部落生态系统启发的全局优化算法(TEA)

Ying-biao Lin, Jingjing Li, Jun Zhang, Meng Wan
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引用次数: 1

摘要

不同生物和社会系统的进化机制激发了各种进化计算(EC)算法。然而,大多数现有的EC算法模拟的是个体层面的进化过程。本文提出了一种受部落层面进化过程启发的生态系统协同机制,即部落生态系统启发算法(TEA)。在TEA中,基本进化单元不是代表解点的个体,而是覆盖搜索空间中的子区域的部落。更具体地说,部落表示位于特定子区域的解决方案集,其编码结构由三个元素组成:部落酋长、属性多样性和前进的历史。部落首领代表了当地迄今为止最好的解决方案,属性多样性衡量了子区域的范围,推进历史记录了当地的搜索经验。通过这种方式,新的进化单元提供了关于社区概况和搜索历史的额外知识。利用这一知识,TEA引入了改革、自我推进、协同组合和增强四种进化算子,模拟了部落生态系统中部落从潜在的有前途的子区域进化到全局最优的进化机制。在基准函数上验证了所提出的TEA。通过与三种代表性的EC算法的比较,验证了其良好的性能。
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A tribal ecosystem inspired algorithm (TEA) for global optimization
Evolution mechanisms of different biological and social systems have inspired a variety of evolutionary computation (EC) algorithms. However, most existing EC algorithms simulate the evolution procedure at the individual-level. This paper proposes a new EC mechanism inspired by the evolution procedure at the tribe-level, namely tribal ecosystem inspired algorithm (TEA). In TEA, the basic evolution unit is not an individual that represents a solution point, but a tribe that covers a subarea in the search space. More specifically, a tribe represents the solution set locating in a particular subarea with a coding structure composed of three elements: tribal chief, attribute diversity, and advancing history. The tribal chief represents the locally best-so-far solution, the attribute diversity measures the range of the subarea, and the advancing history records the local search experience. This way, the new evolution unit provides extra knowledge about neighborhood profiles and search history. Using this knowledge, TEA introduces four evolution operators, reforms, self-advance, synergistic combination, and augmentation, to simulate the evolution mechanisms in a tribal ecosystem, which evolves the tribes from potentially promising subareas to the global optimum. The proposed TEA is validated on benchmark functions. Comparisons with three representative EC algorithms confirm its promising performance.
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