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基于流场变化的预测农药浓度模型。

Flow-covariate prediction of stream pesticide concentrations.

机构信息

RTI International, Research Triangle Park, North Carolina, USA.

Syngenta Crop Protection, Greensboro, North Carolina, USA.

出版信息

Environ Toxicol Chem. 2018 Jan;37(1):260-273. doi: 10.1002/etc.3946. Epub 2017 Nov 10.

DOI:10.1002/etc.3946
PMID:28802014
Abstract

Potential peak functions (e.g., maximum rolling averages over a given duration) of annual pesticide concentrations in the aquatic environment are important exposure parameters (or target quantities) for ecological risk assessments. These target quantities require accurate concentration estimates on nonsampled days in a monitoring program. We examined stream flow as a covariate via universal kriging to improve predictions of maximum m-day (m = 1, 7, 14, 30, 60) rolling averages and the 95th percentiles of atrazine concentration in streams where data were collected every 7 or 14 d. The universal kriging predictions were evaluated against the target quantities calculated directly from the daily (or near daily) measured atrazine concentration at 32 sites (89 site-yr) as part of the Atrazine Ecological Monitoring Program in the US corn belt region (2008-2013) and 4 sites (62 site-yr) in Ohio by the National Center for Water Quality Research (1993-2008). Because stream flow data are strongly skewed to the right, 3 transformations of the flow covariate were considered: log transformation, short-term flow anomaly, and normalized Box-Cox transformation. The normalized Box-Cox transformation resulted in predictions of the target quantities that were comparable to those obtained from log-linear interpolation (i.e., linear interpolation on the log scale) for 7-d sampling. However, the predictions appeared to be negatively affected by variability in regression coefficient estimates across different sample realizations of the concentration time series. Therefore, revised models incorporating seasonal covariates and partially or fully constrained regression parameters were investigated, and they were found to provide much improved predictions in comparison with those from log-linear interpolation for all rolling average measures. Environ Toxicol Chem 2018;37:260-273. © 2017 SETAC.

摘要

潜在的峰值函数(例如,给定时间段内的最大滚动平均值)是水生环境中农药浓度的重要暴露参数(或目标量),用于生态风险评估。这些目标量需要在监测计划中无采样日准确估计浓度。我们通过通用克里金法将流量作为协变量进行了检查,以改善对每 7 或 14 天采集数据的溪流中最大 m 天(m = 1、7、14、30、60)滚动平均值和莠去津浓度第 95 百分位数的预测。通用克里金预测值与通过直接从美国玉米带地区的莠去津生态监测计划(2008-2013 年)的 32 个地点(89 个地点-年)和俄亥俄州国家水质研究中心(1993-2008 年)的 4 个地点(62 个地点-年)的每日(或近每日)测量的莠去津浓度计算的目标量进行了评估。由于流量数据严重向右偏态,因此考虑了流量协变量的 3 种变换:对数变换、短期流量异常和归一化 Box-Cox 变换。归一化 Box-Cox 变换导致目标量的预测与 7 天采样的对数线性插值(即在对数尺度上进行线性插值)获得的预测值相当。然而,预测似乎受到浓度时间序列不同样本实现之间的回归系数估计变化的负面影响。因此,研究了包含季节性协变量和部分或完全约束回归参数的修订模型,与对数线性插值相比,它们为所有滚动平均值度量提供了更好的预测。环境毒理化学 2018;37:260-273. © 2017 SETAC.

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引用本文的文献

1
Atrazine Ecological Monitoring Program: Two decades of generating daily or near-daily monitoring data in highly vulnerable watersheds.阿特拉津生态监测项目:二十年来在高度脆弱的流域生成每日或近乎每日的监测数据。
J Environ Qual. 2025 Sep-Oct;54(5):1060-1076. doi: 10.1002/jeq2.70014. Epub 2025 Mar 25.