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研究:评估河口氮负荷估算中的不确定性以用于研究、规划和风险评估。

RESEARCH: Assessing Uncertainty in Estimates of Nitrogen Loading to Estuaries for Research, Planning, and Risk Assessment.

作者信息

Collins G, Kremer JN, Valiela I

机构信息

San Francisco Bay Conservation Development Commission, 30 Van Ness Avenue, Suite 2011, San Francisco, California 94102, USA

出版信息

Environ Manage. 2000 Jun;25(6):635-645. doi: 10.1007/s002670010050.

Abstract

/ There can be considerable uncertainty associated with calculations of nutrient loading to estuaries from their watersheds, arising from uncertainty in the variables used in the calculation. Analysis of uncertainty is particularly important in the context of planning and management, where such information can be useful in helping make decisions about development in the coastal zone and in risk assessment, where probability of worse-case extremes may be relevant. This fact has been largely ignored when loading calculations have been made, presumably because both uncertainty estimates for the input variables and a standard method were lacking. Parametric (propagation for normal error estimates) and nonparametric methods (bootstrap and enumeration of combinations) to assess the uncertainty in calculated rates of nitrogen loading were compared, based on the propagation of uncertainty observed in the variables used in the calculation. In addition, since such calculations are often based on literature surveys rather than random replicate measurements for the site in question, error propagation was also compared using the uncertainty of the sampled population (e.g., standard deviation) as well as the uncertainty of the mean (e.g., standard error of the mean). Calculations for the predicted nitrogen loading to a shallow estuary (Waquoit Bay, MA) were used as an example. The previously estimated mean loading from the watershed (5,400 ha) to Waquoit Bay (600 ha) was 23,000 kg N yr(-1). The mode of a nonparametric estimate of the probability distribution differed dramatically, equaling only 70% of this mean. Repeated observations were available for only 8 of the 16 variables used in our calculation. We estimated uncertainty in model predictions by treating these as sample replicates. Parametric and nonparametric estimates of the standard error of the mean loading rate were 12-14%. However, since the available data include site-to-site variability, as is often the case, standard error may be an inappropriate measure of confidence. The standard deviations were around 38% of the loading rate. Further, 95% confidence intervals differed between the nonparametric and parametric methods, with those of the nonparametric method arranged asymmetrically around the predicted loading rate. The disparity in magnitude and symmetry of calculated confidence limits argue for careful consideration of the nature of the uncertainty of variables used in chained calculations. This analysis also suggests that a nonparametric method of calculating loading rates using most frequently observed values for variables used in loading calculations may be more appropriate than using mean values. These findings reinforce the importance of including assessment of uncertainty when evaluating nutrient loading rates in research and planning. Risk assessment, which may need to consider relative probability of extreme events in worst-case scenarios, will be in serious error using normal estimates, or even the nonparametric bootstrap. A method such as our enumeration of combinations produces a more reliable distribution of risk.

摘要

/ 从流域向河口的养分负荷计算可能存在相当大的不确定性,这源于计算中所用变量的不确定性。在规划和管理背景下,不确定性分析尤为重要,因为此类信息有助于做出有关沿海地区开发的决策以及进行风险评估,在风险评估中,最坏情况极端事件的概率可能至关重要。在进行负荷计算时,这一事实在很大程度上被忽视了,大概是因为缺乏输入变量的不确定性估计和标准方法。基于计算中所用变量观察到的不确定性传播,比较了用于评估氮负荷计算速率不确定性的参数方法(正态误差估计的传播)和非参数方法(自助法和组合枚举法)。此外,由于此类计算通常基于文献调查而非对相关场地的随机重复测量,还使用抽样总体的不确定性(如标准差)以及均值的不确定性(如均值标准误差)来比较误差传播。以对一个浅水河口(马萨诸塞州瓦夸伊特湾)预测的氮负荷计算为例。先前估计从流域(5400公顷)到瓦夸伊特湾(600公顷)的平均负荷为23000千克氮/年。概率分布的非参数估计模式差异巨大,仅为该均值的70%。在我们计算中使用的16个变量中,只有8个有重复观测值。我们将这些视为样本重复来估计模型预测中的不确定性。平均负荷率标准误差的参数估计和非参数估计为12 - 14%。然而,由于现有数据通常包含场地间的变异性,标准误差可能不是衡量置信度的合适指标。标准差约为负荷率的38%。此外,非参数方法和参数方法的95%置信区间不同,非参数方法的置信区间围绕预测负荷率不对称分布。计算出的置信限在大小和对称性上的差异表明,需要仔细考虑链式计算中所用变量不确定性的性质。该分析还表明,使用负荷计算中变量最常观测值的非参数方法来计算负荷率可能比使用均值更合适。这些发现强化了在研究和规划中评估养分负荷率时纳入不确定性评估的重要性。风险评估可能需要考虑最坏情况情景下极端事件的相对概率,使用正态估计甚至非参数自助法会出现严重误差。像我们的组合枚举法这样的方法能产生更可靠的风险分布。

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