Comprehensive Evaluation Method of Agro-Ecological Water Environment Based on Mathematical Filtering Algorithm

Xiaoying Wang

Ekoloji, 2019, Issue 108, Pages: 901-906


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In this paper, the agro-ecological water environment in Shanghai is systematically evaluated by mathematical filtering algorithm. Based on the basic theory of agricultural water resource utilization efficiency, this paper defines the agricultural water resource, its characteristics and utilization efficiency and other related concepts. In view of the existing problems and causes, countermeasures and Suggestions are put forward, such as improving the comprehensive utilization efficiency of water resources, controlling the over-exploitation of groundwater resources, improving the ecological environment of agricultural water resources and perfecting the management system of agricultural water resources.


investigation and analysis, comprehensive evaluation, Optimal allocation of water resources


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