Department of Environmental System Sciences, ETH Zürich, CH-8092 Zürich, Switzerland.
Proc Natl Acad Sci U S A. 2013 Jul 23;110(30):12213-8. doi: 10.1073/pnas.1304328110. Epub 2013 Jul 10.
The chemical dynamics of lakes and streams affect their suitability as aquatic habitats and as water supplies for human needs. Because water quality is typically monitored only weekly or monthly, however, the higher-frequency dynamics of stream chemistry have remained largely invisible. To illuminate a wider spectrum of water quality dynamics, rainfall and streamflow were sampled in two headwater catchments at Plynlimon, Wales, at 7-h intervals for 1-2 y and weekly for over two decades, and were analyzed for 45 solutes spanning the periodic table from H(+) to U. Here we show that in streamflow, all 45 of these solutes, including nutrients, trace elements, and toxic metals, exhibit fractal 1/f(α) scaling on time scales from hours to decades (α = 1.05 ± 0.15, mean ± SD). We show that this fractal scaling can arise through dispersion of random chemical inputs distributed across a catchment. These 1/f time series are non-self-averaging: monthly, yearly, or decadal averages are approximately as variable, one from the next, as individual measurements taken hours or days apart, defying naive statistical expectations. (By contrast, stream discharge itself is nonfractal, and self-averaging on time scales of months and longer.) In the solute time series, statistically significant trends arise much more frequently, on all time scales, than one would expect from conventional t statistics. However, these same trends are poor predictors of future trends-much poorer than one would expect from their calculated uncertainties. Our results illustrate how 1/f time series pose fundamental challenges to trend analysis and change detection in environmental systems.
湖泊和溪流的化学动力学影响它们作为水生栖息地和人类用水供应的适宜性。然而,由于水质通常仅每周或每月监测一次,因此溪流化学的更高频率动态在很大程度上仍然不为人知。为了更广泛地阐明水质动态,在威尔士普林利蒙的两个源头集水区,每隔 7 小时对降雨和溪流进行了 1-2 年的采样,每周进行了 20 多年的采样,并对跨越周期表从 H(+)到 U 的 45 种溶质进行了分析。在这里,我们表明在溪流中,包括营养物、微量元素和有毒金属在内的这 45 种溶质在从小时到几十年的时间尺度上都表现出分形 1/f(α)标度(α=1.05±0.15,平均值±标准差)。我们表明,这种分形标度可以通过在整个集水区内分布的随机化学输入的分散来产生。这些 1/f 时间序列是非自平均的:每月、每年或每十年的平均值彼此之间的变化大致相同,与相隔几小时或几天的单个测量值一样,这与朴素的统计预期相矛盾。(相比之下,溪流流量本身是非分形的,并且在数月和更长的时间尺度上是自平均的。)在溶质时间序列中,在所有时间尺度上,比从传统 t 统计数据中预期的更频繁地出现统计上显著的趋势。然而,这些相同的趋势并不能很好地预测未来的趋势——比从它们的计算不确定性中预期的要差得多。我们的结果说明了 1/f 时间序列如何对环境系统中的趋势分析和变化检测提出基本挑战。