Park Ji Won, Boxall Joby, Maeng Sung Kyu
Department of Civil and Environmental Engineering, Sejong University, 209 Neungdong-ro, Gwangjin-gu, Seoul 05006, Republic of Korea.
Department of Civil and Structural Engineering, University of Sheffield, S13JD, United Kingdom.
Water Res. 2023 Aug 15;242:120172. doi: 10.1016/j.watres.2023.120172. Epub 2023 Jun 4.
Culture-independent data can be utilized to identify heterotrophic plate count (HPC) exceedances in drinking water. Although HPC represents less than 1% of the bacterial community and exhibits time lags of several days, HPC data are widely used to assess the microbiological quality of drinking water and are incorporated into drinking water standards. The present study confirmed the nonlinear relationships between HPC, intact cell count (ICC), and adenosine triphosphate (ATP) in tap water samples (stagnant and flushed). By using a combination of ICC, ATP, and free chlorine data as inputs, we show that HPC exceedance can be classified using a 2-layer feed-forward artificial neural network (ANN). Despite the nonlinearity of HPC, the best binary classification model showed accuracies of 95%, sensitivity of 91%, and specificity of 96%. ICC and chlorine concentrations were the most important features for classifiers. The main limitations, such as sample size and class imbalance, were also discussed. The present model provides the ability to convert data from emerging measurement techniques into established and well-understood measures, overcoming culture dependence and offering near real-time data to help ensure the biostability and safety of drinking water.
不依赖培养的数据可用于识别饮用水中异养平板计数(HPC)超标情况。尽管HPC在细菌群落中所占比例不到1%,且存在数天的时间滞后,但HPC数据仍被广泛用于评估饮用水的微生物质量,并被纳入饮用水标准。本研究证实了自来水样本(静止和冲洗后)中HPC、完整细胞计数(ICC)和三磷酸腺苷(ATP)之间的非线性关系。通过将ICC、ATP和游离氯数据结合作为输入,我们表明可以使用两层前馈人工神经网络(ANN)对HPC超标情况进行分类。尽管HPC具有非线性,但最佳二元分类模型的准确率为95%,灵敏度为91%,特异性为96%。ICC和氯浓度是分类器最重要的特征。还讨论了样本量和类别不平衡等主要局限性。本模型提供了将新兴测量技术的数据转换为既定且易于理解的指标的能力,克服了对培养的依赖,并提供近乎实时的数据,以帮助确保饮用水的生物稳定性和安全性。