Water Resources Policy Division, Ministry of the Environment, South Korea.
Department of Civil and Environmental Engineering, Sejong University, South Korea.
Environ Pollut. 2022 Nov 15;313:120078. doi: 10.1016/j.envpol.2022.120078. Epub 2022 Sep 5.
Predicting the occurrence of algal blooms is of great importance in managing water quality. Moreover, the demand for predictive models, which are essential tools for understanding the drivers of algal blooms, is increasing with global warming. However, modeling cyanobacteria dynamics is a challenging task. We developed a multivariate Chain-Bernoulli-based prediction model to effectively forecast the monthly sequences of algal blooms considering hydro-environmental predictors (water temperature, total phosphorus, total nitrogen, and water velocity) at a network of stations. The proposed model effectively predicts the risk of harmful algal blooms, according to performance measures based on categorical metrics of a contingency table. More specifically, the model performance assessed by the LOO cross-validation and the skill score for the POD and CSI during the calibration period was over 0.8; FAR and MR were less than 0.15. We also explore the relationship between hydro-environmental predictors and algal blooms (based on cyanobacteria cell count) to understand the dynamics of algal blooms and the relative contribution of each potential predictor. A support vector machine is applied to delineate a plane separating the presence and absence of algal bloom occurrences determined by stochastic simulations using different combinations of predictors. The multivariate Chain-Bernoulli-based prediction model proposed here offers effective, scenario-based, and strategic options and remedies (e.g., controlling the governing environmental predictors) to relieve or reduce increases in cyanobacteria concentration and enable the development of water quality management and planning in river systems.
预测藻类水华的发生对于水质管理非常重要。此外,随着全球变暖,对预测模型的需求(了解藻类水华驱动因素的重要工具)也在增加。然而,模拟蓝藻动态是一项具有挑战性的任务。我们开发了一个基于多元链贝叶斯的预测模型,该模型可以有效地预测在网络站考虑水环境保护预测因子(水温、总磷、总氮和水流速度)的情况下藻类水华的每月序列。根据基于列联表的分类度量标准的性能指标,该模型可以有效地预测有害藻类水华的风险。更具体地说,通过 LOO 交叉验证和校准期间 POD 和 CSI 的技能评分评估的模型性能超过 0.8;FAR 和 MR 小于 0.15。我们还探索了水环境保护预测因子与藻类水华(基于蓝藻细胞计数)之间的关系,以了解藻类水华的动态及其每个潜在预测因子的相对贡献。支持向量机用于划分一个平面,该平面由使用不同预测因子组合的随机模拟确定藻类水华出现和不存在的位置。这里提出的基于多元链贝叶斯的预测模型提供了有效的、基于场景的和战略性的选择和补救措施(例如,控制主要环境预测因子),以缓解或减少蓝藻浓度的增加,并为河流系统的水质管理和规划提供了发展。