Harnessing Artificial Intelligence for Smart and Sustainable Management of Water Resources Amid Global Water Challenges
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Harnessing Artificial Intelligence for Smart and Sustainable Management of Water Resources Amid Global Water Challenges

Authors: Iman Hajirad

Abstract:

Water, as a vital element for human survival and natural ecosystems, has become one of the most pressing challenges in today’s world. Various crises, including diminishing water resources, climate change, and population growth, have made water resource management more critical than ever. In this context, artificial intelligence (AI), as an innovative technology, can play a pivotal role in optimizing water consumption, predicting water crises, and managing resources effectively. Leveraging big data, machine learning, the Internet of Things (IoT), and remote sensing, AI has significantly contributed to drought and flood prediction, agricultural irrigation optimization, and water quality management. This paper explores the applications of AI in water resource management, including water resource prediction and modeling, agricultural water use optimization, pollution control, and crisis management. The findings indicate that the implementation of AI technologies can enhance water resource management, reduce water waste, and preserve water quality.

Keywords: Water crisis, water resource management, water planning, artificial intelligence.

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