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Analyzing non-revenue water dynamics in Rwanda: leveraging machine learning predictive modeling for comprehensive insights and mitigation strategies

Authors :
Janvier Mwitirehe
Cheruiyot W. Kipruto
Charles Ruranga
Source :
Water Practice and Technology, Vol 19, Iss 6, Pp 2376-2398 (2024)
Publication Year :
2024
Publisher :
IWA Publishing, 2024.

Abstract

This study investigated non-revenue water (NRW) dynamics in Rwanda from 1 July 2014, to 30 June 2023, utilizing panel data and cross-sectional datasets. It aimed to assess progress towards achieving the government's target of 25% NRW. Through panel data analysis and machine learning models, it examined water supply variations, NRW levels, and associated risks across fiscal years and regions. The observed average NRW of 41.24% underscores the need for targeted interventions to meet the set target. Regional disparities, exemplified by Kigali City's water network's 38.61% average NRW compared to Nyagatare's 55.31%, emphasize the importance of tailored strategies. Machine learning models indicated low and inconsistent progress across networks. Notably, no single water supply managed to meet the target in more than 20% of the 36 quarters studied. Comparison with existing literature highlighted excessive NRW in Rwanda, aligning with global trends. Achieving the 25% NRW target requires region-specific approaches, necessitating infrastructure improvements, leak detection, and capacity building. The positive correlation between water loss risk and household access to improved water sources accentuated the complexity in NRW reduction efforts. This study contributes to understanding NRW dynamics and informs sustainable water management strategies tailored to Rwanda's context. HIGHLIGHTS Need for balancing NRW reduction and access to improved water sources.; NRW is a region-specific issue.; WASAC is progressing slowly in the attainment of the target NRW of 25%.; Need to leverage panel data analysis and machine learning algorithms to understand NRW.; Most instances of 25% NRW or below were uncertain (due to issues of overlaps identified in all NRW classes), thus the need for a specific investigation on them.;

Details

Language :
English
ISSN :
1751231X
Volume :
19
Issue :
6
Database :
Directory of Open Access Journals
Journal :
Water Practice and Technology
Publication Type :
Academic Journal
Accession number :
edsdoj.fa3fa7da33f74307ac9770f72ea17141
Document Type :
article
Full Text :
https://doi.org/10.2166/wpt.2024.145