Climate change mechanisms, impacts, risks, mitigation, adaption, and governance are widely recognized as the biggest, most interconnected problem facing humanity. Big Data Mining for Climate Change addresses one of the fundamental issues facing scientists of climate or the environment: how to manage the vast amount of information available and analyse it. The resulting integrated and interdisciplinary big data mining approaches are emerging, partially with the help of the United Nation’s big data climate challenge, some of which are recommended widely as new approaches for climate change research. Big Data Mining for Climate Change delivers a rich understanding of climate-related big data techniques and highlights how to navigate huge amount of climate data and resources available using big data applications. It guides future directions and will boom big-data-driven researches on modeling, diagnosing and predicting climate change and mitigating related impacts. This book mainly focuses on climate network models, deep learning techniques for climate dynamics, automated feature extraction of climate variability, and sparsification of big climate data. It also includes a revelatory exploration of big-data-driven low-carbon economy and management. Its content provides cutting-edge knowledge for scientists and advanced students studying climate change from various disciplines, including atmospheric, oceanic and environmental sciences; geography, ecology, energy, economics, management, engineering, and public policy. – Provides a step-by-step guide for applying big data mining tools to climate and environmental research- Presents a comprehensive review of theory and algorithms of big data mining for climate change- Includes current research in climate and environmental science as it relates to using big data algorithms
Jianping Li & Zhihua Zhang
Big Data Mining for Climate Change [EPUB ebook]
Big Data Mining for Climate Change [EPUB ebook]
Dieses Ebook kaufen – und ein weitere GRATIS erhalten!
Sprache Englisch ● Format EPUB ● ISBN 9780128187043 ● Verlag Elsevier Science ● Erscheinungsjahr 2019 ● herunterladbar 3 mal ● Währung EUR ● ID 7084464 ● Kopierschutz Adobe DRM
erfordert DRM-fähige Lesetechnologie