College of Mathematics and Systems Science, Shandong University of Science and Technology, Qingdao, 266590, People's Republic of China.
Department of Mathematical and Statistical Sciences, University of Alberta, Edmonton, AB, T6G 2G1, Canada.
Bull Math Biol. 2024 May 3;86(6):67. doi: 10.1007/s11538-024-01296-y.
In biology, evolutionary game-theoretical models often arise in which players' strategies impact the state of the environment, driving feedback between strategy and the surroundings. In this case, cooperative interactions can be applied to studying ecological systems, animal or microorganism populations, and cells producing or actively extracting a growth resource from their environment. We consider the framework of eco-evolutionary game theory with replicator dynamics and growth-limiting public goods extracted by population members from some external source. It is known that the two sub-populations of cooperators and defectors can develop spatio-temporal patterns that enable long-term coexistence in the shared environment. To investigate this phenomenon and unveil the mechanisms that sustain cooperation, we analyze two eco-evolutionary models: a well-mixed environment and a heterogeneous model with spatial diffusion. In the latter, we integrate spatial diffusion into replicator dynamics. Our findings reveal rich strategy dynamics, including bistability and bifurcations, in the temporal system and spatial stability, as well as Turing instability, Turing-Hopf bifurcations, and chaos in the diffusion system. The results indicate that effective mechanisms to promote cooperation include increasing the player density, decreasing the relative timescale, controlling the density of initial cooperators, improving the diffusion rate of the public goods, lowering the diffusion rate of the cooperators, and enhancing the payoffs to the cooperators. We provide the conditions for the existence, stability, and occurrence of bifurcations in both systems. Our analysis can be applied to dynamic phenomena in fields as diverse as human decision-making, microorganism growth factors secretion, and group hunting.
在生物学中,经常会出现演化博弈论模型,其中玩家的策略会影响环境状态,从而在策略和环境之间产生反馈。在这种情况下,合作互动可以应用于研究生态系统、动物或微生物种群以及从环境中主动提取生长资源的细胞。我们考虑了具有复制者动力学和由种群成员从外部来源提取的生长限制公共物品的生态演化博弈论框架。已知合作者和缺陷者这两个亚群可以发展时空模式,从而在共享环境中实现长期共存。为了研究这种现象并揭示维持合作的机制,我们分析了两个生态演化模型:均匀混合环境和具有空间扩散的非均匀模型。在后一种模型中,我们将空间扩散整合到复制者动力学中。我们的研究结果揭示了丰富的策略动力学,包括时间系统中的双稳性和分岔,以及扩散系统中的空间稳定性、Turing 不稳定性、Turing-Hopf 分岔和混沌。结果表明,促进合作的有效机制包括增加玩家密度、降低相对时间尺度、控制初始合作者的密度、提高公共物品的扩散率、降低合作者的扩散率以及提高合作者的收益。我们给出了两个系统中存在、稳定性和分岔发生的条件。我们的分析可以应用于人类决策、微生物生长因子分泌和群体狩猎等领域的动态现象。