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A teaching-learning-based optimization algorithm with producer-scrounger model for global optimization

机译:基于生产者-学习者模型的基于学习的优化算法用于全局优化

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In order to decrease the computation cost and improve the global performance of the original teaching-learning-based optimization (TLBO) algorithm, the area-copying operator of the producer-scrounger (PS) model is introduced into TLBO for global optimization problems. In the proposed method, the swarm is divided into three parts: the producer, scroungers and remainders. The producer is the best individual selected from current population and it exploits the new solution with a random angle and a maximal radius. Some individuals, which are different from the producer, are randomly selected according to a predefined probability as scroungers. The scroungers update their position with an area-copying operator, which is used in the PS model. The remainders are updated by means of teaching and learning operators as they are used in the TLBO algorithm. In each iteration, the computation cost of the proposed algorithm is less than that of the original TLBO algorithm, because the individuals of the PS model are only evaluated once and the individuals of the TLBO algorithm are evaluated two times in each iteration. The proposed algorithm is tested on different kinds of benchmark problems, and the results indicate that the proposed algorithm has competitive performance to some other algorithms in terms of accuracy, convergence speed and success rate.
机译:为了降低计算成本并提高原始的基于教学的优化(TLBO)算法的全局性能,针对全局优化问题,将生产者-代理(PS)模型的区域复制运算符引入TLBO。在所提出的方法中,将群分为三个部分:生产者,繁殖者和剩余者。生产者是从当前人口中选出的最佳个体,它以随机角度和最大半径利用新的解决方案。根据预定义的概率,随机选择一些与生产者不同的个体作为繁殖者。定位器使用PS模型中使用的区域复制运算符更新其位置。剩余部分通过在TLBO算法中使用的教与学运算符进行更新。在每次迭代中,提出的算法的计算成本都小于原始TLBO算法的计算成本,因为PS模型的个体仅被评估一次,而TLBO算法的个体在每次迭代中被评估两次。对提出的算法进行了各种基准问题的测试,结果表明,该算法在准确性,收敛速度和成功率方面都具有竞争力。

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