Key Laboratory of Pollution Processes and Environmental Criteria, Ministry of Education, and Tianjin Key Laboratory of Environmental Remediation and Pollution Control, College of Environmental Science and Engineering, Nankai University, Tianjin 300071, China.
Key Laboratory of Pollution Processes and Environmental Criteria, Ministry of Education, and Tianjin Key Laboratory of Environmental Remediation and Pollution Control, College of Environmental Science and Engineering, Nankai University, Tianjin 300071, China.
Sci Total Environ. 2019 Jan 15;648:472-480. doi: 10.1016/j.scitotenv.2018.08.146. Epub 2018 Aug 11.
Assessing the key drivers of eutrophication in lakes and reservoirs has long been a challenge, and many studies have developed empirical models for predicting the relative importance of these drivers. However, the relative roles of various parameters might differ not only spatially (between regions or localities) but also at a temporal scale. In this study, the relative roles of total phosphorus, total nitrogen, ammonia, wind speed and water temperature were selected as potential drivers of phytoplankton biomass by using chlorophyll a as a proxy for biomass. A generalized additive model (GAM) and a random forest model (RF) were developed to assess the predictability of chlorophyll a and the relative importance of various predictors driving algal blooms at different timescales in a freshwater lake. The results showed that the daily datasets yielded better predictability than the monthly datasets. In addition, at a daily scale, water temperature was a more important predictor of chlorophyll a than nutrients, and the importance of phosphorus was comparable to that of nitrogen. In contrast, at a monthly scale, nutrients are more important predictors than water temperature and phosphorus is a better predictor than nitrogen. This study indicates that the drivers of phytoplankton fluctuations vary at different timescales and that timescale has an influence on the relative roles of nitrogen and phosphorus limitation in lakes, which suggests that the temporal scale should be considered when explaining phytoplankton fluctuations. Moreover, this study provides a reference for the monitoring of phytoplankton fluctuations and for understanding the mechanisms underlying phytoplankton fluctuations at different timescales.
评估湖泊和水库富营养化的关键驱动因素一直是一个挑战,许多研究已经开发了经验模型来预测这些驱动因素的相对重要性。然而,各种参数的相对作用不仅在空间上(在不同地区或地点之间),而且在时间尺度上也可能不同。在这项研究中,选择总磷、总氮、氨、风速和水温作为潜在的浮游植物生物量驱动因素,使用叶绿素 a 作为生物量的替代物。通过使用广义加性模型 (GAM) 和随机森林模型 (RF),评估了叶绿素 a 的可预测性以及不同时间尺度上藻类大量繁殖的各种预测因子的相对重要性。结果表明,与月度数据集相比,每日数据集的可预测性更好。此外,在日尺度上,水温对叶绿素 a 的预测作用比营养物质更重要,磷的重要性与氮相当。相比之下,在月尺度上,营养物质是比水温更重要的预测因子,而磷是比氮更好的预测因子。本研究表明,浮游植物波动的驱动因素在不同时间尺度上有所不同,时间尺度对湖泊中氮磷限制的相对作用有影响,这表明在解释浮游植物波动时应考虑时间尺度。此外,本研究为浮游植物波动的监测以及理解不同时间尺度下浮游植物波动的机制提供了参考。