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Assessment of Agricultural Best Management Practices Using Models: Current Issues and Future Perspectives

机译:使用模型评估农业最佳管理实践:当前问题和未来展望

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Best management practices (BMPs) are the most effective and practicable means to control nonpoint source (NPS) pollution at desired levels. Models are valuable tools to assess their effectiveness. Watershed managers need to choose appropriate and effective modelling methods for a given set of conditions. This paper considered state-of-the-art modelling strategies for the assessment of agricultural BMPs. Typical watershed models and specific models were analyzed in detail. Further improvements, including simplified tools, model integration, and incorporation of climate change and uncertainty analysis were also explored. This paper indicated that modelling methods are strictly scale dependent, both spatially and temporally. Despite current achievements, there is still room for future research, such as broadening the range of the pollutants considered, introducing more local BMPs, improving the representation of the functionality of BMPs, and gathering monitoring date for validation of modelled results. There is also a trend towards agricultural decision support systems (DSSs) for assessing agricultural BMPs, in which models of different scales are seamlessly integrated to bridge the scale and data gaps. This review will assist readers in model selection and development, especially those readers concerned about NPS pollution and water quality control.
机译:最佳管理实践(BMP)是将非点源(NPS)污染控制在所需水平的最有效和可行的方法。模型是评估其有效性的宝贵工具。流域管理者需要针对给定的条件选择合适且有效的建模方法。本文考虑了用于评估农业BMP的最新建模策略。详细分析了典型的分水岭模型和特定模型。还探讨了进一步的改进,包括简化工具,模型集成以及纳入气候变化和不确定性分析。本文指出建模方法在空间和时间上都严格取决于比例。尽管取得了当前的成就,但仍有未来的研究空间,例如扩大所考虑的污染物范围,引入更多的本地BMP,改善BMP功能的表示形式以及收集监测日期以验证建模结果。还有一种用于评估农业BMP的农业决策支持系统(DSS)的趋势,其中无缝集成了不同规模的模型以弥合规模和数据缺口。这篇评论将帮助读者选择模型和开发模型,尤其是那些关注NPS污染和水质控制的读者。

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