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Discovery of Patterns in the Global Climate System using Data Mining

Discovery of Patterns in the Global Climate System using Data Mining. Vipin Kumar Army High Performance Computing Research Center Department of Computer Science University of Minnesota http://www.cs.umn.edu/~kumar Research sponsored by AHPCRC/ARL, DOE, NASA, and NSF. What is Data Mining?.

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Discovery of Patterns in the Global Climate System using Data Mining

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  1. Discovery of Patterns in the Global Climate System using Data Mining Vipin Kumar Army High Performance Computing Research Center Department of Computer Science University of Minnesota http://www.cs.umn.edu/~kumar Research sponsored by AHPCRC/ARL, DOE, NASA, and NSF

  2. What is Data Mining? • Many Definitions • Non-trivial extraction of implicit, previously unknown and potentially useful information from data • Exploration & analysis, by automatic or semi-automatic means, of large quantities of data in order to discover meaningful patterns

  3. What is not Data Mining? Look up phone number in phone directory Query a Web search engine for information about “Amazon” What is Data Mining? Certain names are more prevalent in certain US locations (O’Brien, O’Rourke, … in Boston area) Group together similar documents returned by search engine according to their context (Amazon rainforest, Amazon.com, etc.) What is (not) Data Mining?

  4. Why Mine Data? Commercial Viewpoint • Lots of data is being collected and warehoused • Web data • Yahoo! collects 10GB/hour • purchases at department/grocery stores • Walmart records  20 million transactions per day • Bank/Credit Card transactions • Computers have become cheaper and more powerful • Competitive Pressure is Strong • Provide better, customized services for an edge (e.g. in Customer Relationship Management)

  5. Why Mine Data? Scientific Viewpoint • Data collected and stored at enormous speeds (GB/hour) • remote sensors on a satellite • NASA EOSDIS archives over 1-petabytes of Earth Science data per year • telescopes scanning the skies • Sky survey data • gene expression data • scientific simulations • terabytes of data generated in a few hours • Traditional techniques infeasible for raw data • Data mining may help scientists • in automated analysis of massive data sets • in hypothesis formation

  6. There is often information “hidden” in the data that is not readily evident Human analysts may take too long to discover useful information Much of the data is never analyzed at all The Data Gap Total new disk (TB) since 1995 Number of analysts Ref: R. Grossman, C. Kamath, V. Kumar, Data Mining for Scientific and Engineering Applications Mining Large Data Sets - Motivation

  7. Origins of Data Mining • Draws ideas from machine learning/AI, pattern recognition, statistics, and database systems • Traditional techniquesmay be unsuitable due to • Enormity of data • High dimensionality of data • Heterogeneous, distributed nature of data Statistics/AI Machine Learning/ Pattern Recognition Data Mining Database systems

  8. Statistics/AI Machine Learning/ Pattern Recognition Data Mining High Performance Computing Database systems Role of Parallel & Distributed Computing • High Performance Computing (HPC) is often critical for scalability to large data sets • Many algorithms use more than O(n)computation time • Sequential computers have limited memory, thus requiring multiple, expensiveI/O passes over data • Distributed computing is neededbecause data is distributed • due to privacy reasons • physically dispersed over many different geographic locations

  9. Data Mining Tasks... Data Clustering Predictive Modeling Anomaly Detection Association Rules Milk

  10. Predictive Modeling • Find a model for class attribute as a function of the values of other attributes Model for predicting tax evasion categorical categorical continuous Married class No Yes NO Income100K Yes Yes Income  80K NO Yes No Learn Classifier NO YES

  11. Predictive Modeling: Applications • Targeted Marketing • Customer Attrition/Churn • Classifying Galaxies • Class: • Stages of Formation Early • Attributes: • Image features, • Characteristics of light waves received, etc. Intermediate Late • Sky Survey Data Size: • 72 million stars, 20 million galaxies • Object Catalog: 9 GB • Image Database: 150 GB Courtsey: http://aps.umn.edu

  12. Clustering • Given a set of data points, find groupings such that • Data points in one cluster are more similar to one another • Data points in separate clusters are less similar to one another

  13. Clustering: Applications • Market Segmentation • Gene expression clustering • Document Clustering

  14. Association Rule Discovery • Given a set of records, find dependency rules which will predict occurrence of an item based on occurrences of other items in the record • Applications • Marketing and Sales Promotion • Supermarket shelf management • Inventory Management Rules Discovered: {Milk} --> {Coke} {Diaper, Milk} --> {Beer}

  15. Deviation/Anomaly Detection • Detect significant deviations from normal behavior • Applications: • Credit Card Fraud Detection • Network Intrusion Detection Typical network traffic at University level may reach over 100 million connections per day

