Mohammad Sohrabi Nasrabadi, Y. Sharafi, Mohammad Tayari
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引用次数: 20
摘要
基于群体智能的优化方法在科学上得到了广泛的应用。这些方法的灵感主要来自于自然界动物的群体行为。灰狼优化器(Grey Wolf Optimizer, GWO)是一种模拟狼狩猎行为的元启发式方法。在本研究中,与其他常见的优化方法相比,我们尝试使用基于对立的学习和并行化技术来改进原始算法的最终结果。通过对已知基准函数的实现和执行结果表明,改进算法的收敛速度和精度得到了提高。
A parallel grey wolf optimizer combined with opposition based learning
Optimization methods based on swarm intelligence, have been used widely in science. These methods are mainly inspired from swarm behavior of animals in nature. Grey Wolf Optimizer (GWO) is a meta-heuristic approach simulating wolves' behavior while they are hunting. In this research, it has been tried to improve the final results of the original version of algorithm, compared with other common optimization approaches, using the techniques of opposition-based learning and parallelism. The obtained results from implementation and performing the improved algorithm on well-known benchmark functions indicate enhancement the convergence speed and precision in final results.