Netherlands Institute of Ecology (NIOO-KNAW), Department of Aquatic Ecology, PO Box 50, 6700 AB Wageningen, the Netherlands; Department of Aquatic Ecology and Water Quality Management, Wageningen University & Research, PO Box 47, 6700 AA, the Netherlands.
Netherlands Institute of Ecology (NIOO-KNAW), Department of Aquatic Ecology, PO Box 50, 6700 AB Wageningen, the Netherlands.
Sci Total Environ. 2019 Dec 10;695:133887. doi: 10.1016/j.scitotenv.2019.133887. Epub 2019 Aug 13.
Worldwide, eutrophication is threatening lake ecosystems. To support lake management numerous eutrophication models have been developed. Diverse research questions in a wide range of lake ecosystems are addressed by these models. The established models are based on three key approaches: the empirical approach that employs field surveys, the theoretical approach in which models based on first principles are tested against lab experiments, and the process-based approach that uses parameters and functions representing detailed biogeochemical processes. These approaches have led to an accumulation of field-, lab- and model-based knowledge, respectively. Linking these sources of knowledge would benefit lake management by exploiting complementary information; however, the development of a simple tool that links these approaches was hampered by their large differences in scale and complexity. Here we propose a Generically Parameterized Lake eutrophication model (GPLake) that links field-, lab- and model-based knowledge and can be used to make a first diagnosis of lake water quality. We derived GPLake from consumer-resource theory by the principle that lacustrine phytoplankton is typically limited by two resources: nutrients and light. These limitations are captured in two generic parameters that shape the nutrient to chlorophyll-a relations. Next, we parameterized GPLake, using knowledge from empirical, theoretical, and process-based approaches. GPLake generic parameters were found to scale in a comparable manner across data sources. Finally, we show that GPLake can be applied as a simple tool that provides lake managers with a first diagnosis of the limiting factor and lake water quality, using only the parameters for lake depth, residence time and current nutrient loading. With this first-order assessment, lake managers can easily assess measures such as reducing nutrient load, decreasing residence time or changing depth before spending money on field-, lab- or model- experiments to support lake management.
在全球范围内,富营养化正在威胁着湖泊生态系统。为了支持湖泊管理,已经开发了许多富营养化模型。这些模型解决了广泛的湖泊生态系统中的各种研究问题。已建立的模型基于三种关键方法:经验方法,采用现场调查;理论方法,其中基于第一原理的模型经过实验室实验进行测试;以及基于过程的方法,使用代表详细生物地球化学过程的参数和功能。这些方法分别导致了现场、实验室和模型基础知识的积累。通过利用互补信息,将这些知识来源联系起来将有利于湖泊管理;然而,由于它们在规模和复杂性方面存在很大差异,开发一个简单的工具来联系这些方法受到了阻碍。在这里,我们提出了一个通用参数化湖泊富营养化模型(GPLake),它可以链接现场、实验室和模型基础知识,并可用于对湖泊水质进行初步诊断。我们通过湖泊浮游植物通常受到两种资源限制的原理,即营养物质和光,从消费者-资源理论中推导出 GPLake。这些限制在两个通用参数中捕获,这些参数塑造了营养物与叶绿素-a 之间的关系。接下来,我们使用经验、理论和基于过程的方法的知识来参数化 GPLake。发现 GPLake 通用参数在不同数据源之间以可比的方式缩放。最后,我们表明,使用仅湖泊深度、停留时间和当前营养负荷的参数,GPLake 可以作为一种简单的工具应用,为湖泊管理者提供限制因素和湖泊水质的初步诊断。通过这种一阶评估,湖泊管理者可以轻松评估减少营养负荷、缩短停留时间或改变深度等措施,然后再花钱进行现场、实验室或模型实验,以支持湖泊管理。