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Growing Science » Journal of Project Management » Artificial intelligence for the management of water projects and the management of water resources: A bibliographical analysis

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Journal of Project Management

ISSN 2371-8374 (Online) - ISSN 2371-8366 (Print)
Quarterly Publication
Volume 8 Issue 3 pp. 191-198 , 2023

Artificial intelligence for the management of water projects and the management of water resources: A bibliographical analysis Pages 191-198 Right click to download the paper Download PDF

Authors: Juan Jose Santillan Rojas, Nicke Dennis Cabezas Suazo, Johan Javier Chamorro Monago, Angel Narcizo Aquino Fernandez

DOI: 10.5267/j.jpm.2023.2.002

Keywords: Artificial intelligence, Management, Projects, Water

Abstract: This bibliographical review gives us a clear and summarized analysis of the management tools for a water infrastructure construction project and, a tool that allows the management of water resources through the application of everything analyzed and compiled in scientific articles obtained from the Scopus database and after that it was analyzed using the VOSviewer tool, which has the complexity of analyzing a large amount of data. This analysis was carried out from the appearance of the first related investigations until the year 2023, analysis graphs were obtained from representative levels of the words “artificial intelligence”, “project management” of “construction” and “water” resource with greater interest in the analysis. The results obtained allowed us to understand the great variety of technological tools that are available today to be able to manage the construction of a project through artificial intelligence and its components that work together, likewise the application of these tools is carried out by countries as well as the United States. The United States and China are the ones that represent the greatest interest in these investigations, however this contribution is minimal to be able to generate effective solutions since each project presents its particular characteristics that technology has to adapt to. The future of these projects was also analyzed, such as the management of water resources through intelligent technologies that allow the preservation, care and maintenance of water resources, in addition to this, it is emphasized that worldwide there are already problems of droughts, lack of water resources and shortages of water in some countries. This research has the purpose of an overview for decision-making in the execution of the project at the water level and after the management of the water resource, it is important to apply these tools for their different advantages and carry it out to large-scale works in Peru subsidized by the Peruvian state since they are the most responsible for ensuring the care, maintenance and preservation of water resources.

How to cite this paper
Rojas, J., Suazo, N., Monago, J & Fernandez, A. (2023). Artificial intelligence for the management of water projects and the management of water resources: A bibliographical analysis.Journal of Project Management, 8(3), 191-198.

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Journal: Journal of Project Management | Year: 2023 | Volume: 8 | Issue: 3 | Views: 1799 | Reviews: 0

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