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A Multi-sensor Process for In-Situ Monitoring of Water Pollution in Rivers or Lakes for High-Resolution Quantitative and Qualitative Water Quality Data

机译:多传感器过程,用于河流或湖泊中水污染的原位监测,以获得高分辨率的定量和定性水质数据

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Sensor based environmental monitoring is beginning to gain traction given the recent advancements in sensor development technology. Sensor platforms offer several advantages in comparison to the traditional monitoring approaches based on discrete sampling methods as they offer the capability of providing high resolution data. Access to high-frequency spatial and temporal information facilitates real-time event detection or then understanding the impact of pollution to the water quality in natural water resources. In this paper, we report a multi-sensor process that we developed for in-situ monitoring of water pollution in rivers/lakes in which we acquire real-time water quality data using (a) a multiparametric sensor probe for quantitative data, (b) a crowd sensor via a mobile app for qualitative data and integrate these data onto a cloud platform i.e Bluemix which enables interactive visualization of data as Heatmap combined with geographical mapping. This type of visualization technique not only facilitates effective handling of high-resolution data but also allows large-scale data-driven inspection to identify affected/polluted zones and detection of pollution violations, thereby making it an important tool for enabling decision-making. Data analysis based on clustering techniques is also presented. We compare our techniques to traditional data collection methods. Furthermore, to support our efforts in water quality monitoring, we have also developed several web-based applications that are aimed at incorporating sensing data as well as data from various other sources onto a common online platform. We demonstrate the capabilities of our tools through a case study done on Yamuna river in New Delhi where we monitor the river pollution in real-time.
机译:鉴于传感器开发技术的最新进展,基于传感器的环境监控开始受到关注。与基于离散采样方法的传统监控方法相比,传感器平台具有多个优势,因为它们具有提供高分辨率数据的能力。访问高频时空信息有助于实时事件检测,或随后了解污染对天然水资源中水质的影响。在本文中,我们报告了一种多传感器过程,该过程是针对河流/湖中水污染进行原位监测而开发的,其中,我们使用以下方法获取实时水质数据:(a)多参数传感器探针用于定量数据,(b )通过移动应用程序的人群传感器来获取定性数据,并将这些数据集成到一个云平台(即Bluemix)中,该平台可将数据进行交互式可视化,如Heatmap和地理地图。这种类型的可视化技术不仅有助于有效地处理高分辨率数据,而且还允许进行大规模数据驱动的检查,以识别受影响/受污染的区域并检测污染违规,从而使其成为进行决策的重要工具。还介绍了基于聚类技术的数据分析。我们将我们的技术与传统的数据收集方法进行了比较。此外,为了支持我们在水质监测方面的努力,我们还开发了一些基于Web的应用程序,旨在将传感数据以及来自其他各种来源的数据整合到一个通用的在线平台上。我们通过在新德里的亚穆纳河上进行的案例研究证明了我们工具的功能,在该案例中我们实时监测河流污染。

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