Bottom-up ecology: an agent-based model on the interactions between competition and predation

Q3 Mathematics
I. Karsai, Emil Montano, T. Schmickl
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引用次数: 12

Abstract

Abstract We developed an agent-based computer model of an ecosystem to predict interactions of competition and predation. In our simulations of the model, the effects of the ‘Gause law’ emerged as the results of population fluctuations and a large number of stochastic events. Small biases in life history parameters produced strong effects through the interactions of positive feedback with the population fluctuations. In a low-production environment, the smaller and faster consumer outcompetes the larger and slower one, but in a high production environment the larger and slower consumer survives. Predation hastens the extinction of one of the consumers, but niche partitioning of the consumers increases both the coexistence of consumers and the number of predators. Predators with medium efficiency are able to coexist in the system longer and in larger numbers. Besides the ecological insights this model provides, we conclude that agent-based simulations are very effective tools to explore the interactions between predation and competition interactions.
自下而上生态学:竞争与捕食相互作用的基于主体的模型
本文建立了一个基于智能体的生态系统计算机模型来预测竞争和捕食的相互作用。在我们对该模型的模拟中,“高斯定律”的影响作为种群波动和大量随机事件的结果出现。生活史参数中的小偏差通过正反馈与种群波动的相互作用产生了强烈的影响。在低生产环境中,小而快的消费者会战胜大而慢的消费者,但在高生产环境中,大而慢的消费者会生存下来。捕食加速了一种消费者的灭绝,但消费者的生态位划分增加了消费者的共存和捕食者的数量。中等效率的捕食者能够在系统中共存更长时间,数量更多。除了该模型提供的生态学见解外,我们得出结论,基于主体的模拟是探索捕食和竞争相互作用之间相互作用的非常有效的工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Letters in Biomathematics
Letters in Biomathematics Mathematics-Statistics and Probability
CiteScore
2.00
自引率
0.00%
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0
审稿时长
14 weeks
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