Letcher Benjamin H, Hocking Daniel J, O'Neil Kyle, Whiteley Andrew R, Nislow Keith H, O'Donnell Matthew J
S.O. Conte Anadromous Fish Research Center, US Geological Survey/Leetown Science Center , Turners Falls , USA.
Department of Environmental Conservation, University of Massachusetts , Amherst , USA.
PeerJ. 2016 Feb 29;4:e1727. doi: 10.7717/peerj.1727. eCollection 2016.
Water temperature is a primary driver of stream ecosystems and commonly forms the basis of stream classifications. Robust models of stream temperature are critical as the climate changes, but estimating daily stream temperature poses several important challenges. We developed a statistical model that accounts for many challenges that can make stream temperature estimation difficult. Our model identifies the yearly period when air and water temperature are synchronized, accommodates hysteresis, incorporates time lags, deals with missing data and autocorrelation and can include external drivers. In a small stream network, the model performed well (RMSE = 0.59°C), identified a clear warming trend (0.63 °C decade(-1)) and a widening of the synchronized period (29 d decade(-1)). We also carefully evaluated how missing data influenced predictions. Missing data within a year had a small effect on performance (∼0.05% average drop in RMSE with 10% fewer days with data). Missing all data for a year decreased performance (∼0.6 °C jump in RMSE), but this decrease was moderated when data were available from other streams in the network.
水温是河流生态系统的主要驱动因素,通常构成河流分类的基础。随着气候变化,强大的河流温度模型至关重要,但估算每日河流温度面临若干重大挑战。我们开发了一个统计模型,该模型考虑了许多可能使河流温度估算变得困难的挑战。我们的模型确定了空气和水温同步的年份周期,适应滞后现象,纳入时间滞后,处理缺失数据和自相关问题,并且可以纳入外部驱动因素。在一个小型河网中,该模型表现良好(均方根误差 = 0.59°C),识别出明显的变暖趋势(0.63°C/十年)以及同步期的延长(29天/十年)。我们还仔细评估了缺失数据对预测的影响。一年内的缺失数据对性能影响较小(数据天数减少10%时,均方根误差平均下降约0.05%)。一年中所有数据均缺失会降低性能(均方根误差跃升约0.6°C),但当网络中其他河流有数据可用时,这种下降会得到缓解。