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A SYNERGY OF DIFFERENTIAL EVOLUTION AND BACTERIAL FORAGING OPTIMIZATION FOR GLOBAL OPTIMIZATION

机译:全局优化的差分进化和细菌探寻优化的协同

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The social foraging behavior of Escherichia coli bacteria has recently been studied by several researchers to develop a new algorithm for distributed optimization control. The Bacterial Foraging Optimization Algorithm (BFOA), as it is called now, has many features analogous to classical Evolutionary Algorithms (EA). Passino pointed out that the foraging algorithms can be integrated in the framework of evolutionary algorithms. In this way BFOA can be used to model some key survival activities of the population, which is evolving. This article proposes a hybridization of BFOA with another very popular optimization technique of current interest called Differential Evolution (DE). The computational chemo-taxis of BFOA, which may also be viewed as a stochastic gradient search, has been coupled with DE type mutation and crossing over of the optimization agents. This leads to the new hybrid algorithm, which has been shown to overcome the problems of slow and premature convergence of both the classical DE and BFOA over several benchmark functions as well as real world optimization problems.
机译:几位研究人员最近对大肠杆菌的社会觅食行为进行了研究,以开发一种用于分布式优化控制的新算法。如今,细菌觅食优化算法(BFOA)具有许多与经典进化算法(EA)类似的功能。 Passino指出,觅食算法可以集成在进化算法的框架中。通过这种方式,BFOA可以用于模拟人口的一些关键的生存活动,而这一活动正在发展。本文提出了将BFOA与当前非常感兴趣的另一种非常流行的优化技术(称为差异进化(DE))进行杂交的方法。 BFOA的计算化学出租车,也可以看作是随机梯度搜索,已经与DE类型突变和优化代理的交叉结合在一起。这导致了新的混合算法,该算法已被证明可以克服经典DE和BFOA在多个基准函数上的缓慢和过早收敛的问题以及现实世界中的优化问题。

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