Engloner Attila I, Németh Kitti, Dobosy Péter, Óvári Mihály
Centre for Ecological Research, Karolina út 29, Budapest, H-1113, Hungary.
Nuclear Security Department, Centre for Energy Research, Konkoly-Thege Miklós út 29-33, Budapest, H-1121, Hungary.
Heliyon. 2023 Sep 15;9(9):e20120. doi: 10.1016/j.heliyon.2023.e20120. eCollection 2023 Sep.
The detection of non-point pollution in large rivers requires high-frequency sampling over a longer period of time, which, however presumably provides data with large spatial and temporal variance. Variability may mean that data sets recorded upstream and downstream from a densely populated area overlap, suggesting at first glance that the urban area did not affect water quality. This study presents a simple way to explore trend-like effects of non-point pollution in the Danube based on data that varied strongly in space and time. For one year, biweekly sampling was carried out upstream and downstream from a large city with negligible emission of untreated wastewater and the surrounding settlements, industrial and agricultural areas. Although most of the values of the 34 examined physicochemical characteristics fell within the range of data previously published for the Danube, and the mean values of all parameters indicated unpolluted surface water, different water quality was revealed upstream and downstream from the metropolitan area at each sampling time. Since the physicochemical characteristics causing the separation also differed from time to time, univariate tests and consensus ordination were used to determine which variables changed similarly during most of the examined period. With this evaluation method, several diffuse pollutants of anthropogenic origin contaminating the Danube in the long term were identified, such as nitrogen, phosphorus, sulphate, chloride, potassium and vanadium. The results demonstrated that trend-like effects of non-point pollution can be detected even in a large river, where physicochemical measurements can vary strongly in space and time.
对大河中的非点源污染进行检测需要在较长时间内进行高频采样,然而,这可能会提供具有较大时空差异的数据。这种变异性可能意味着在人口密集地区上下游记录的数据集会有重叠,乍一看表明城市地区并未影响水质。本研究基于在时空上差异很大的数据,提出了一种简单的方法来探究多瑙河中类似趋势的非点源污染影响。在一年的时间里,对一个大城市上下游进行了每两周一次的采样,该城市未经处理的废水以及周边居民区、工农业区的排放量可忽略不计。尽管所检测的34种理化特征的大多数值都落在多瑙河先前公布的数据范围内,且所有参数的平均值表明地表水未受污染,但在每次采样时,都发现大都市区上下游的水质有所不同。由于导致差异的理化特征也随时间变化,因此使用单变量测试和共识排序来确定在大多数检测期间哪些变量的变化相似。通过这种评估方法,确定了几种长期污染多瑙河的人为来源的扩散污染物,如氮、磷、硫酸盐、氯化物、钾和钒。结果表明,即使在一条大河中,理化测量在时空上变化很大,也能检测到类似趋势的非点源污染影响。