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Using Simulation and Budget Models to Scale-Up Nitrogen Leaching from Field to Region in Canada

机译:使用模拟和预算模型来扩大加拿大从田间到区域的氮淋失

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摘要

Efforts are underway at Agriculture and Agri-Food Canada (AAFC) to develop an integrated, nationally applicable, socioeconomic/biophysical modeling capability in order to predict the environmental impacts of policy and program scenarios. This paper outlines our Decision Support System (DSS), which integrates the IROWCN (Indicator of the Risk of Water Contamination by Nitrogen) index with the agricultural policy model CRAM (Canadian Regional Agricultural Model) and presents an outline of our methodology to provide independent assessments of the IROWCN results through the use of nitrogen (N) simulation models in select, data-rich areas. Three field-level models — DSSAT, N_ABLE, and EPIC — were evaluated using local measured data. The results show that all three dynamic models can be used to simulate biomass, grain yield, and soil N dynamics at the field level; but the accuracy of the models differ, suggesting that models need to be calibrated using local measured data before they are used in Canada. Further simulation of IROWCN in a maize field using N_ABLE showed that soil-mineral N levels are highly affected by the amount of fertilizer N applied and the time of year, meaning that fertilizer and manure N applications and weather data are crucial for improving IROWCN. Methods of scaling-up simulated IROWCN from field-level to soil-landscape polygons and CRAM regions are discussed.
机译:加拿大农业和农业食品部(AAFC)正在努力开发一种综合的,适用于全国的社会经济/生物物理建模能力,以便预测政策和计划方案的环境影响。本文概述了我们的决策支持系统(DSS),该系统将IROWCN(氮污染水的风险指标)指数与农业政策模型CRAM(加拿大区域农业模型)相结合,并提出了我们提供独立评估方法的概述通过在选定的,数据丰富的区域中使用氮(N)模拟模型,对IROWCN结果进行分析。使用本地测量数据评估了三个字段级模型DSSAT,N_ABLE和EPIC。结果表明,这三个动力学模型都可以用来模拟田间水平的生物量,粮食产量和土壤氮素动态。但是模型的准确性有所不同,这表明在加拿大使用模型之前,必须先使用本地测量数据对模型进行校准。使用N_ABLE在玉米田中对IROWCN进行的进一步模拟表明,土壤矿物氮水平受施氮量和施肥时间的影响很大,这意味着施肥和肥料氮素和天气数据对于改善IROWCN至关重要。讨论了将模拟的IROWCN从场级扩展到土壤-景观多边形和CRAM区域的方法。

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