is proposed. The proposed BTLBO algorithm is a modification of the TLBO algorithm and it consists of four phases: (1) Teacher Phase in which a weighted mean is used instead of a mean value for keeping the diversity, (2) Learner Phase, which is same as the learner phase of basic TLBO algorithm, (3) Tutoring Phase, which is a powerful local search for exploiting the regions around the best ever found solution, and (4) Restarting Phase, which improves exploration capability by replacing inactive learners with new randomly initialized learners. An acceptable balance between the exploration and exploitation capabilities is achieved by the proposed BTLBO algorithm.
인용 양식
Taheri, Ahmad, et al. “An Efficient Balanced Teaching-Learning-Based Optimization Algorithm with Individual Restarting Strategy for Solving Global Optimization Problems.” Information Sciences, vol. 576, Elsevier BV, Oct. 2021, pp. 68–104, doi:10.1016/j.ins.2021.06.064.
MATLAB 릴리스 호환 정보
개발 환경:
R2013b
모든 릴리스와 호환
플랫폼 호환성
Windows macOS Linux태그
BTLBO Matlab Source Code CEC2014
BTLBO Matlab Source Code CEC2014/input_data
| 버전 | 게시됨 | 릴리스 정보 | |
|---|---|---|---|
| 1.0.0 |
