Zscheischler Jakob, Fatichi Simone, Wolf Sebastian, Blanken Peter D, Bohrer Gil, Clark Kenneth, Desai Ankur R, Hollinger David, Keenan Trevor, Novick Kimberly A, Seneviratne Sonia I
Institute for Atmospheric and Climate Science ETH Zurich Zurich Switzerland.
Institute of Environmental Engineering ETH Zurich Zurich Switzerland.
J Geophys Res Biogeosci. 2016 Aug;121(8):2186-2198. doi: 10.1002/2016JG003503. Epub 2016 Aug 25.
Ecosystem models often perform poorly in reproducing interannual variability in carbon and water fluxes, resulting in considerable uncertainty when estimating the land-carbon sink. While many aggregated variables (growing season length, seasonal precipitation, or temperature) have been suggested as predictors for interannual variability in carbon fluxes, their explanatory power is limited and uncertainties remain as to their relative contributions. Recent results show that the annual count of hours where evapotranspiration (ET) is larger than its 95th percentile is strongly correlated with the annual variability of ET and gross primary production (GPP) in an ecosystem model. This suggests that the occurrence of favorable conditions has a strong influence on the annual carbon budget. Here we analyzed data from eight forest sites of the AmeriFlux network with at least 7 years of continuous measurements. We show that for ET and the carbon fluxes GPP, ecosystem respiration (RE), and net ecosystem production, counting the "most active hours/days" (i.e., hours/days when the flux exceeds a high percentile) correlates well with the respective annual sums, with correlation coefficients generally larger than 0.8. Phenological transitions have much weaker explanatory power. By exploiting the relationship between most active hours and interannual variability, we classify hours as most active or less active and largely explain interannual variability in ecosystem fluxes, particularly for GPP and RE. Our results suggest that a better understanding and modeling of the occurrence of large values in high-frequency ecosystem fluxes will result in a better understanding of interannual variability of these fluxes.
生态系统模型在再现碳通量和水通量的年际变化方面往往表现不佳,这导致在估算陆地碳汇时存在相当大的不确定性。虽然许多综合变量(生长季长度、季节性降水或温度)已被建议作为碳通量年际变化的预测因子,但其解释力有限,且它们的相对贡献仍存在不确定性。最近的结果表明,在一个生态系统模型中,蒸散量(ET)大于其第95百分位数的小时数的年度计数与ET和总初级生产力(GPP)的年度变化密切相关。这表明有利条件的出现对年度碳预算有很大影响。在这里,我们分析了来自AmeriFlux网络中八个森林站点的数据,这些站点至少有7年的连续测量数据。我们表明,对于ET以及碳通量GPP、生态系统呼吸(RE)和净生态系统生产力而言,计算“最活跃小时数/天数”(即通量超过高百分位数的小时数/天数)与各自的年度总和具有良好的相关性,相关系数一般大于0.8。物候转变的解释力要弱得多。通过利用最活跃小时数与年际变化之间的关系,我们将小时数分类为最活跃或较不活跃,并在很大程度上解释了生态系统通量的年际变化,特别是对于GPP和RE。我们的结果表明,更好地理解和模拟高频生态系统通量中高值的出现将有助于更好地理解这些通量的年际变化。