  16. Discovery of Patterns in the Earth Science Data NASA ESE questions: • How is the global Earth system changing? • What are the primary forcings? • How does Earth system respond to natural & human-induced changes? • What are the consequences of changes in the Earth system? • How well can we predict future changes? • Global snapshots of values for a number of variables on land surfaces or water • Data sources: • weather observation stations • earth orbiting satellites (since 1981) • modeled-based data

  17. Climate Indices: Connecting the Ocean/Atmosphere and the Land • A climate index is a time series of sea surface temperature or sea level pressure • Climate indices capture teleconnections • The simultaneous variation in climate and related processes over widely separated points on the Earth El Nino Events Nino 1+2 Index

  18. Discovery of Climate Indices Using Clustering A novel clustering technique was developed to identify regions of uniform behavior in spatio-temporal data. The use of clustering for discovering climate indices is driven by the intuition that a climate phenomenon is expected to involve a significant region of the ocean or atmosphere where the behavior is relatively uniform over the entire area. A cluster-based approach for discovering climate indices provides better physical interpretation than those based on the SVD/EOF paradigm, and provide candidate indices with better predictive power than known indices for some land areas. Some SST clusters reproduce well-known climate indices. In particular, we were able to replicate the four El Nino SST-based indices: cluster 94 corresponds to NINO 1+2, 67 to NINO 3, 78 to NINO 3.4, and 75 to NINO 4. The correlations of these clusters to their corresponding indices are higher than 0.9. Some SST clusters, e.g., cluster 29, are significantly different than known indices, but provide better correlation with land climate variables than known indices for many parts of the globe. The bottom figure shows the difference in correlation to land temperature between cluster 29 and the El Nino indices. Areas in yellow indicate where cluster 29 has higher correlation.

  19. Mining the Climate Data: Clustering # grid points: 67K Land, 40K Ocean Current data size range: 20 – 400 MB Monthly data over a range of 17 to 50 years El Nino Regions Defined by Earth Scientists Clusters of SST that have high impact on land temperature

  20. SST Cluster Moderately Correlated to Known Indices Ref: Steinbach et al 2002/2003 (KDD 2003)

  21. Climate Indices Cluster Centroids SVD Components Best-shifted Correlation Best Centroid Best SVD Correlation Best Component SOI -0.7006 75 (G0) -0.5427 3 NAO -0.2973 19 (G2) 0.1774 8 AO -0.2383 29 (G1) 0.2301 8 PDO 0.5172 20 (G1) -0.4684 7 QBO -0.2675 20 (G1) 0.3187 11 CTI 0.9147 67 (G0) 0.6316 3 WP 0.2590 78 (G0) 0.1904 3 NINO1+2 0.9225 94 (GO) -0.5419 1 NINO3 0.9462 67 (G0) -0.6449 1 NINO3.4 0.9196 78 (G0) -0.6844 1 NINO4 0.9165 75 (G0) -0.6894 1 Correlation of Known Indices with SST Cluster Centroids and SVD Components

  22. SLPClusters AO NAO SOI SOI DMI

  23. Pair of SLP Clusters that Correspond to SOI Centroids of SLP clusters 13 and 20 Cluster centroid 20 – 13 versus SOI Correlation = 0.75

  24. Finding New Patterns: Indian Monsoon Dipole Mode Index • Recently a new index, the Indian Ocean Dipole Mode index (DMI), has been discovered. • DMI is defined as the difference in SST anomaly between the region 5S-5N, 55E-75E and the region 0-10S, 85E-95E. • DMI and is an indicator of a weak monsoon over the Indian subcontinent and heavy rainfall over East Africa. • We can reproduce this index as a difference of pressure indices of clusters 16 and 22. Plot of cluster 16 – cluster 22 versus the Indian Ocean Dipole Mode index. (Indices smoothed using 12 month moving average.)

  25. Mining the Climate Data: Associations Ref: Tan et al 2001 FPAR-Hi ==> NPP-Hi (sup=5.9%, conf=55.7%) Grassland/Shrubland areas Association rule is interesting because it appears mainly in regions with grassland/shrubland vegetation type

  26. Detection of Ecosystem Disturbances Detection of sudden changes in greenness over extensive areas from these large global satellite data sets required development of automated techniques that take into account the timing, location, and magnitude of such changes. An algorithm was designed to identify any significant and sustained declines in FPAR during an 18 year time period. This algorithm transforms a non-stationary time series to a sequence of disturbance events. Techniques were also developed to discover associations between ecosystem disturbance regimes and historical climate anomalies. These algorithms and techniques have allowed Earth Science researchers to gain a deeper insight into the interplay among natural disasters, human activities and the rise of carbon dioxide in Earth's atmosphere during two recent decades. Release: 03-51AR          NASA DATA MINING REVEALS A NEW HISTORY OF NATURAL DISASTERS NASA is using satellite data to paint a detailed global picture of the interplay among natural disasters, human activities and the rise of carbon dioxide in the Earth's atmosphere during the past 20 years. http://amesnews.arc.nasa.gov/releases/2003/03_51AR.html

