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Effect of ant parameters on DEACO in economic load dispatch problem

机译:经济负荷分配问题中蚂蚁参数对DEACO的影响

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A distinctive optimization technique known as Ant Colony Optimization (ACO) has gained huge popularity in these recent years. This algorithm has turned into a candidate approach to many optimization problems. Unfortunately, this attractive algorithm suffers several drawbacks, including stagnation and slow convergence toward optimal solution. Thus, a new algorithm, termed as Differential Evolution Ant Colony Optimization (DEACO) has been modeled to compensate the drawbacks. The algorithm was utilized to solve the economic load dispatch problem in order to verify its performance. In this study, several DEACO parameters, including the number of ants and nodes were manipulated to investigate the behavior of the brand-new algorithm. Comparative studies between DEACO and conventional ACO suggested that the new algorithm had successfully overcome the weaknesses of classical ACO.
机译:近年来,一种称为蚁群优化(ACO)的独特优化技术获得了极大的普及。该算法已成为解决许多优化问题的候选方法。不幸的是,这种吸引人的算法具有几个缺点,包括停滞和向最优解的缓慢收敛。因此,已经对一种称为差分进化蚁群优化(DEACO)的新算法进行了建模,以弥补上述缺陷。该算法被用来解决经济负荷分配问题,以验证其性能。在这项研究中,操纵了多个DEACO参数,包括蚂蚁和节点的数量,以研究全新算法的行为。 DEACO与常规ACO的比较研究表明,新算法已成功克服了传统ACO的缺点。

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