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A Machine Learning Approach towards Automatic Water Quality Monitoring

机译:自动水质监测机器学习方法

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摘要

Increasing rate of water pollution and consequently waterborne diseases are the engrossing evidence towards danger to living organisms. It becomes a great challenge these days to preserve our flora and fauna by controlling various unexpected pollution activities. Although the invention of many schemes and programmes regarding water purification has done a tremendous job, but still there is something that has been lagging. With increase in population, industrialization and global warming situation is getting worse day by day. It becomes very difficult to get safe drinking water and appropriate quality water for other domestic usage and agriculture purpose. Major reasons for water pollution include undesirable increase in impurities. These may cause eutrophication of the water body, change in taste, discolouration and odour of water, water borne diseases, increase in water toxic nature etc. For water to be serviceable it should be aesthetically acceptable, chemically safe, bacteria free; organic substances and radioactive elements should be absent. So, there is an urgent need to look into this situation and take the corrective and necessary actions to overcome this situation. The government is paying an attention to this problem and finding the ways to control the situation. However, major areas are not developed to the point and water quality estimation is totally dependent upon sampling at location and testing in laboratories. Manual sampling and measurements are prone to human errors and these techniques may create ambiguities in predicted output. In this paper we have presented Machine Learning (ML) approach for calculating the Water Quality Index (WQI) and classification of water quality to estimate water characteristics for usage. For analysis, decision tree method is used to estimate water quality information. The standard values of parameters are selected as per guidelines provided by World Health organization (WHO). Results calculated using ML techniques showed prominent accuracy over traditional methods. Accuracy achieved is also significant, i.e. 98 %. Likewise, projection of gathered data was done utilizing web interface and web app to alert the authorities about contamination.
机译:水污染率增加,因此水性疾病是对生物体危害的引人注目的证据。这几天通过控制各种意外的污染活动来保护我们的植物群和动物群成为巨大的挑战。虽然许多方案和关于水净化的计划的发明已经做出了巨大的工作,但仍然存在一些滞后的东西。随着人口的增加,产业化和全球变暖局势日益差。为其他国内使用和农业目的获得安全饮用水和适当的优质水域变得非常困难。水污染的主要原因包括杂质的不良增加。这些可能导致水体的富营养化,味道,褪色和水的气味,水源性疾病,水中毒性的增加,水毒性等水可供维修,应该是美学上可接受的,化学安全的,细菌无菌;应该不存在有机物质和放射性元件。因此,迫切需要研究这种情况,并采取纠正和必要的行动来克服这种情况。政府要注意这个问题并找到控制局势的方法。然而,主要领域没有发展到该点,水质估算完全取决于在实验室的位置和测试时采样。手动采样和测量易于人类误差,这些技术可能会在预测输出中产生歧义。在本文中,我们提出了机器学习(ML)方法,用于计算水质指数(WQI)和水质分类,以估算使用的水特征。对于分析,决策树方法用于估计水质信息。根据世界卫生组织(世卫组织)提供的指南选择参数的标准值。使用ML技术计算的结果显示出对传统方法的突出精度。实现的准确性也很重要,即98%。同样,利用Web界面和Web应用程序进行收集数据的投影来提醒当局污染。

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