面源污染智慧监管的破局方案: 从精准观测到精细管理

A breakthrough program for intelligent regulation of non-point source pollution: From accurate observation to fine management

  • 摘要: 农业面源污染不仅造成了地表水环境恶化, 而且严重制约了农业绿色可持续发展, 近年来愈发得到各部门高度重视, 相关监测方案和管理体系逐步建立, 但是仍存在面源污染治理成效较低的问题。本文总结了面源污染监测在不同尺度下的监测对象、时空精度、污染源识别方案和管理措施现状, 指出了监测精度不足、污染源识别动态性不足、污染源和管理措施匹配性不足的瓶颈, 这也直接或间接导致面源污染监测体系不健全、智能化不足、精细化程度较低和污染治理效率较低等问题。随着信息化和数字化发展, 物联网平台通过集成天空地一体化监测设备与算法, 成为智能化监管的关键抓手, 为面源污染精细化监测提供了技术支撑, 构建农业面源污染物联网智能观测体系, 解决模型关键参数观测精度问题, 利用“面源污染模型+指纹示踪”的面源多污染源识别与追踪技术体系, 解决污染源精准定位问题, 考虑多污染源和多治理模式的成效评估及方案优选, 解决精准化和差别化治理问题。最终实现面源管控的系统性、集成性和智能性水平提升, 打通从“监测”到“治理”的关键突破路径。“十四五”期间, 国家重点研发计划启动实施“农业面源、重金属污染防控和绿色投入品研发”重点专项, 其中重点开展“典型流域面源污染物智能监测和风险识别及调控技术”等相关研究, 物联网智能监测平台应用与示范在太湖流域逐步开展, 为农业面源污染智慧监管破局提供了重要参考。

     

    Abstract: Agricultural non-point source pollution not only causes deterioration of the surface water environment but also seriously restricts the green and sustainable development of agriculture. In recent years, relevant monitoring plans and management systems with increasing emphasis on non-point source pollution control have gradually been established in China. However, there are still some problems with the low effectiveness of non-point source pollution control. We summarized the status of monitoring targets, spatiotemporal resolution, source identification methods, and management measures for non-point pollution monitoring at different scales. This pointed out the problems of discontinuous monitoring of non-point source pollution, insufficient spatiotemporal refinement and estimation accuracy of non-point source pollution load, lack of dynamic identification of pollution sources, and insufficient matching between pollution sources and management measures, which directly or indirectly lead to an imperfect monitoring system, insufficient intelligence, low level of refinement, and low efficiency of pollution control for non-point source pollution. With the development of informatization and digitization, the Internet of Things platform has become a key lever for intelligent supervision by integrating sky and ground monitoring equipment and algorithms and providing technical support for finely monitoring non-point source pollution. The construction of an intelligent observation system for Internet of Things for agricultural non-point source pollutant to improve the observation accuracy of key parameters, using the “non-point source model + fingerprint tracing” technology system for identifying and tracking multiple sources of non-point source pollutants sources area, and considering the effectiveness evaluation and scheme optimization of multi-source and multi governance models to solve the problem of precise and differentiated governance was proposed. Finally, the systematic, integrated, and intelligent level of non-point source control will be improved, and connect the key breakthrough path from “monitoring” to “governance”. During the “14th Five-Year Plan” period, the National Key Research and Development Plan was launched and implemented the key special project of “Agricultural Non-Point Source, Heavy Metal Pollution Prevention and Control and Green Input Product Research and Development”, which focused on the relevant research of “Intelligent Monitoring, Risk Identification and Regulation Technology of Non-Point Source Pollutants in Typical Basins”. The application and demonstration of the Internet of Things intelligent monitoring platform were carried out in the Taihu Basin, which has both plain and hilly complex terrain, a dense population, and active agricultural activities. This typical case has integrated monitoring instruments, a non-point source pollution simulation model, pollution source identification, and other parts, providing an important reference for the intelligent supervision of agricultural non-point source pollution.

     

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