BioMedware, Inc., 167 Little Lake Drive, Ann Arbor, MI 48106, USA.
Sci Total Environ. 2019 Jan 10;647:1294-1304. doi: 10.1016/j.scitotenv.2018.07.459. Epub 2018 Aug 1.
Despite several environmental crises, little research has been conducted on citywide geospatial modeling of water lead levels (WLL) in public distribution systems. This paper presents the first application of multivariate geostatistics to lead in drinking water within a distribution system, specifically in Flint, Michigan. One of the key features of the Flint data is their collection through two different sampling initiatives: (i) voluntary or homeowner-driven sampling whereby concerned citizens decided to acquire a testing kit and conduct sampling on their own (10,717 sites), and (ii) State-administered sampling where data were collected bi-weekly at 809 selected sites after training of residents by technical teams (sentinel sites). These two datasets were first averaged over the 41-week sampling period and each tax parcel to attenuate sampling fluctuations and create a set of 420 tax parcels sampled by both protocols. Both variables displayed a correlation of 0.62 while their direct and cross-semivariograms showed substantial nugget effect and a long range of 7.5 km. WLLs recorded at sentinel sites and deemed more reliable by city officials were then interpolated using cokriging to account for the more densely sampled voluntary data and information on service line composition (lead, other, or unknown) available for each of 51,045 residential tax parcels. Cross-validation demonstrated the greater prediction accuracy of the multivariate geostatistical approach relative to kriging and inverse square distance weighting interpolation using only sentinel data. This general procedure is applicable to other cities with aging infrastructure where lead in drinking water is a concern.
尽管存在着若干环境危机,但对全市范围内公共分配系统的水中铅水平(WLL)的地理空间建模研究却很少。本文首次应用多元地质统计学来研究密歇根州弗林特市供水系统中的铅问题。弗林特数据的一个关键特征是,通过两项不同的采样计划进行收集:(i)自愿或房主驱动的采样,即有关公民决定购买测试套件并自行进行采样(共 10,717 个采样点);(ii)州政府管理的采样,在技术团队对居民进行培训后,每周在 809 个选定的地点进行两次数据收集(监测点)。这两个数据集首先在 41 周的采样期内进行平均,并针对每个税区进行平均,以减弱采样波动,并创建一组由两个协议采样的 420 个税区。两个变量之间的相关性为 0.62,而它们的直接和交叉半变异函数显示出很大的块金效应和长达 7.5 公里的长程相关性。在监测点记录的 WLL 值被城市官员认为更可靠,然后使用协同克里金法进行插值,以考虑到自愿数据的更密集采样以及有关每个 51,045 个住宅税区的供水管线组成(铅、其他或未知)的信息。交叉验证表明,与仅使用监测数据的克里金法和倒数平方距离加权插值相比,多元地质统计学方法具有更高的预测精度。该通用程序适用于其他存在老化基础设施且饮用水含铅问题的城市。