Published July 25, 2025 | Version https://www.socialresearchfoundation.com/new/publish-journal.php?editID=11387
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Harnessing the Power of Mathematics and AI in Climate Change Prevention

  • 1. Department Of Mathematics Hemwati Nandan Bahuguna P.G. College Naini, Prayagraj,Uttar Pradesh, India,
  • 2. Deparment Of Chemistry Sardar Vallabh Bhai Patel Govt. Degree College Barki, Sewapuri, Varanasi, Uttar Pradesh, India
  • 3. Department Of Sociology Dr. Shyama Prasad Mukherjee Government Degree College Bhadohi, Uttar Pradesh, India

Description

This paper will discuss how mathematics and artificial intelligence (AI) could transform the situation in tackling climate change in the global context. Using mathematical modeling tools, scientists manage to simulate the processes of climate, outline its drivers, and predict some scenarios which help policymakers to develop effective prevention strategies. Optimization techniques-Optimization techniques is a mathematical branch which helps in climate changes mitigation by establishing optimum emission and energy production strategies and resource distributions. Researchers can use AI and machine learning to transform climate research, using them to refine climate predictions, risk, and climate feedback mechanism. The synergy of mathematics and AI is used to optimize the renewable energy systems where efficiency is enhanced and the environmental impact minimized. Along with this, climate policy data-based decision-making and the possibilities of mathematics and AI in sustainable agriculture and management of resources are considered. Such incorporation opens up the capability of gaining a greater understanding of climate dynamics, and therefore attain evidence-based decisions that will be helpful in leading to a sustainable future

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Dates

Submitted
2025-07-05
Accepted
2025-07-22

References

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