Wilson Stuart P
Department of Psychology, The University of Sheffield, Sheffield, United Kingdom.
Sheffield Robotics, The University of Sheffield, Sheffield, United Kingdom.
PLoS Comput Biol. 2017 Jan 31;13(1):e1005378. doi: 10.1371/journal.pcbi.1005378. eCollection 2017 Jan.
A thermodynamic model of thermoregulatory huddling interactions between endotherms is developed. The model is presented as a Monte Carlo algorithm in which animals are iteratively exchanged between groups, with a probability of exchanging groups defined in terms of the temperature of the environment and the body temperatures of the animals. The temperature-dependent exchange of animals between groups is shown to reproduce a second-order critical phase transition, i.e., a smooth switch to huddling when the environment gets colder, as measured in recent experiments. A peak in the rate at which group sizes change, referred to as pup flow, is predicted at the critical temperature of the phase transition, consistent with a thermodynamic description of huddling, and with a description of the huddle as a self-organising system. The model was subjected to a simple evolutionary procedure, by iteratively substituting the physiologies of individuals that fail to balance the costs of thermoregulation (by huddling in groups) with the costs of thermogenesis (by contributing heat). The resulting tension between cooperative and competitive interactions was found to generate a phenomenon called self-organised criticality, as evidenced by the emergence of avalanches in fitness that propagate across many generations. The emergence of avalanches reveals how huddling can introduce correlations in fitness between individuals and thereby constrain evolutionary dynamics. Finally, a full agent-based model of huddling interactions is also shown to generate criticality when subjected to the same evolutionary pressures. The agent-based model is related to the Monte Carlo model in the way that a Vicsek model is related to an Ising model in statistical physics. Huddling therefore presents an opportunity to use thermodynamic theory to study an emergent adaptive animal behaviour. In more general terms, huddling is proposed as an ideal system for investigating the interaction between self-organisation and natural selection empirically.
我们构建了一个关于恒温动物体温调节拥挤相互作用的热力学模型。该模型以蒙特卡罗算法的形式呈现,在这个算法中,动物在不同群体间反复交换,交换群体的概率依据环境温度和动物的体温来定义。研究表明,动物在不同群体间基于温度的交换能够再现二阶临界相变,也就是说,正如最近实验所测量的那样,当环境变冷时会平稳地转变为拥挤状态。在相变的临界温度处,预测会出现群体规模变化速率的峰值,即幼崽流动,这与拥挤的热力学描述以及将拥挤视为自组织系统的描述相一致。通过反复用那些无法平衡体温调节成本(通过群体拥挤)和产热成本(通过贡献热量)的个体的生理特征进行替换,该模型经历了一个简单的进化过程。结果发现,合作与竞争相互作用之间产生的这种张力会引发一种称为自组织临界性的现象,这一点从跨越许多代的适应性雪崩的出现得到了证明。雪崩的出现揭示了拥挤如何在个体之间引入适应性关联,从而限制进化动态。最后,当受到相同的进化压力时,一个完整的基于主体的拥挤相互作用模型也被证明会产生临界性。基于主体的模型与蒙特卡罗模型的关系,就如同统计物理学中的维塞克模型与伊辛模型的关系一样。因此,拥挤为利用热力学理论研究一种新兴的适应性动物行为提供了契机。更一般地说,拥挤被提议作为一个理想系统,用于从经验上研究自组织与自然选择之间的相互作用。