Kamrath Brock, Yuan Yongping, Manning Nathan, Johnson Laura
Oak Ridge Institute for Science and Education (ORISE) Postdoctoral Research Participant at U.S. Environmental Protection Agency, Research Triangle Park, NC.
USEPA, Office of Research and Development, Research Triangle Park, NC.
J Hydrol (Amst). 2023 Feb 1;617(B):1-11. doi: 10.1016/j.jhydrol.2022.128906.
Accurate estimates of nutrient loads are necessary to identify critical source areas and quantify the impact of management practices on pollutant export. Previous studies have investigated nutrient load estimate uncertainty, but they often focus on nutrient loads estimated using an interpolation method for large-scale watersheds with short-term datasets. The study objective was to quantify uncertainty in soluble reactive phosphorus (SRP), total phosphorus (TP), and suspended solids (SS) load estimates from two small (<103 km2) agricultural watersheds in the western Lake Erie Basin resulting from different sampling frequencies. Each watershed had high temporal resolution datasets of discharge (15 min) and nutrient concentration (1 to 3 samples per day) collected over a 30-year period (1990-2020). Firstly, SRP, TP, and SS loads were calculated using the high temporal resolution datasets, which was assumed as "true loads". Secondly, the high temporal concentration data were decomposed to semiweekly, weekly, biweekly, and monthly sampling and annual loads were estimated using four common load estimation methods to assess the effect of sampling frequency and load estimation method on load estimate error. Across the four different methods, the composite method had the lowest relative root mean square and absolute bias, but the rectangular interpolation method was the most precise. However, even with semiweekly sampling, the composite method resulted in an unacceptable level of precision (average imprecision = 39 %), while the interpolation method resulted in an unacceptable bias (average absolute bias = 16 %). Because neither method could provide acceptable accuracy and precision at the lowest decrease in sampling (e.t. semiweekly sampling), continued daily sampling is recommended in these watersheds.
准确估算养分负荷对于确定关键源区以及量化管理措施对污染物输出的影响至关重要。以往的研究调查了养分负荷估算的不确定性,但它们通常侧重于使用插值法对具有短期数据集的大规模流域进行的养分负荷估算。本研究的目的是量化伊利湖盆地西部两个小型(<103平方公里)农业流域因不同采样频率而导致的可溶性活性磷(SRP)、总磷(TP)和悬浮固体(SS)负荷估算的不确定性。每个流域都有在30年期间(1990 - 2020年)收集的高时间分辨率的流量(15分钟)和养分浓度(每天1至3个样本)数据集。首先,使用高时间分辨率数据集计算SRP、TP和SS负荷,将其视为“真实负荷”。其次,将高时间浓度数据分解为每两周、每周、每两周和每月采样,并使用四种常用的负荷估算方法估算年负荷,以评估采样频率和负荷估算方法对负荷估算误差的影响。在这四种不同方法中,综合法的相对均方根和绝对偏差最低,但矩形插值法最精确。然而,即使是每两周采样一次,综合法的精度水平也不可接受(平均不精确率 = 39%),而插值法的偏差不可接受(平均绝对偏差 = 16%)。由于在最低采样频率降低(例如每两周采样)时,两种方法都无法提供可接受的准确性和精度,因此建议在这些流域继续进行每日采样。