Key Laboratory of the Ministry of Education for Regional Environmental and Eco-Remediation, Shenyang University, Shenyang, 110044, People's Republic of China.
Liaoning Provincial Scientific and Technical Center for Ecological Environment Protection, Shenyang, 110000, People's Republic of China.
Environ Sci Pollut Res Int. 2020 Nov;27(33):41515-41523. doi: 10.1007/s11356-020-10178-4. Epub 2020 Jul 20.
This paper proposes a quantitative method to optimize the existing river monitoring network based on a modified approaching degree model, T test, and Euclidean distance. In this study, the Liaohe River located in Liaoning province, China, was taken as a research object. Samples were collected from 8 sampling sites throughout the monitoring network, and water quality parameters were analyzed every 2 months from January 2009 to December 2010. The results show that the average concentrations of the ammonia nitrogen (NH-N) and chemical oxygen demand (COD) were beyond grade III of the Environmental Quality Standards for Surface Water of China (GB3838-2002), and they were the main water quality parameters. After optimization, the number of monitoring sections along the Liaohe River was reduced to five from the original eight, thus saving 37.5% of the monitoring cost; meanwhile, there is no significant difference between the un-optimized and optimized monitoring networks, and the optimized monitoring network remains to be able to perform as good as the original one. In addition, the total data attainment rate was improved greatly, and the duplicate setting degree of monitoring points decreased significantly compared with other optimal methods. The optimized monitoring network proves to be more efficient, reasonable, and economically feasible, so this quantitative method can help optimize the changing orderly river monitoring networks.
本文提出了一种基于改进逼近度模型、T 检验和欧几里得距离的定量方法来优化现有的河流监测网络。本研究以中国辽宁省的辽河为研究对象。从 2009 年 1 月至 2010 年 12 月,每隔 2 个月在监测网络的 8 个采样点采集样本,并分析水质参数。结果表明,氨氮(NH-N)和化学需氧量(COD)的平均浓度超过了《地表水环境质量标准》(GB3838-2002)的 III 类标准,是主要的水质参数。优化后,辽河沿监测断面数量从原来的 8 个减少到 5 个,监测成本节约了 37.5%;同时,优化前后监测网络之间没有显著差异,优化后的监测网络仍然能够像原始网络一样发挥良好的作用。此外,总数据获取率大大提高,与其他优化方法相比,监测点的重复设置程度显著降低。优化后的监测网络效率更高、更合理、更经济可行,因此这种定量方法可以帮助优化变化有序的河流监测网络。