Data-Centric Approach to Short-Term Water Demand Prediction Using Big Data and Deep Learning Techniques

Authors

Alkiviadis Tsimpiris
International Hellenic University, Informatics and Telecommunications Engineering
https://orcid.org/0000-0002-3756-0170
Georgios Myllis
International Hellenic University, Informatics and Telecommunications Engineering
https://orcid.org/0009-0007-0708-6643
Vasiliki Vrana
International Hellenic University
https://orcid.org/0000-0002-5385-0944

Synopsis

This study introduces a data-centric approach to short-term water demand forecasting, utilizing univariate time series data from water reservoir levels in Eastern Thessaloniki. The dataset, collected over 15 months via a SCADA system, includes water level recordings from 21 reservoirs, generating a substantial Big Data resource. Key components of the methodology include data preprocessing, anomaly detection using techniques like the Interquartile Range method and moving standard deviation, and the application of predictive models. Missing data is addressed with LSTM networks optimized via the Optuna framework, enhancing data quality and improving model accuracy. This approach is particularly valuable in regions where reservoirs are the primary water source, and flow meter readings alone cannot determine demand distribution. By integrating deep learning techniques, such as LSTM models, with traditional statistical methods, the study achieves improved accuracy and reliability in water demand predictions, offering a robust framework for efficient water resource management.

Author Biographies

Alkiviadis Tsimpiris, International Hellenic University, Informatics and Telecommunications Engineering

Serres, Greece. E-mail: tsimpiris@ihu.gr

Georgios Myllis, International Hellenic University, Informatics and Telecommunications Engineering

Serres, Greece. E-mail: georgmyll@ihu.gr

Vasiliki Vrana, International Hellenic University

Thessaloniki-N.Moudania, Greece. E-mail: vrana@ihu.gr

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Published

March 19, 2025

License

Creative Commons License

This work is licensed under a Creative Commons Attribution 4.0 International License.

How to Cite

(Ed.). (2025). Data-Centric Approach to Short-Term Water Demand Prediction Using Big Data and Deep Learning Techniques. In 44th International Conference on Organizational Science Development: Human Being, Artificial Intelligence and Organization, Conference Proceedings (Vols. 44, pp. 961-974). University of Maribor Press. https://press.um.si/index.php/ump/catalog/book/962/chapter/337