1.

Record Nr.

UNINA9911054599803321

Autore

Vyas Swapnil

Titolo

Application of Machine Learning in Earth Sciences : A Practical Approach / / edited by Swapnil Vyas, Shridhar D. Jawak, Pramit Kumar Deb Burman, Hemlata Patel, Avinash Kandekar, Suraj Sawant

Pubbl/distr/stampa

Cham : , : Springer Nature Switzerland : , : Imprint : Springer, , 2026

ISBN

3-032-11426-8

Edizione

[1st ed. 2026.]

Descrizione fisica

1 online resource (815 pages)

Collana

Earth and Environmental Sciences Library, , 2730-6682

Altri autori (Persone)

Vyas

Disciplina

333.7

Soggetti

Environmental sciences - Mathematics

Environmental monitoring

Machine learning

Mathematical Applications in Environmental Science

Environmental Monitoring

Machine Learning

Lingua di pubblicazione

Inglese

Formato

Materiale a stampa

Livello bibliografico

Monografia

Nota di contenuto

A ConvGRU Deep Learning Algorithm to Forecast global Ionospheric TEC Maps -- Estimation of Daily Air Relative Humidity Using a Novel Outlier-Robust Extreme Learning Machine Model: A Case Study of Two Algerian Locations -- Significance of Machine Learning in Understanding Earth’s Magnetosphere and Solar Activity -- Harnessing artificial intelligence for the detection and analysis of microplastics and associated chemicals in the atmosphere -- Application of Machine Learning in Bioremediation and Detection of Pollutants -- Machine Learning for Analysis of Water flow in the Reservoirs and Monitoring of Air quality -- Leveraging AI/ML for the Identification of Ma-rine Organisms -- Application of Machine Learning in River Water Quality Monitoring -- Application of AI/ML in river water quality monitoring -- Deep Neural Network for Water Mapping during Flood from SAR images using Matlab.

Sommario/riassunto

This book introduces the reader to applications of machine learning (ML) in Earth Sciences. In detail, it describes the basic application of machine learning algorithms and models and their potential in Earth



Sciences. It discusses the use of several tools and software and the typical workflow for ML applications in Earth Sciences. This book provides a comparative analysis of how standard processes and ML algorithms work in several Earth Sciences applications. Case studies from the various fields of Earth Sciences are presented to illustrate how to apply ML and Deep Learning, these include regression, forecasting, time series analysis in Climate studies, classification methods using multi-spectral data clustering, and dimensionality reduction in classification. This book reviews ML/AI models, algorithms, and methods, analyse case studies, and examine methods of application of ML/AI techniques to specific areas of Earth Sciences. It aims to serve all professionals, and researchers, scientists alike in academics, industries, government, and beyond.