Fero Orsolya, Stephens Philip A, Barta Zoltán, McNamara John M, Houston Alasdair I
Behavioural Ecology Research Group, Department of Evolutionary Zoology, University of Debrecen, 1H1-4010 Debrecen, Hungary.
Ecol Appl. 2008 Sep;18(6):1563-77. doi: 10.1890/07-1012.1.
Many applied problems in ecology and conservation require prediction, and population models are important tools for that purpose. Formerly, the majority of predictive population models were based on matrix models. As the limitations of classical matrix models have become clearer, the use of individual-based models has increased. These models use behavioral rules imposed at the level of the individual to establish the emergent consequences of those rules at the population level. Individual behaviors in such models use an array of different rule types, from empirically derived probabilities to long-term fitness considerations. There has been surprisingly little discussion of the strengths and weaknesses of these different rule types. Here, we consider different strategies for modeling individual behaviors, together with some problems associated with individual-based models. We propose a novel approach based on modeling optimal annual routines. Annual routines allow individual behaviors to be predicted over a whole annual cycle within the context of long-term fitness considerations. Temporal trade-offs between different behaviors are automatically included in annual routine models, overcoming some of the primary limitations of other individual-based models. Furthermore, as well as population predictions, individual behaviors and indices of condition are emergent features of annual routine models. We show that these can be more sensitive to environmental change than population size, offering alternative, repeatable metrics for monitoring population status. Annual routine models provide no panacea for the problems of data limitations in predictive population modeling. However, as a result of their ability to deal with life-history trade-offs, as well as their potential for relatively rapid and accurate validation and parameterization, we suggest that annual routine models have strong potential for predictive population modeling in applied conservation settings.
生态学与保护领域中的许多应用问题都需要进行预测,而种群模型是实现这一目的的重要工具。以前,大多数预测性种群模型都是基于矩阵模型构建的。随着经典矩阵模型的局限性日益明显,基于个体的模型的使用有所增加。这些模型利用在个体层面施加的行为规则来确定这些规则在种群层面产生的结果。此类模型中的个体行为使用一系列不同的规则类型,从经验推导的概率到长期适应性考量。令人惊讶的是,对于这些不同规则类型的优缺点的讨论非常少。在此,我们考虑为个体行为建模的不同策略,以及与基于个体的模型相关的一些问题。我们提出一种基于对最优年度活动模式进行建模的新方法。年度活动模式能够在长期适应性考量的背景下,对整个年度周期内的个体行为进行预测。不同行为之间的时间权衡会自动纳入年度活动模式模型中,克服了其他基于个体的模型的一些主要局限性。此外,除了种群预测之外,个体行为和状况指标也是年度活动模式模型的突出特征。我们表明,这些指标可能比种群规模对环境变化更为敏感,从而为监测种群状况提供了可供选择的、可重复的指标。年度活动模式模型并不能解决预测性种群建模中数据局限性的问题。然而,由于它们有能力处理生活史权衡问题,以及具有相对快速且准确地进行验证和参数化的潜力,我们认为年度活动模式模型在应用保护环境中的预测性种群建模方面具有强大的潜力。