State Key Laboratory of Water Environment Simulation, School of Environment, Beijing Normal University, Beijing, China.
PLoS One. 2013;8(1):e54520. doi: 10.1371/journal.pone.0054520. Epub 2013 Jan 21.
Best Management Practices (BMPs) are one of the most effective methods to control nonpoint source (NPS) pollution at a watershed scale. In this paper, the use of a topography analysis incorporated optimization method (TAIOM) was proposed, which integrates topography analysis with cost-effective optimization. The surface status, slope and the type of land use were evaluated as inputs for the optimization engine. A genetic algorithm program was coded to obtain the final optimization. The TAIOM was validated in conjunction with the Soil and Water Assessment Tool (SWAT) in the Yulin watershed in Southwestern China. The results showed that the TAIOM was more cost-effective than traditional optimization methods. The distribution of selected BMPs throughout landscapes comprising relatively flat plains and gentle slopes, suggests the need for a more operationally effective scheme, such as the TAIOM, to determine the practicability of BMPs before widespread adoption. The TAIOM developed in this study can easily be extended to other watersheds to help decision makers control NPS pollution.
最佳管理措施 (BMPs) 是控制流域尺度非点源 (NPS) 污染的最有效方法之一。本文提出了一种地形分析与优化方法 (TAIOM) 的应用,该方法将地形分析与具有成本效益的优化相结合。地表状况、坡度和土地利用类型被评估为优化引擎的输入。遗传算法程序被编码以获得最终优化。TAIOM 与中国西南部玉林流域的土壤和水评估工具 (SWAT) 一起进行了验证。结果表明,TAIOM 比传统的优化方法更具成本效益。在包括相对平坦的平原和缓坡的景观中选择的 BMPs 的分布表明,需要更具操作性的有效方案,如 TAIOM,在广泛采用之前确定 BMPs 的实用性。本研究中开发的 TAIOM 可以很容易地扩展到其他流域,以帮助决策者控制 NPS 污染。