School of Built Environment, University of New South Wales, NSW, Australia.
Facultad de Ingeniería, Universidad Andrés Bello, Antonio Varas 880, Providencia, Santiago, Chile.
Water Res. 2024 May 1;254:121319. doi: 10.1016/j.watres.2024.121319. Epub 2024 Feb 17.
To support the reactivation of urban rivers and estuaries for bathing while ensuring public safety, it is critical to have access to real-time information on microbial water quality and associated health risks. Predictive modelling can provide this information, though challenges concerning the optimal size of training data, model transferability, and communication of uncertainty still need attention. Further, urban estuaries undergo distinctive hydrological variations requiring tailored modelling approaches. This study assessed the use of Bayesian Networks (BNs) for the prediction of enterococci exceedances and extrapolation of health risks at planned bathing sites in an urban estuary in Sydney, Australia. The transferability of network structures between sites was assessed. Models were validated using a novel application of the k-fold walk-forward validation procedure and further tested using independent compliance and event-based sampling datasets. Learning curves indicated the model's sensitivity reached a minimum performance threshold of 0.8 once training data included ≥ 400 observations. It was demonstrated that Semi-Naïve BN structures can be transferred while maintaining stable predictive performance. In all sites, salinity and solar exposure had the greatest influence on Posterior Probability Distributions (PPDs), when combined with antecedent rainfall. The BNs provided a novel and transparent framework to quantify and visualise enterococci, stormwater impact, health risks, and associated uncertainty under varying environmental conditions. This study has advanced the application of BNs in predicting recreational water quality and providing decision support in urban estuarine settings, proposed for bathing, where uncertainty is high.
为了支持城市河流和河口重新用于沐浴,并确保公共安全,获取有关微生物水质和相关健康风险的实时信息至关重要。预测模型可以提供这些信息,但仍需要关注有关训练数据最佳大小、模型可转移性和不确定性交流的挑战。此外,城市河口经历独特的水文变化,需要采用定制的建模方法。本研究评估了贝叶斯网络(BNs)在预测澳大利亚悉尼城市河口计划沐浴点的肠球菌超标和扩展健康风险方面的应用。评估了站点之间网络结构的可转移性。使用 k 折向前验证程序的新应用对模型进行了验证,并使用独立的合规性和基于事件的采样数据集对其进行了进一步测试。学习曲线表明,一旦训练数据包含≥400 个观测值,模型的灵敏度就达到了 0.8 的最小性能阈值。结果表明,在保持稳定预测性能的同时,可以转移半朴素 BNs 结构。在所有站点中,当与前期降雨结合时,盐度和太阳辐射对后验概率分布(PPD)的影响最大。BNs 提供了一个新颖而透明的框架,可在不同的环境条件下量化和可视化肠球菌、雨水影响、健康风险及其相关不确定性。本研究推进了 BNs 在预测娱乐用水水质和为有高不确定性的沐浴用途的城市河口环境提供决策支持方面的应用。