Digital Control and Management of Water Supply Infrastructure Using Embedded Systems and Machine Learning

Martin C. Peter, Steve Adeshina, Olabode Idowu-Bismark, Opeyemi Osanaiye, Oluseun Oyeleke
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Abstract

Water supply infrastructure operational efficiency has a direct impact on the quantity of portable water available to end users. It is commonplace to find water supply infrastructure in a declining operational state in rural and some urban centers in developing countries. Maintenance issues result in unabated wastage and shortage of supply to users. This work proposes a cost-effective solution to the problem of water distribution losses using a Microcontroller-based digital control method and Machine Learning (ML) to forecast and manage portable water production and system maintenance. A fundamental concept of hydrostatic pressure equilibrium was used for the detection and control of leakages from pipeline segments. The results obtained from the analysis of collated data show a linear direct relationship between water distribution loss and production quantity; an inverse relationship between Mean Time Between Failure (MTBF) and yearly failure rates, which are the key problem factors affecting water supply efficiency and availability. Results from the prototype system test show water supply efficiency of 99% as distribution loss was reduced to 1% due to Line Control Unit (LCU) installed on the prototype pipeline. Hydrostatic pressure equilibrium being used as the logic criteria for leak detection and control indeed proved potent for significant efficiency improvement in the water supply infrastructure.
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使用嵌入式系统和机器学习的供水基础设施的数字控制和管理
供水基础设施的运作效率直接影响到最终用户可获得的可携带水的数量。在发展中国家的农村和一些城市中心,供水基础设施的运行状态不断下降是司空见惯的。维修问题导致耗损和用户供应短缺。这项工作提出了一个具有成本效益的解决方案,使用基于微控制器的数字控制方法和机器学习(ML)来预测和管理便携式水生产和系统维护问题。流体静压平衡的基本概念被用于检测和控制管道段的泄漏。整理资料分析结果表明,配水量损失与产量呈线性直接关系;平均故障间隔时间(MTBF)与年故障率呈反比关系,是影响供水效率和可利用性的关键问题因素。原型系统测试结果表明,由于在原型管道上安装了线路控制单元(LCU),供水效率为99%,分配损失降至1%。静水压力平衡被用作泄漏检测和控制的逻辑准则,确实证明了供水基础设施效率的显著提高。
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来源期刊
International Journal of Intelligent Systems and Applications in Engineering
International Journal of Intelligent Systems and Applications in Engineering Computer Science-Computer Graphics and Computer-Aided Design
CiteScore
1.30
自引率
0.00%
发文量
18
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