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利用常规数据识别 MIB 生产者和气味风险评估:以一个河口饮用水水库为例。

Identification of MIB producers and odor risk assessment using routine data: A case study of an estuary drinking water reservoir.

机构信息

Key Laboratory of Drinking Water Science and Technology, Research Center for Eco-Environmental Sciences, Chinese Academy of Sciences, Beijing 100085, China; University of Chinese Academy of Sciences, Beijing 100049, China.

Shanghai Chengtou Raw Water Co. Ltd, Shanghai 200125, China.

出版信息

Water Res. 2021 Mar 15;192:116848. doi: 10.1016/j.watres.2021.116848. Epub 2021 Jan 19.

Abstract

Identification of MIB(2-methylisoborneol)-producing cyanobacteria in source water has been a big challenge for reservoir authorities because it normally requires isolation of cyanobacteria strains. Here, a protocol based on Pearson's product moment correlation analysis combined with standardized data treatment and expert judgement was developed to sort out the MIB producer(s), mainly based on routine monitoring data from an estuary drinking water reservoir in the Yangtze River, China, and a risk model using quantile regressions was established to evaluate the risk of MIB occurrences. This reservoir has suffered from MIB problems in summer since 2011. Among 323 phytoplankton species, Planktothrix was judged to be the MIB producer in this reservoir because it exhibited the highest correlation coefficient (R = 0.60) as well as the lowest false positive-ratio (FP% = 0) and false-negative rate (FN% = 14). The low false-positive rate is particularly important, since MIB should not detected without detection of the producer. A high light extinction coefficient (k=5.57±2.48 m) attributed to high turbidity loading in the river water lowered the subsurface water light intensity, which could protect the low irradiance Planktothrix from excessive solar radiation, and allow them to grow throughout the summer. The risk model shows that the probability of suffering unacceptable MIB concentrations (>15 ng L) in water is as high as 90% if the cell density of Planktothrix is >609.0 cell mL, while the risk will be significantly reduced to 50% and 10% at cell densities of 37.5 cell mL and 9.6 cell mL, respectively. The approach developed in this study, including the protocol for identification of potential producers and the risk model, could provide a reference case for the management of source water suffering from MIB problems using routine monitoring data.

摘要

识别水源中产生 2-甲基异莰醇(MIB)的蓝藻一直是水库管理部门面临的一大挑战,因为通常需要分离蓝藻菌株。在这里,我们开发了一种基于皮尔逊乘积矩相关分析(Pearson's product moment correlation analysis)的方法,结合标准化数据处理和专家判断,以筛选出 MIB 的产生者。该方法主要基于中国长江河口饮用水水库的常规监测数据,并建立了使用分位数回归的风险模型来评估 MIB 出现的风险。自 2011 年以来,该水库夏季一直受到 MIB 问题的困扰。在 323 种浮游植物中,束丝藻被判断为该水库的 MIB 产生者,因为它表现出最高的相关系数(R=0.60),以及最低的假阳性率(FP%=0)和假阴性率(FN%=14)。低假阳性率特别重要,因为如果没有检测到产生者,就不应检测到 MIB。由于河水高浊度负荷导致的高光吸收系数(k=5.57±2.48 m)降低了水下光强,这可以保护低光照强度的束丝藻免受过度的太阳辐射,并使其在整个夏季生长。风险模型表明,如果束丝藻的细胞密度大于 609.0 个细胞/mL,则水中不可接受的 MIB 浓度(>15ng/L)的发生概率高达 90%,而当细胞密度分别为 37.5 个细胞/mL 和 9.6 个细胞/mL 时,风险将分别显著降低至 50%和 10%。本研究中开发的方法,包括潜在产生者的识别方案和风险模型,可为使用常规监测数据管理受 MIB 问题困扰的水源提供参考案例。

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