Department of Biological Sciences, Virginia Tech, Blacksburg, Virginia, USA.
Department of Biological Sciences, Dartmouth College, Hanover, New Hampshire, USA.
Ecol Appl. 2022 Jul;32(5):e2590. doi: 10.1002/eap.2590. Epub 2022 May 23.
Near-term ecological forecasts provide resource managers advance notice of changes in ecosystem services, such as fisheries stocks, timber yields, or water quality. Importantly, ecological forecasts can identify where there is uncertainty in the forecasting system, which is necessary to improve forecast skill and guide interpretation of forecast results. Uncertainty partitioning identifies the relative contributions to total forecast variance introduced by different sources, including specification of the model structure, errors in driver data, and estimation of current states (initial conditions). Uncertainty partitioning could be particularly useful in improving forecasts of highly variable cyanobacterial densities, which are difficult to predict and present a persistent challenge for lake managers. As cyanobacteria can produce toxic and unsightly surface scums, advance warning when cyanobacterial densities are increasing could help managers mitigate water quality issues. Here, we fit 13 Bayesian state-space models to evaluate different hypotheses about cyanobacterial densities in a low nutrient lake that experiences sporadic surface scums of the toxin-producing cyanobacterium, Gloeotrichia echinulata. We used data from several summers of weekly cyanobacteria samples to identify dominant sources of uncertainty for near-term (1- to 4-week) forecasts of G. echinulata densities. Water temperature was an important predictor of cyanobacterial densities during model fitting and at the 4-week forecast horizon. However, no physical covariates improved model performance over a simple model including the previous week's densities in 1-week-ahead forecasts. Even the best fit models exhibited large variance in forecasted cyanobacterial densities and did not capture rare peak occurrences, indicating that significant explanatory variables when fitting models to historical data are not always effective for forecasting. Uncertainty partitioning revealed that model process specification and initial conditions dominated forecast uncertainty. These findings indicate that long-term studies of different cyanobacterial life stages and movement in the water column as well as measurements of drivers relevant to different life stages could improve model process representation of cyanobacteria abundance. In addition, improved observation protocols could better define initial conditions and reduce spatial misalignment of environmental data and cyanobacteria observations. Our results emphasize the importance of ecological forecasting principles and uncertainty partitioning to refine and understand predictive capacity across ecosystems.
短期生态预测为资源管理者提供了有关生态系统服务变化的预警,例如渔业资源、木材产量或水质。重要的是,生态预测可以确定预测系统中的不确定性所在,这对于提高预测技能和指导预测结果的解释是必要的。不确定性划分确定了不同来源对总预测方差的相对贡献,包括模型结构的指定、驱动数据的误差以及当前状态(初始条件)的估计。不确定性划分对于提高高度可变蓝藻密度的预测可能特别有用,因为蓝藻密度难以预测,并且一直是湖泊管理者面临的挑战。由于蓝藻会产生有毒和难看的水面浮渣,因此在蓝藻密度增加时提前发出警报可以帮助管理者减轻水质问题。在这里,我们拟合了 13 个贝叶斯状态空间模型,以评估在一个低营养湖中蓝藻密度的不同假设,该湖偶尔会出现产毒蓝藻藻华。我们使用了几个夏季的每周蓝藻样本数据来确定近期(1-4 周)预测 Gloeotrichia echinulata 密度的主要不确定性来源。在模型拟合和 4 周预测期内,水温是蓝藻密度的重要预测因子。然而,与包括前一周密度的简单模型相比,没有物理协变量可以提高模型性能。即使是拟合最好的模型也表现出蓝藻密度预测的较大方差,并且无法捕捉罕见的峰值出现,这表明在拟合历史数据的模型时,重要的解释变量并不总是对预测有效。不确定性划分表明,模型过程规范和初始条件是预测不确定性的主要因素。这些发现表明,对不同蓝藻生活阶段和水柱中运动的长期研究以及对不同生活阶段相关驱动因素的测量可以提高蓝藻丰度的模型过程表示。此外,改进的观测方案可以更好地定义初始条件,并减少环境数据和蓝藻观测的空间不匹配。我们的结果强调了生态预测原则和不确定性划分的重要性,以细化和理解跨生态系统的预测能力。