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四种农药淋溶模型的敏感性分析。

Sensitivity analyses for four pesticide leaching models.

作者信息

Dubus Igor G, Brown Colin D, Beulke Sabine

机构信息

Cranfield Centre for EcoChemistry, Cranfield University, Silsoe, Beds MK45 4DT, UK.

出版信息

Pest Manag Sci. 2003 Sep;59(9):962-82. doi: 10.1002/ps.723.

Abstract

Sensitivity analyses using a one-at-a-time approach were carried out for leaching models which have been widely used for pesticide registration in Europe (PELMO, PRZM, PESTLA and MACRO). Four scenarios were considered for simulation of the leaching of two theoretical pesticides in a sandy loam and a clay loam soil, each with a broad distribution across Europe. Input parameters were varied within bounds reflecting their uncertainty and the influence of these variations on model predictions was investigated for accumulated percolation at 1-m depth and pesticide loading in leachate. Predictions for the base-case scenarios differed between chromatographic models and the preferential flow model MACRO for which large but transient pesticide losses were predicted in the clay loam. Volumes of percolated water predicted by the four models were affected by a small number of input parameters and to a small extent only, suggesting that meteorological variables will be the main drivers of water balance predictions. In contrast to percolation, predictions for pesticide loss were found to be sensitive to a large number of input parameters and to a much greater extent. Parameters which had the largest influence on the prediction of pesticide loss were generally those related to chemical sorption (Freundlich exponent nf and distribution coefficient Kf) and degradation (either degradation rates or DT50, QTEN value). Nevertheless, a significant influence of soil properties (field capacity, bulk density or parameters defining the boundary between flow domains in MACRO) was also noted in at least one scenario for all models. Large sensitivities were reported for all models, especially PELMO and PRZM, and sensitivity was greater where only limited leaching was simulated. Uncertainty should be addressed in risk assessment procedures for crop-protection products.

摘要

对欧洲广泛用于农药登记的淋溶模型(PELMO、PRZM、PESTLA和MACRO)采用逐一分析方法进行了敏感性分析。考虑了四种情景,以模拟两种理论农药在砂壤土和粘壤土中的淋溶情况,这两种土壤在欧洲分布广泛。输入参数在反映其不确定性的范围内变化,并研究了这些变化对1米深度累积渗滤量和渗滤液中农药负荷的模型预测的影响。色谱模型与优先流模型MACRO对基准情景的预测不同,后者预测粘壤土中农药有大量但短暂的损失。四个模型预测的渗水量仅受到少数输入参数的较小影响,这表明气象变量将是水平衡预测的主要驱动因素。与渗滤情况相反,发现农药损失预测对大量输入参数敏感得多。对农药损失预测影响最大的参数通常是与化学吸附(弗伦德利希指数nf和分配系数Kf)和降解(降解速率或DT50、QTEN值)相关的参数。然而,在所有模型至少一种情景中也注意到土壤性质(田间持水量、容重或定义MACRO中流动域边界的参数)有显著影响。所有模型都报告了较大的敏感性,尤其是PELMO和PRZM,在模拟有限淋溶的情况下敏感性更高。在作物保护产品的风险评估程序中应解决不确定性问题。

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