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Parameter selection for swarm intelligence algorithms — Case study on parallel implementation of FSS

机译:群体智能算法的参数选择 - FSS并行实施的案例研究

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Swarm Intelligence (SI) algorithms, such as Fish School Search (FSS), are well known as useful tools that can be used to achieve a good solution in a reasonable amount of time for complex optimization problems. And when problems increase in size and complexity, some increase in population size or number of iterations might be needed in order to achieve a good solution. In extreme cases, the execution time can be huge and other approaches, such as parallel implementations, might help to reduce it. This paper investigates the relation and trade off involving these three aspects in SI algorithms, namely population size, number of iterations, and problem complexity. The results with a parallel implementations of FSS show that increasing the population size is beneficial for finding good solutions. However, we observed an asymptotic behavior of the results, i.e. increasing the population over a certain threshold only leads to slight improvements.
机译:群体智能(SI)算法(如鱼学校搜索(FSS)都是众所周知的有用工具,可用于在合理的时间内实现良好的解决方案以进行复杂优化问题。当问题尺寸和复杂性增加时,可能需要在良好的解决方案方面需要一定的人口大小或迭代次数。在极端情况下,执行时间可以是巨大的,其他方法(例如并行实现)可能有助于减少它。本文调查了涉及这三个方面的关系和折衷,即SI算法,即人口大小,迭代次数和问题复杂性。具有FSS并行实现的结果表明,增加人口大小是有利于寻找良好解决方案的。然而,我们观察到结果的渐近行为,即增加一定阈值的人口只会导致轻微的改进。

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