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基于PMF模型与稳定同位素技术联用的地下水污染源识别

[Groundwater Pollution Source Identification by Combination of PMF Model and Stable Isotope Technology].

作者信息

Zhang Han, Du Xin-Yu, Gao Fei, Zeng Zhuo, Cheng Si-Qian, Xu Yi

机构信息

Department of Environmental Science and Engineering, Southwest Jiaotong University, Chengdu 610031, China.

Chengdu Institute of Planning & Design, Chengdu 610041, China.

出版信息

Huan Jing Ke Xue. 2022 Aug 8;43(8):4054-4063. doi: 10.13227/j.hjkx.202110174.

Abstract

The pollution source identification methods based on traditional water quality monitoring and pollutant discharge loading typically require a high frequency of monitoring and generate a level of uncertainty in the identification results, owing to their limitations on the accurate and quantitative assessment of pollution source identification, migration, and transformation. This study combined multivariate statistical analysis and stable isotope technology to identify groundwater pollution sources in a typical multiple land-use area of the Chengdu Plain. A positive matrix factorization (PMF) model was adopted to reduce the interference of mass environmental factors on source identification and to determine the main factors influencing groundwater quality. Subsequently, a Bayesian stable isotope mixing model was developed to quantify the apportionment of each pollution source to groundwater nitrate (NO) with the consideration of hydro-chemical and land-use information. The results showed that the concentrations of NO, NO, NH, Mn, Fe, SO, and Cl in groundwater of the study area exceeded the standard to different extents, presenting spatial variation. The main form of inorganic nitrogen in groundwater was NO. In general, concentrations of groundwater NO were the highest in vegetable fields (9.29 mg·L on average), followed by livestock and poultry breeding farms (7.66 mg·L) and arable land (7.09 mg·L), whereas concentrations of groundwater NO in industrial areas were the lowest (2.20 mg·L). Groundwater quality in the study area was affected by geological processes, agricultural activities, hydrogeochemical evolution, and domestic and industrial discharges. Agricultural activities were the main contributor to the increase in groundwater NO in the study area. Chemical fertilizer (32%) and soil nitrogen (25%) contributed greatly to groundwater NO in agricultural areas, whereas sewage (28%) and atmospheric precipitation (27%) contributed most groundwater NO in industrial areas. Thus, the combination of multivariate statistical analysis and stable isotope technology could identify groundwater pollution sources and their apportionment effectively, providing scientific support for the prevention and control of groundwater pollution.

摘要

基于传统水质监测和污染物排放负荷的污染源识别方法通常需要高频监测,并且由于其在污染源识别、迁移和转化的准确和定量评估方面存在局限性,导致识别结果存在一定程度的不确定性。本研究结合多元统计分析和稳定同位素技术,对成都平原典型多土地利用区域的地下水污染源进行识别。采用正定矩阵因子分解(PMF)模型减少大量环境因素对源识别的干扰,并确定影响地下水水质的主要因素。随后,开发了贝叶斯稳定同位素混合模型,在考虑水化学和土地利用信息的情况下,量化各污染源对地下水硝酸盐(NO)的贡献率。结果表明,研究区域地下水中NO、NO、NH、Mn、Fe、SO和Cl的浓度均不同程度超标,呈现出空间变化特征。地下水中无机氮的主要形态为NO。总体而言,菜地地下水NO浓度最高(平均9.29mg·L),其次是畜禽养殖场(7.66mg·L)和耕地(7.09mg·L),而工业区地下水NO浓度最低(2.20mg·L)。研究区域地下水水质受地质过程、农业活动、水文地球化学演化以及生活和工业排放的影响。农业活动是研究区域地下水中NO增加的主要贡献者。化肥(32%)和土壤氮(25%)对农业区域地下水中的NO贡献较大,而污水(28%)和大气降水(27%)对工业区地下水中的NO贡献最大。因此,多元统计分析和稳定同位素技术相结合能够有效识别地下水污染源及其贡献率,为地下水污染防治提供科学支撑。

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