  27. Understanding Global Teleconnections of Climate to Regional Model Estimates of Amazon Ecosystem Carbon Fluxes Discovered, using correlation analysis, a strong connection between the rainfall patterns generated by the South American monsoon system and terrestrial greenness over a large section of the southern Amazon region. This is the first direct evidence of large-scale effects of the Atlantic Ocean rainfall systems on yearly greenness changes in the Amazon region, and the finding has important implications for the impacts of "slash and burn" deforestation on this crucial ecosystem of the world.

  28. High Resolution EOS Data • EOS satellites provide high resolution measurements • Finer spatial grids • 8 km  8 km grid produces 10,848,672 data points • 1 km  1 km grid produces 694,315,008 data points • More frequent measurements • Multiple instruments • Generates terabytes of day per day • High resolution data allows us to answer more detailed questions: • Detecting patterns such as trajectories, fronts, and movements of regions with uniform properties • Finding relationships between leaf area index (LAI) and topography of a river drainage basin • Finding relationships between fire frequency and elevation as well as topographic position Earth Observing System (e.g., Terra and Aqua satellites) http://www.crh.noaa.gov/lmk/soo/docu/basicwx.htm

  29. Discovery of Changes from the Global Carbon Cycle and Climate System Using Data Mining: Journal Publications • Potter, C., Tan, P., Steinbach, M., Klooster, S., Kumar, V., Myneni, R., Genovese, V., 2003. Major disturbance events in terrestrial ecosystems detected using global satellite data sets. Global Change Biology, July, 2003. • Potter, C., Klooster, S. A., Myneni, R., Genovese, V., Tan, P., Kumar,V. 2003. Continental scale comparisons of terrestrial carbon sinks estimated from satellite data and ecosystem modeling 1982-98. Global and Planetary Change(in press) • Potter, C., Klooster, S. A., Steinbach, M., Tan, P., Kumar, V., Shekhar, S., Nemani, R., Myneni, R., 2003. Global teleconnections of climate to terrestrial carbon flux. Geophys J. Res.- Atmospheres (in press). • Potter, C., Klooster, S., Steinbach, M., Tan, P., Kumar, V., Myneni, R., Genovese, V., 2003. Variability in Terrestrial Carbon Sinks Over Two Decades: Part 1 – North America. Geophysical Research Letters (in press) • Potter, C. Klooster, S., Steinbach, M., Tan, P., Kumar, V., Shekhar, S. and C. Carvalho, 2002. Understanding Global Teleconnections of Climate to Regional Model Estimates of Amazon Ecosystem Carbon Fluxes. Global Change Biology(in press) • Potter, C., Zhang, P., Shekhar, S., Kumar, V., Klooster, S., and Genovese, V., 2002. Understanding the Controls of Historical River Discharge Data on Largest River Basins. (in preparation)

  30. Discovery of Changes from the Global Carbon Cycle and Climate System Using Data Mining: Conference/Workshop Publications • Steinbach, M., Tan, P. Kumar, V., Potter, C. and Klooster, S., 2003. Discovery of Climate Indices Using Clustering, KDD 2003, Washington, D.C., August 24-27, 2003. • Zhang, P., Huang, Y., Shekhar, S., and Kumar, V., 2003. Exploiting Spatial Autocorrelation to Efficiently Process Correlation-Based Similarity Queries , Proc. of the 8th Intl. Symp. on Spatial and Temporal Databases (SSTD '03) • Zhang, P., Huang, Y., Shekhar, S., and Kumar, V., 2003. Correlation Analysis of Spatial Time Series Datasets: A Filter-And-Refine Approach, Proc. of the Seventh Pacific-Asia Conference on Knowledge Discovery and Data Mining (PAKDD '03) • Ertoz, L., Steinbach, M., and Kumar, V., 2003. Finding Clusters of Different Sizes, Shapes, and Densities in Noisy, High Dimensional Data, Proc. of Third SIAM International Conference on Data Mining. • Tan, P., Steinbach, M., Kumar, V., Potter, C., Klooster, S., and Torregrosa, A., 2001. Finding Spatio-Temporal Patterns in Earth Science Data, KDD 2001 Workshop on Temporal Data Mining, San Francisco • Kumar, V., Steinbach, M., Tan, P., Klooster, S., Potter, C., and Torregrosa, A., 2001. Mining Scientific Data: Discovery of Patterns in the Global Climate System, Proc. of the 2001 Joint Statistical Meeting, Atlanta

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