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Evolutionary computation in zoology and ecology

机译:生态学和生态学中的进化计算

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摘要

Evolutionary computational methods have adopted attributes of natural selection and evolution to solve problems in computer science, engineering, and other fields. The method is growing in use in zoology and ecology. Evolutionary principles may be merged with an agent-based modeling perspective to have individual animals or other agents compete. Four main categories are discussed: genetic algorithms, evolutionary programming, genetic programming, and evolutionary strategies. In evolutionary computation, a population is represented in a way that allows for an objective function to be assessed that is relevant to the problem of interest. The poorest performing members are removed from the population, and remaining members reproduce and may be mutated. The fitness of the members is again assessed, and the cycle continues until a stopping condition is met. Case studies include optimizing: egg shape given different clutch sizes, mate selection, migration of wildebeest, birds, and elk, vulture foraging behavior, algal bloom prediction, and species richness given energy constraints. Other case studies simulate the evolution of species and a means to project shifts in species ranges in response to a changing climate that includes competition and phenotypic plasticity. This introduction concludes by citing other uses of evolutionary computation and a review of the flexibility of the methods. For example, representing species’ niche spaces subject to selective pressure allows studies on cladistics, the taxon cycle, neutral versus niche paradigms, fundamental versus realized niches, community structure and order of colonization, invasiveness, and responses to a changing climate.
机译:进化计算方法采用自然选择和进化的属性来解决计算机科学,工程学和其他领域的问题。该方法在生态学和生态学中的使用正在增长。进化原理可以与基于代理的建模观点合并,以使单个动物或其他代理竞争。讨论了四个主要类别:遗传算法,进化规划,遗传规划和进化策略。在进化计算中,以允许评估与所关注问题相关的目标函数的方式表示总体。表现最差的成员将从种群中移出,其余成员繁殖并可能发生变异。再次评估成员的适应性,并继续循环直到满足停止条件。案例研究包括优化:给定不同离合器大小的蛋形,配偶选择,牛羚,鸟类和麋鹿的迁徙,秃鹰觅食行为,藻华预测以及给定能量限制的物种丰富度。其他案例研究则模拟了物种的进化,以及一种预测物种范围变化的方法,以应对气候变化,包括竞争和表型可塑性。本引言以引用进化计算的其他用法和方法灵活性的综述作为结束。例如,代表物种的生态位空间受到选择压力,就可以研究分类学,分类群,中性与生态位范式,基本生态位与已实现生态位,群落结构和定居顺序,入侵性以及对气候变化的反应。

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