Seasonal variability of nitrate concentrations below the root zone: A monthly predictive modeling approach.

IF 2.3 4区 环境科学与生态学 Q3 ENVIRONMENTAL SCIENCES
Franca Giannini-Kurina, Raphael J M Schneider, Anker Lajer Højberg, Christen Duus Børgesen
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引用次数: 0

Abstract

Nitrogen Leaching Estimation System version 5 (NLES5) is an empirical model extensively used for estimating annual nitrate leaching from the root zone. The model is based on leaching data obtained by multiplying the measured nitrate concentration below the root zone depth by the percolation calculated using a hydrological model, which together provides estimates of annual nitrate leaching from the root zone. However, this approach has some limitations, including redundancy and unclear error propagation in the relationship between nitrate concentration and percolation without considering seasonal variability. This study presents an approach to estimate the monthly distribution of nitrate concentration based on measurements of soil water samples taken with suction cells installed below the root zone. Our workflow includes screening algorithms to identify the most relevant predictors, testing the predictive performance, reducing the number of predictions for practical implementation, and evaluating the impact on the final nitrate leaching calculations. The workflow was applied to the suction cup measurement dataset in the NLES5 support database of field experiments. The results show that the regression tree-based Extreme Gradient Boosting algorithm effectively estimates monthly variations in nitrate concentrations without relying on percolation data, by using time, management, soil, and weather covariates such as month, spring mineral fertilization, main crop, winter crop, clay content, mean monthly temperature, and accumulated precipitation in the harvest year. A cross-validated error of 34% was achieved for nitrate concentration, and a correlation of 0.8 with nitrate leaching calculated from observed concentrations demonstrates a consistent description of the seasonal distribution of nitrate concentrations below the root zone.

根区以下硝酸盐浓度的季节变化:月度预测建模方法。
氮淋失估算系统版本5 (NLES5)是一个经验模型,广泛用于估计每年从根区硝酸盐淋失。该模型基于通过将根区深度以下测量的硝酸盐浓度乘以使用水文模型计算的渗透得到的淋滤数据,两者一起提供了根区每年硝酸盐淋滤的估计。然而,这种方法存在一定的局限性,包括在没有考虑季节变化的情况下,硝酸盐浓度与渗透之间的关系存在冗余和不明确的误差传播。本研究提出了一种估算硝酸盐浓度月度分布的方法,该方法基于安装在根区以下的吸力池所采集的土壤水样的测量。我们的工作流程包括筛选算法以确定最相关的预测因子,测试预测性能,减少实际实施的预测数量,并评估对最终硝酸盐浸出计算的影响。将该工作流程应用于NLES5野外实验支持数据库中的吸盘测量数据集。结果表明,基于回归树的极端梯度增强算法通过使用月份、春季矿物施肥、主要作物、冬季作物、粘土含量、月平均温度和收获年累积降水量等时间、管理、土壤和天气等共变量,可以有效地估计硝酸盐浓度的月变化,而不依赖于渗流数据。硝酸盐浓度的交叉验证误差为34%,根据观察到的浓度计算出的硝酸盐淋溶相关性为0.8,这表明了对根区以下硝酸盐浓度季节性分布的一致描述。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of environmental quality
Journal of environmental quality 环境科学-环境科学
CiteScore
4.90
自引率
8.30%
发文量
123
审稿时长
3 months
期刊介绍: Articles in JEQ cover various aspects of anthropogenic impacts on the environment, including agricultural, terrestrial, atmospheric, and aquatic systems, with emphasis on the understanding of underlying processes. To be acceptable for consideration in JEQ, a manuscript must make a significant contribution to the advancement of knowledge or toward a better understanding of existing concepts. The study should define principles of broad applicability, be related to problems over a sizable geographic area, or be of potential interest to a representative number of scientists. Emphasis is given to the understanding of underlying processes rather than to monitoring. Contributions are accepted from all disciplines for consideration by the editorial board. Manuscripts may be volunteered, invited, or coordinated as a special section or symposium.
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