Reprint

AI for Marine, Ocean and Climate Change Monitoring

Edited by
January 2024
230 pages
  • ISBN978-3-0365-9998-4 (Hardback)
  • ISBN978-3-0365-9997-7 (PDF)

This book is a reprint of the Special Issue AI for Marine, Ocean and Climate Change Monitoring that was published in

Engineering
Environmental & Earth Sciences
Summary

The oceans play a pivotal role in regulating the Earth's climate, absorbing excess heat with far-reaching consequences such as rising sea levels and shifts in ocean circulation. To address these complex challenges, there is a growing interest in using advanced statistical, machine learning, and AI techniques to observe and model these ocean processes from space. This approach holds immense potential for identifying and predicting these intricate mechanisms, providing valuable insights into the impacts of climate change. This Special Issue reprint is dedicated to advancing climate science by integrating machine learning, remote sensing, and oceanography. It explores the application of cutting-edge technologies such as artificial neural networks and data-driven algorithms to skillfully analyze and forecast ocean-related processes. These cutting-edge techniques are essential for the challenges posed by ocean warming and its effects, emphasizing the urgent need for interdisciplinary research that combines expertise in AI, machine learning, and earth sciences. By fostering innovation and knowledge exchange, this Special Issue compiles recent advancements in ocean and climate sciences. It offers a wide array of methodological perspectives and tools to enhance our understanding of global and regional climate change monitoring, elevate forecasting capabilities, and clarify sources of uncertainty in predictive models. This effort signifies a crucial step in addressing the challenges arising from technological gaps and the impacts of climate change on our oceans and the planet.

Format
  • Hardback
License
© 2022 by the authors; CC BY-NC-ND license
Keywords
earth observations; ocean dynamics; satellite altimetry; sea surface temperature; artificial intelligence; machine learning; deep learning; neural networks; salinity; SMAP; skin-effect; bias; air-sea; Arctic; ocean; machine-learning; long short-term memory (LSTM); sea surface temperature (SST); East China Sea; interpolation; data-driven models; neural networks; variational data assimilation; missing data; suspended particulate matter; observing system experiment; Bay of Biscay; near-surface humidity; remote sensing; deep learning; China Seas; sea temperature prediction; reconstructed sea subsurface temperature data; 3D U-Net; LSTM; chlorophyll-a; East China Sea; cloud classification; MODIS; artificial intelligence; deep learning; machine learning; ocean color; Sargassum; MODIS; MSI; OLCI; Sentinel-2; Sentinel-3; convolutional neural network; deep learning; sea surface temperature; spatiotemporal prediction; deep learning; graph neural network; BGC-Argo; ED380; ED412; ED490; global ocean; light models; neural network; PAR; n/a