Abstract

In recent years, scarce water resources became one of the main problems that endanger human species existence and the advancement of any nation. In this research, smart water meters were implemented, distributed, and installed in a regional area in Cairo while data were collected at uniform intervals then sent to the cloud instantly. The solution paradigm uses an Internet of Things (IoT) based on micro-services and containers. The design incorporates real-time streaming and infrastructure performance optimization to store data. A second layer to analyze the acquired data was used to model water consumption using Long Short-Term Memory (LSTM). The designed LSTM is validated and tested to be utilized in the forecast of future water demand. Moreover, two alternative machine learning methods, namely Support Vector Regression and Random Forest commonly utilized in time series forecasting applications, were used for a comparative analysis of which LSTM has proven to be superior. The proper integration of the system elements is the key to the proposed system success. Based on the success of the designed system, it can be applicable on a national scale. That can enable the optimal management of consumers' demand and improve water infrastructure utilization. The proposed paradigm presents a testbed for various scenarios that can be used in water resources management.

Highlights

  • The smart water metering systems have just begun to gain momentum as water utilities started to use real-time data acquisition that can be stored and used in data analytics to save the scarce water resources in an optimal way [1]

  • The Internet of Things (IoT) business opportunities are limitless as grids and smart meters optimize resources, and remote monitoring solutions increase the efficiency of water network

  • Analytics is considered an essential component of every successful IoT application

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Summary

Introduction

The smart water metering systems have just begun to gain momentum as water utilities started to use real-time data acquisition that can be stored and used in data analytics to save the scarce water resources in an optimal way [1]. In a smart water metering system, data can communicate between smart meters and water utilities with the support of analytical software architecture to take proper decision regarding certain actions to monitor and control the water supply in the system or to issue appropriate alerts to warn consumers or guide them to reduce their consumptions [4].

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