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Detection and classification of anomalous events in water quality datasets within a smart city-smart bay project

机译:智能城市智能海湾项目中水质数据集中异常事件的检测和分类

摘要

Continual measurement is key to understanding sudden and gradual changes in chemical and biological quality of water, and for taking reactive remedial action in the case of contamination. Monitoring of water bodies will increase in future within Europe to comply with legislative requirements such as the Water Framework Directive and globally owing to pressure from climate change. Establishing high quality long-term monitoring programs is regarded as essential if the implementation of pertinent legislation is to be successful. However, conventional discrete sampling programs and laboratory-based analysis techniques can be costly, and are unlikely to provide timely and reliable estimates of true ranges of deterministic physicochemical variability in a water body with marked temporal or spatial variability. udOnly continual or near continual measurements have the capacity to detect ephemeral or sporadic events, thus providing the potential for on-line event detection and classification. The aim of this work is to demonstrate the potential role of continuous data acquisition in decision support as part of a smart city project. In this work, a multi-modal smart sensor network system framework for large scale estuarine and marine water quality monitoring is proposed. The application of a number of evolving techniques that allow automated detection and clustering of events from data generated by in situ sensors within environmental time series datasets is described. We provide examples of how change in the range of variables such as turbidity and salinity might be detected and clustered to provide the end user with greater ability to detect the onset of environmentally significant events. Finally, we discuss the acquisition of data from in situ water quality sensors and its utility within the framework a smart city-smart bay integrated project.
机译:连续测量对于了解水的化学和生物质量的突然和逐步变化,以及在受到污染时采取反应性补救措施至关重要。由于气候变化的压力,未来在欧洲范围内将对水体进行监测,以符合诸如水框架指令之类的法律要求,并在全球范围内进行监测。如果要成功执行相关立法,则必须建立高质量的长期监控程序。但是,传统的离散采样程序和基于实验室的分析技术可能会很昂贵,并且不可能及时,可靠地估计水体中确定的物理化学可变性的真实范围,且具有明显的时间或空间可变性。 ud只有连续或接近连续的测量才有能力检测短暂事件或零星事件,因此提供了在线事件检测和分类的潜力。这项工作的目的是证明作为智能城市项目一部分的连续数据获取在决策支持中的潜在作用。在这项工作中,提出了一种用于大规模河口和海洋水质监测的多模式智能传感器网络系统框架。描述了允许从环境时间序列数据集中的原位传感器生成的数据进行事件的自动检测和聚类的多种演进技术的应用。我们提供了一些示例,说明如何检测和聚集变量范围(例如浊度和盐度)的变化,从而为最终用户提供更大的检测环境重大事件的能力。最后,我们讨论了在智能城市-智能海湾综合项目框架内从原位水质传感器获取数据及其实用性。

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