Artificial intelligence for smart irrigation: Reducing water consumption and improving agricultural output

The study investigates the application of artificial intelligence for optimizing irrigation systems in agriculture, aiming to reduce water losses and improve production efficiency. Traditional irrigation methods and their drawbacks, particularly in water-scarce regions, are analyzed. Existing approa...

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Main Authors: Arlanova A. A., Hojamkuliyeva B. A., Babanazarov N. Sh., Arlanov M. S.
Format: Article
Language:English
Published: EDP Sciences 2025-01-01
Series:E3S Web of Conferences
Online Access:https://www.e3s-conferences.org/articles/e3sconf/pdf/2025/23/e3sconf_aees2025_04001.pdf
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author Arlanova A. A.
Hojamkuliyeva B. A.
Babanazarov N. Sh.
Arlanov M. S.
author_facet Arlanova A. A.
Hojamkuliyeva B. A.
Babanazarov N. Sh.
Arlanov M. S.
author_sort Arlanova A. A.
collection DOAJ
description The study investigates the application of artificial intelligence for optimizing irrigation systems in agriculture, aiming to reduce water losses and improve production efficiency. Traditional irrigation methods and their drawbacks, particularly in water-scarce regions, are analyzed. Existing approaches to using artificial intelligence in agricultural technologies for predicting water needs and regulating irrigation are examined. A mathematical model based on machine learning algorithms is developed to predict the optimal water volume required for irrigation of agricultural crops. Key factors affecting water consumption, such as temperature, soil moisture, and precipitation, are identified. The study finds that using the proposed model reduces water usage by 15% while maintaining stable crop yields. The results of testing the model on an experimental plot in Lebap region of Turkmenistan demonstrate its effectiveness in real conditions. It is substantiated that the implementation of such intelligent irrigation management systems can significantly improve the sustainability of agriculture in the face of climate change.
format Article
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institution OA Journals
issn 2267-1242
language English
publishDate 2025-01-01
publisher EDP Sciences
record_format Article
series E3S Web of Conferences
spelling doaj-art-98ae9715da274e72b844250c3bfadbf12025-08-20T02:16:50ZengEDP SciencesE3S Web of Conferences2267-12422025-01-016230400110.1051/e3sconf/202562304001e3sconf_aees2025_04001Artificial intelligence for smart irrigation: Reducing water consumption and improving agricultural outputArlanova A. A.0Hojamkuliyeva B. A.1Babanazarov N. Sh.2Arlanov M. S.3Turkmen State Institute of Economics and ManagementTurkmen State Institute of Economics and ManagementTurkmen State Institute of Economics and ManagementDovletmammet Azadi Turkmen National Institute of World LanguagesThe study investigates the application of artificial intelligence for optimizing irrigation systems in agriculture, aiming to reduce water losses and improve production efficiency. Traditional irrigation methods and their drawbacks, particularly in water-scarce regions, are analyzed. Existing approaches to using artificial intelligence in agricultural technologies for predicting water needs and regulating irrigation are examined. A mathematical model based on machine learning algorithms is developed to predict the optimal water volume required for irrigation of agricultural crops. Key factors affecting water consumption, such as temperature, soil moisture, and precipitation, are identified. The study finds that using the proposed model reduces water usage by 15% while maintaining stable crop yields. The results of testing the model on an experimental plot in Lebap region of Turkmenistan demonstrate its effectiveness in real conditions. It is substantiated that the implementation of such intelligent irrigation management systems can significantly improve the sustainability of agriculture in the face of climate change.https://www.e3s-conferences.org/articles/e3sconf/pdf/2025/23/e3sconf_aees2025_04001.pdf
spellingShingle Arlanova A. A.
Hojamkuliyeva B. A.
Babanazarov N. Sh.
Arlanov M. S.
Artificial intelligence for smart irrigation: Reducing water consumption and improving agricultural output
E3S Web of Conferences
title Artificial intelligence for smart irrigation: Reducing water consumption and improving agricultural output
title_full Artificial intelligence for smart irrigation: Reducing water consumption and improving agricultural output
title_fullStr Artificial intelligence for smart irrigation: Reducing water consumption and improving agricultural output
title_full_unstemmed Artificial intelligence for smart irrigation: Reducing water consumption and improving agricultural output
title_short Artificial intelligence for smart irrigation: Reducing water consumption and improving agricultural output
title_sort artificial intelligence for smart irrigation reducing water consumption and improving agricultural output
url https://www.e3s-conferences.org/articles/e3sconf/pdf/2025/23/e3sconf_aees2025_04001.pdf
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AT babanazarovnsh artificialintelligenceforsmartirrigationreducingwaterconsumptionandimprovingagriculturaloutput
AT arlanovms artificialintelligenceforsmartirrigationreducingwaterconsumptionandimprovingagriculturaloutput