Henjum Michael B, Hozalski Raymond M, Wennen Christine R, Arnold William, Novak Paige J
Department of Civil Engineering, University of Minnesota, 500 Pillsbury Dr. SE, Minneapolis, MN 55455, USA.
J Environ Monit. 2010 Jan;12(1):225-33. doi: 10.1039/b912544b. Epub 2009 Nov 11.
Quantification of organic and microbial pollutant loading is expensive and labor-intensive because collection and analysis of grab samples are needed. Instruments are available, however, for in situ analysis of basic water quality parameters at high temporal resolution. Throughout the late summer and fall of 2008 a two-node water quality monitoring network was deployed to measure turbidity, specific conductance, pH, depth, temperature, dissolved oxygen, and nitrate at high frequencies in two urban streams in the Minneapolis, MN metropolitan area. Grab samples also were collected at 2 h intervals for 22 h during two dry periods and five rain events and analyzed for organic and microbial pollutants. This study investigated the viability of using in situ near real-time sensors to predict fecal coliforms, prometon (a residential herbicide), atrazine (an agricultural herbicide), and caffeine (a wastewater indicator) concentrations. Such pollutants can be used as indicators of sources that contribute to what is often termed "urban stream syndrome." At one stream, linear correlations were observed between nitrate and caffeine (R(2) = 0.66), turbidity and prometon (R(2) = 0.91), and discharge and prometon (R(2) = 0.92). At another location, caffeine linearly correlated with specific conductance (R(2) = 0.64). A lack of correlation with sensed water quality parameters was also observed with some of the pollutants. When one considers that error is estimated to be as high as 200% when using monthly grab samples to estimate pollutant loading in streams, even moderate correlations, such as the ones found in this study, can provide better loading estimates if frequently sensed parameters can be used for load estimation. Therefore, such site-specific relationships can be used to estimate the loading of specific pollutants in near real-time until robust low-cost technologies to analyze these pollutants in situ become available.
由于需要采集和分析抓取样本,对有机和微生物污染物负荷进行量化既昂贵又耗费人力。不过,现有仪器可用于以高时间分辨率对基本水质参数进行现场分析。在2008年夏末和秋季,部署了一个双节点水质监测网络,以高频测量明尼苏达州明尼阿波利斯市大都市区两条城市溪流中的浊度、电导率、pH值、深度、温度、溶解氧和硝酸盐。在两个干旱期和五次降雨事件期间,还每隔2小时采集一次抓取样本,持续22小时,并对有机和微生物污染物进行分析。本研究调查了使用现场近实时传感器预测粪大肠菌群、扑灭通(一种家用除草剂)、阿特拉津(一种农用除草剂)和咖啡因(一种废水指标)浓度的可行性。此类污染物可用作导致常被称为“城市溪流综合症”的污染源的指标。在一条溪流中,观察到硝酸盐与咖啡因之间存在线性相关性(R² = 0.66)、浊度与扑灭通之间存在线性相关性(R² = 0.91)以及流量与扑灭通之间存在线性相关性(R² = 0.92)。在另一个地点,咖啡因与电导率呈线性相关(R² = 0.64)。还观察到一些污染物与感测到的水质参数缺乏相关性。当考虑到使用月度抓取样本估算溪流中的污染物负荷时误差估计高达200%,那么即使是本研究中发现的中等相关性,如果能够将频繁感测的参数用于负荷估算,也能提供更好的负荷估计。因此,在能够使用强大的低成本原位分析这些污染物的技术之前,此类特定地点的关系可用于近实时估算特定污染物的负荷。