School of Engineering & the Built Environment, Faculty of Science and Engineering, Anglia Ruskin University, Chelmsford, Essex CM1 1SQ, United Kingdom.
Anglia Ruskin IT Research Institute, Anglia Ruskin University, Chelmsford CM11SQ, United Kingdom.
Sci Total Environ. 2021 May 10;768:144459. doi: 10.1016/j.scitotenv.2020.144459. Epub 2021 Jan 6.
Resilience-informed water quality management embraces the growing environmental challenges and provides greater accuracy by unpacking the systems' characteristics in response to failure conditions in order to identify more effective opportunities for intervention. Assessing the resilience of water quality requires complex analysis of influential parameters which can be challenging, time consuming and costly to compute. It may also require building detailed conceptual and/or physically process-based models that are difficult to build, calibrate and validate. This study utilises Artificial Neural Network (ANN) to develop a novel application to predict water quality resilience to simplify resilience evaluation. The Fuzzy Analytic Hierarchy Process method is used to rank water basins based on their level of resilience and to identify the ones that demand prompt restoration strategies. The commonly used 'magnitude * duration of being in failure state' quantification method has been used to formulate and evaluate resilience. A 17-years long water quality dataset from the 22 water basins in the State of São Paulo, Brazil, was used to train and test the ANN model. The overall agreement between the measured and simulated WQI resilience values is satisfactory and hence, can be used by planners and decision makers for improved water management. Moreover, comparative analyses show similarities and differences between the 'level of criticalities' reported in each zone by Environment Agency of the state of São Paulo (CETESB) and by the resilience model in this study.
基于韧性的水质管理方法应对日益增长的环境挑战,通过分解系统对故障条件的响应特征,提高了准确性,从而确定更有效的干预机会。评估水质的韧性需要对有影响的参数进行复杂的分析,这在计算方面具有挑战性、耗时且昂贵。它可能还需要构建详细的概念和/或基于物理过程的模型,而这些模型的构建、校准和验证都很困难。本研究利用人工神经网络(ANN)开发了一种新的应用程序来预测水质韧性,以简化韧性评估。模糊层次分析法用于根据韧性水平对流域进行排名,并确定需要立即采取恢复策略的流域。通常使用“处于故障状态的幅度*持续时间”量化方法来制定和评估韧性。使用来自巴西圣保罗州 22 个流域的 17 年长水质数据集来训练和测试 ANN 模型。测量和模拟 WQI 韧性值之间的总体一致性令人满意,因此可以供规划者和决策者用于改进水资源管理。此外,比较分析显示了圣保罗州环境署(CETESB)和本研究中韧性模型报告的每个区域的“临界点”水平之间的相似点和差异。