Water Demand Prediction for Housing Apartments Using Time Series Analysis

Author:

Tripathi Arpit1,Kaur Simran1,Sankaranarayanan Suresh1ORCID,Narayanan Lakshmi Kanthan1ORCID,Tom Rijo Jackson1ORCID

Affiliation:

1. SRM Institute of Science and Technology, Chennai, India

Abstract

Water management has always been a topic of serious discussion since infrastructure, rural, and industrial development flourished. Due to the depleting water resources, this is now even a bigger challenge. So, here is developed an IoT-based water management system where ultrasonic sensors are employed for predicting the depth of water in the tank and accordingly pumping the water to the sub tank of the apartment. In addition, the time series analysis Auto Regressive Integrative Moving Average (ARIMA) and Least Square Linear Regression (LSLR) algorithms were employed and compared for predicting the water demand for next six months based on the historical water consumption record of the main reservoir/tank. The information on the amount of water consumed from the main reservoir is pushed to the cloud and to the mobile application developed for utilities. The purpose is to access the water consumption pattern and predict water demand for the next six months from the cloud.

Publisher

IGI Global

Subject

Decision Sciences (miscellaneous),Information Systems

Reference10 articles.

1. IOT Based Water Management System for Smart City;P.Amatulla;International Journal of Advanced Research, Ideas and Innovation in Technology,2017

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3. Candelieria, A., & Archettia, F. (2014). Identifying Typical Urban Water Demand Patterns for a Reliable Short-Term Forecasting- The Ice water Project Approach. In Proceedings of 16th Conference on Water Distribution System analysis, Bari, Italy (pp. 1004-1007). Academic Press.

4. IoT based water management.;C.Rajurkar;Proceedings of the 2017 International Conference on Nextgen Electronic Technologies: Silicon to Software (ICNETS2),2017

5. Chrysi, L., Elpiniki, P., Sambit, S., Arpit, G., & Leandros, T. (2015). Exploring patterns in water consumption by clustering. In Proceedings of 13th Computer Control for Water Industry Conference (CCWI 2015), Leicester, UK (pp. 1439-1446). Academic Press.

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