Tirok Katrin, Gaedke Ursula
Department of Ecology and Ecosystem Modelling, Institute of Biochemistry and Biology, University of Potsdam, Maulbeerallee 2, 14415, Potsdam, Germany.
Oecologia. 2007 Jan;150(4):625-42. doi: 10.1007/s00442-006-0547-4. Epub 2006 Sep 15.
Spring algal development in deep temperate lakes is thought to be strongly influenced by surface irradiance, vertical mixing and temperature, all of which are expected to be altered by climate change. Based on long-term data from Lake Constance, we investigated the individual and combined effects of these variables on algal dynamics using descriptive statistics, multiple regression models and a process-oriented dynamic simulation model. The latter considered edible and less-edible algae and was forced by observed or anticipated irradiance, temperature and vertical mixing intensity. Unexpectedly, irradiance often dominated algal net growth rather than vertical mixing for the following reason: algal dynamics depended on algal net losses from the euphotic layer to larger depth due to vertical mixing. These losses strongly depended on the vertical algal gradient which, in turn, was determined by the mixing intensity during the previous days, thereby introducing a memory effect. This observation implied that during intense mixing that had already reduced the vertical algal gradient, net losses due to mixing were small. Consequently, even in deep Lake Constance, the reduction in primary production due to low light was often more influential than the net losses due to mixing. In the regression model, the dynamics of small, fast-growing algae was best explained by vertical mixing intensity and global irradiance, whereas those of larger algae were best explained by their biomass 1 week earlier. The simulation model additionally revealed that even in late winter grazing may represent an important loss factor during calm periods when losses due to mixing are small. The importance of losses by mixing and grazing changed rapidly as it depended on the variable mixing intensity. Higher temperature, lower global irradiance and enhanced mixing generated lower algal biomass and primary production in the dynamic simulation model. This suggests that potential consequences of climate change may partly counteract each other.
温带深水湖泊春季藻类生长被认为受表面辐照度、垂直混合和温度的强烈影响,预计所有这些因素都会因气候变化而改变。基于康斯坦茨湖的长期数据,我们使用描述性统计、多元回归模型和一个面向过程的动态模拟模型,研究了这些变量对藻类动态的单独和综合影响。后者考虑了可食用和不可食用藻类,并由观测或预期的辐照度、温度和垂直混合强度驱动。出乎意料的是,辐照度往往主导藻类净生长而非垂直混合,原因如下:藻类动态取决于由于垂直混合导致的从真光层到更大深度的藻类净损失。这些损失强烈依赖于垂直藻类梯度,而垂直藻类梯度又由前几天的混合强度决定,从而引入了一种记忆效应。这一观察结果表明,在已经降低垂直藻类梯度的强烈混合过程中,混合导致的净损失很小。因此,即使在康斯坦茨湖深处,因低光照导致的初级生产力下降往往比混合导致的净损失更具影响力。在回归模型中,小型快速生长藻类的动态最好由垂直混合强度和全球辐照度解释,而大型藻类的动态最好由其一周前的生物量解释。模拟模型还表明,即使在冬末,在混合损失较小的平静时期,放牧可能是一个重要的损失因素。混合和放牧造成的损失的重要性变化迅速,因为它取决于可变的混合强度。在动态模拟模型中,较高的温度、较低的全球辐照度和增强的混合导致较低的藻类生物量和初级生产力。这表明气候变化的潜在后果可能部分相互抵消。