Surface Water Pollution Detection using Internet of Things

Uferah Shafi, R. Mumtaz, Hirra Anwar, A. M. Qamar, Hamza Khurshid
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引用次数: 42

Abstract

Water is one of the primary requisites and crucial for sustaining the quality of life. In Pakistan its significance is more than ordinary due to the agrarian nature of the economy. Owing to increasing trend in urbanization and industrialization, the quality of water is continuously declining. For this purpose, we propose an Internet of Things (IoT) based water quality system capable of measuring the quality of water in near real time. The proposed solution is based on World Health Organization (WHO) defined water quality metrics. For this purpose, a real time embedded prototype has been developed to record the water quality parameters from the water samples collected from various sources across the study area. The hardware solution sends data to cloud for real time storage and processing. The processed data can be remotely monitored and water flow can be controlled using our developed software solution comprising of mobile app and a dashboard. In addition to water quality monitoring and control system, the predictive analysis of the collected data has been performed. For training purposes a dataset has been obtained from Pakistan Council of Research in Water Resources (PCRWR). Machine learning algorithms have been applied for classification of water quality and the experimental results indicate that deep neural network outperforms all other algorithms with an accuracy of 93%. The preliminary results have shown a high potential of scaling up this concept to an advanced level.
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利用物联网技术检测地表水污染
水是维持生活质量的基本必需品之一,也是至关重要的。在巴基斯坦,由于经济的农业性质,它的重要性比普通的要大。随着城市化和工业化进程的加快,水质不断下降。为此,我们提出了一种基于物联网(IoT)的水质系统,能够近乎实时地测量水质。拟议的解决办法以世界卫生组织(世卫组织)定义的水质指标为基础。为此,开发了一个实时嵌入式原型,用于记录从研究区域不同来源收集的水样的水质参数。硬件解决方案将数据发送到云端进行实时存储和处理。处理后的数据可以远程监控,水流可以使用我们开发的软件解决方案,包括移动应用程序和仪表板。除了建立水质监测控制系统外,还对采集到的数据进行了预测分析。为了训练目的,从巴基斯坦水资源研究委员会(PCRWR)获得了一个数据集。机器学习算法已被应用于水质分类,实验结果表明,深度神经网络优于所有其他算法,准确率为93%。初步结果表明,将这一概念扩大到先进水平的潜力很大。
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