Kids Library Home

Welcome to the Kids' Library!

Search for books, movies, music, magazines, and more.

     
Available items only
Electronic Book
Author Zhang, Zhihua, author.

Title Big data mining for climate change / Zhihua Zhang, Jianping Li.

Imprint Amsterdam : Elsevier, 2020.

Copies

Location Call No. OPAC Message Status
 Axe Elsevier ScienceDirect Ebook  Electronic Book    ---  Available
Description 1 online resource (346 pages)
text txt rdacontent
computer c rdamedia
online resource cr rdacarrier
Note Online resource; title from PDF title page (EBSCO, viewed December 4, 2019)
Contents Front Cover; Big Data Mining for Climate Change; Copyright; Contents; Preface; 1 Big climate data; 1.1 Big data sources; 1.1.1 Earth observation big data; 1.1.2 Climate simulation big data; 1.2 Statistical and dynamical downscaling; 1.3 Data assimilation; 1.3.1 Cressman analysis; 1.3.2 Optimal interpolation analysis; 1.3.3 Three-dimensional variational analysis; 1.3.4 Four-dimensional variational analysis; 1.4 Cloud platforms; 1.4.1 Cloud storage; 1.4.2 Cloud computing; Further reading; 2 Feature extraction of big climate data; 2.1 Clustering; 2.1.1 K-means clustering
2.1.2 Hierarchical clustering2.2 Hidden Markov model; 2.3 Expectation maximization; 2.4 Decision trees and random forests; 2.5 Ridge and lasso regressions; 2.6 Linear and quadratic discriminant analysis; 2.6.1 Bayes classi er; 2.6.2 Linear discriminant analysis; 2.6.3 Quadratic discriminant analysis; 2.7 Support vector machines; 2.7.1 Maximal margin classi er; 2.7.2 Support vector classi ers; 2.7.3 Support vector machines; 2.8 Rainfall estimation; 2.9 Flood susceptibility; 2.10 Crop recognition; Further reading; 3 Deep learning for climate patterns; 3.1 Structure of neural networks
3.2 Back propagation neural networks3.2.1 Activation functions; 3.2.2 Back propagation algorithms; 3.3 Feedforward multilayer perceptrons; 3.4 Convolutional neural networks; 3.5 Recurrent neural networks; 3.5.1 Input-output recurrent model; 3.5.2 State-space model; 3.5.3 Recurrent multilayer perceptrons; 3.5.4 Second-order network; 3.6 Long short-term memory neural networks; 3.7 Deep networks; 3.7.1 Deep learning; 3.7.2 Boltzmann machine; 3.7.3 Directed logistic belief networks; 3.7.4 Deep belief nets; 3.8 Reinforcement learning; 3.9 Dendroclimatic reconstructions
3.10 Downscaling climate variability3.11 Rainfall-runoff modeling; Further reading; 4 Climate networks; 4.1 Understanding climate systems as networks; 4.2 Degree and path; 4.3 Matrix representation of networks; 4.4 Clustering and betweenness; 4.5 Cut sets; 4.6 Trees and planar networks; 4.7 Bipartite networks; 4.8 Centrality; 4.8.1 Degree centrality; 4.8.2 Closeness centrality; 4.8.3 Betweenness centrality; 4.9 Similarity; 4.9.1 Cosine similarity; 4.9.2 Pearson similarity; 4.10 Directed networks; 4.11 Acyclic directed networks; 4.12 Weighted networks; 4.12.1 Vertex strength
4.12.2 Weight-degree/weight-weight correlation4.12.3 Weighted clustering; 4.12.4 Shortest path; 4.13 Random walks; 4.14 El Niño southern oscillation; 4.15 North Atlantic oscillation; Further reading; 5 Random climate networks and entropy; 5.1 Regular networks; 5.1.1 Fully connected networks; 5.1.2 Regular ring-shaped networks; 5.1.3 Star-shaped networks; 5.2 Random networks; 5.2.1 Giant component; 5.2.2 Small component; 5.3 Con guration networks; 5.3.1 Edge probability and common neighbor; 5.3.2 Degree distribution; 5.3.3 Giant components; 5.3.4 Small components; 5.3.5 Directed random network
Summary Delivering a rich understanding of climate-related big data techniques, this comprehensive book highlights how to navigate huge amount of climate data and resources available using big data applications. -- Edited summary from book.
Subject Climatology -- Statistical methods.
Data mining.
Data Mining
Exploration de données (Informatique)
Climatology -- Statistical methods
Data mining
Added Author Li, Jianping, author.
Other Form: Print version : 9780128187036
ISBN 9780128187043 (electronic bk.)
0128187042 (electronic bk.)
9780128187036
0128187034
Standard No. AU@ 000066251751
AU@ 000067064281
UKMGB 019616705

 
    
Available items only