Water consumption monitoring: a narrative review
DOI:
https://doi.org/10.18830/issn.1679-0944.n34.2023.18Keywords:
water consumption, monitoring, buildings, urban environmentAbstract
The adoption of strategies for monitoring water consumption is essential for maintaining and promoting the sustainability of water resources. At the urban scale, monitoring techniques can help in the management of distribution systems, and at the built scale, contribute to the development of sustainable water consumption practices. This paper presents a narrative review of studies covering the theme of water monitoring in order to contribute to the understanding of the techniques used to monitor water consumption in urban and built environments. Thus, a summary of the most used equipment and methods for obtaining data and monitoring of water consumption is presented, in addition to the geographical and temporal distribution of publications, considering the scale (residential or urban) used in the studies.
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