Saltar al contenido principal Saltar a la búsqueda Saltar a la navegación principal
📍 Ebertstraße 6, 76137 Karlsruhe | ☎ 0721 38 480 060 | ✉ info@buch-ka.de | 🕐 Horario de apertura |

Understanding Atmospheric Rivers Using Machine Learning

Información sobre el producto "Understanding Atmospheric Rivers Using Machine Learning"
  • 7 %
  • Libro de bolsillo
  • Comprender
  • Libro de bolsillo

This book delves into the characterization, impacts, drivers, and predictability of atmospheric rivers (AR). It begins with the historical background and mechanisms governing AR formation, giving insights into the global and regional perspectives of ARs, observing their varying manifestations across different geographical contexts. The book explores the key characteristics of ARs, from their frequency and duration to intensity, unraveling the intricate relationship between atmospheric rivers and precipitation. The book also focus on the intersection of ARs with large-scale climate oscillations, such as El Niño and La Niña events, the North Atlantic Oscillation (NAO), and the Pacific Decadal Oscillation (PDO). The chapters help understand how these climate phenomena influence AR behavior, offering a nuanced perspective on climate modeling and prediction. The book also covers artificial intelligence (AI) applications, from pattern recognition to prediction modeling and early warning systems. A case study on AR prediction using deep learning models exemplifies the practical applications of AI in this domain. The book culminates by underscoring the interdisciplinary nature of AR research and the synergy between atmospheric science, climatology, and artificial intelligence

0 de 0 valoraciones

Calificación promedio de 0 de 5 estrellas

¡Emita una valoración!

Comparta sus experiencias con el producto con otros clientes.


Omitir la galería de productos

Ähnliche Bücher entdecken

Machine Learning – kurz & gut

01.08.2024
Control Systems Benchmarks

30.05.2025
Applied Machine Learning

05.05.2026
Grundkurs Machine Learning

28.07.2020
Machine Learning und KI kompakt

30.01.2025
Neural Networks and Deep Learning

30.06.2023
Machine Learning – kurz & gut

22.04.2021
Deep Learning

02.11.2023
Machine Learning for Cyber-Physical Systems

21.06.2024
New Advances in Soft Computing in Civil Engineering

08.08.2024
Pattern Recognition and Machine Learning

23.08.2016
Measuring User Engagement

14.11.2014
Omitir la galería de productos

Weitere Bücher aus der Reihe SpringerBriefs in Applied Sciences and Technology

Biolubricants Based on Vegetable Oils

08.08.2024