Satellite Sensing for Sea Level Monitoring: A Transformative Approach to Understanding Climate Change

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Year : 2025 | Volume :12 | Issue : 01 | Page : –
By
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Dr Kazi Kutubuddin S. L.,

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Dr. G M Kosgiker,

  1. Professor, Department of Electronics and Telecommunication Engineering, Brahmadanda Mane Institute of Technology, Solapur, Maharashtra, India
  2. Professor, Department of Electronics and Telecommunication Engineering, Brahmadanda Mane Institute of Technology, Solapur, Maharashtra, India

Abstract

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Satellite sensing becomes an essential tool for risk assessment and management as coastal communities continue to struggle with the numerous threats posed by climate change. By using this technology, environmental scientists, legislators, and urban planners may make better judgements that will result in coastal towns that are safer and more resilient. A major advancement in reducing the effects of extreme weather, environmental degradation, and rising sea levels has been made with the incorporation of satellite data into urban planning and disaster preparedness initiatives. Resilience and adaptation are not just choices; they are essentials, and satellite sensing offers the means to successfully achieve them. Sea level monitoring has been revolutionized by satellite sensing, which provides vital information that helps us comprehend how climate change affects sea levels worldwide. Satellite observations will become ever more important as technology develops to support climate resilience plans and assist vulnerable people worldwide. A new era in environmental monitoring is being fostered by the combination of cutting-edge sensing techniques, teamwork, and improved data accessibility, all of which are crucial for preserving the future of our planet.

Keywords: Satellite Sensing, Sea level, Climate change, coastal areas, environmental study.

[This article belongs to Journal of Microwave Engineering and Technologies (jomet)]

How to cite this article:
Dr Kazi Kutubuddin S. L., Dr. G M Kosgiker. Satellite Sensing for Sea Level Monitoring: A Transformative Approach to Understanding Climate Change. Journal of Microwave Engineering and Technologies. 2025; 12(01):-.
How to cite this URL:
Dr Kazi Kutubuddin S. L., Dr. G M Kosgiker. Satellite Sensing for Sea Level Monitoring: A Transformative Approach to Understanding Climate Change. Journal of Microwave Engineering and Technologies. 2025; 12(01):-. Available from: https://journals.stmjournals.com/jomet/article=2025/view=0

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Regular Issue Subscription Review Article
Volume 12
Issue 01
Received 13/12/2024
Accepted 18/12/2024
Published 10/01/2025