Imen Sanaz, Chang Ni-Bin, Yang Y Jeffery, Golchubian Arash
Department of Civil, Environmental, and Construction Engineering, University of Central Florida, Orlando, FL 32816 USA.
U.S. EPA, Office of Research and Development, Water Supply and Water Resources Division, Cincinnati, OH, USA.
IEEE Syst J. 2018 Jun;12(2):1358-1368. doi: 10.1109/JSYST.2016.2538082.
Timely adjustment of operating strategies in drinking water treatment in response to water quality variations of both natural and anthropogenic causes is a grand technical challenge. One essential approach is to develop and apply integrated sensing, monitoring, and modeling technologies to provide early warning messages to plant operators. This paper presents a thorough literature review of the technical methods, followed by the development of a model-based decision support system (DSS). The DSS aims to aid water treatment operation via source water impact analysis. This model-based DSS featuring remote sensing and fast learning techniques can be easily applied by end-users and provide a visual depiction of spatiotemporal variation in water quality parameters of interest in source water. The system is able to forecast the trend of water quality one day into the future at a specific location and to nowcast water quality at water intake, thus helping the assessment of water quality in finished water against treatment objectives. The model-based DSS was assessed in a case study at a water treatment plant in Las Vegas, United States.
针对自然和人为原因导致的水质变化,及时调整饮用水处理的运行策略是一项重大技术挑战。一种重要方法是开发和应用集成传感、监测和建模技术,为工厂操作人员提供预警信息。本文对技术方法进行了全面的文献综述,随后开发了基于模型的决策支持系统(DSS)。该DSS旨在通过源水影响分析辅助水处理运行。这种基于模型的DSS具有遥感和快速学习技术,终端用户可轻松应用,并能直观呈现源水中感兴趣的水质参数的时空变化。该系统能够预测特定位置未来一天的水质趋势,并对取水口的水质进行实时预报,从而有助于对照处理目标评估成品水的水质。在美国拉斯维加斯的一家水处理厂进行的案例研究中,对基于模型的DSS进行了评估。