R. W. McDowell, V. O. Snow, R. Tamepo, L. Lilburne, R. Cichota, K. Muraoka, E. Soal
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引用次数: 0
摘要
简单的模型可以帮助减少氮(N)从土地损失和保护水质。然而,初级生产系统的复杂性可能会损害简单模型的准确性。开发了一种工具,用于评估作为N源输入和淋溶和径流相对运输产物的N损失风险。在土壤类型、坡度和长期气候等静态生物物理因素的相互作用下,采用动态过程模型估算了淋溶和径流长期月氮损失风险。来源投入包括(牲畜的)粪便和尿液、肥料、作物残茬和土壤侵蚀。9种土地利用方式的氮素损失风险等级估计值相关(r2 = 0.69, p -1 -1);除了两个之外,所有的观测值都在95%的预测区间内。在所有土地利用中,淋溶占氮损失风险的84%。需要更多的观察来确定氮损失风险是否代表短轮作蔬菜,并解释计算和测量损失之间的潜在滞后时间。该工具的良好性能表明,当在空间上显示时,该工具可用于针对高风险区域采取行动,以减少N损失的风险和水质损害的可能性。
A risk index tool to minimize the risk of nitrogen loss from land to water
Simple models can help reduce nitrogen (N) loss from land and protect water quality. However, the complexity of primary production systems may impair the accuracy of simple models. A tool was developed that assessed the risk of N loss as the product of N source inputs and relative transport by leaching and runoff. A dynamic process-based model was used to estimate the long-term monthly N loss risk by leaching and runoff in response to the interaction of static biophysical factors like soil type, slope, and long-term climate. Source inputs included dung and urine (from livestock), fertilizer, crop residues, and soil erosion. Estimates of the rank of N loss risk were related (r2 = 0.69, p < 0.001) to 96 observations of N loss (kg ha−1 year−1) across nine land uses; all but two of the observations fell within 95% prediction intervals. Across land uses, leaching accounted for 84% of N loss risk. Additional observations are needed to determine if N loss risk is representative of short-rotation vegetables and to account for potential lag times between calculated and measured losses. The good performance of the tool suggests that when displayed spatially, the tool can be used to target high-risk areas with actions to reduce the risk of N loss and the likelihood of water quality impairment.
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.