Climate modeling and prediction play a crucial role in understanding and combating the effects of climate change. As the Earth's climate becomes increasingly complex and unpredictable, there is a growing need for advanced tools and technologies to accurately forecast future trends. One such innovative approach is the use of neural networks -a form of artificial intelligence that mimics the human brain's ability to learn and adapt. By harnessing the power of neural networks, researchers and scientists are exploring new possibilities for improving the accuracy and efficiency of climate modeling and prediction. This article will take into account the potential benefits of using neural networks in climate science, highlighting their capabilities, applications, challenges, and future directions
Climate modeling and prediction play a crucial role in understanding and combating the effects of climate change. As the Earth's climate becomes increasingly complex and unpredictable, there is a growing need for advanced tools and technologies to accurately forecast future trends. One such innovative approach is the use of neural networks -a form of artificial intelligence that mimics the human brain's ability to learn and adapt. By harnessing the power of neural networks, researchers and scientists are exploring new possibilities for improving the accuracy and efficiency of climate modeling and prediction. This article will take into account the potential benefits of using neural networks in climate science, highlighting their capabilities, applications, challenges, and future directions
№ | Author name | position | Name of organisation |
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1 | Qonarbaev D.X. | Assistant teacher | Nukus branch of Tashkent University of Information Technologies named after Muhammad al-Khorazmi |
2 | Janibekov I.B. | Assistant teacher | Nukus branch of Tashkent University of Information Technologies named after Muhammad al-Khorazmi |
3 | Saypnazarov R.F. | Assistant teacher | Nukus branch of Tashkent University of Information Technologies named after Muhammad al-Khorazmi |
№ | Name of reference |
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