1 / 11

Mining Climate and Ecosystem Data : Challenges and Opportunities

Vipin Kumar University of Minnesota. Mining Climate and Ecosystem Data : Challenges and Opportunities. Climate Change : The defining issue of our era. Greenhouse gas emissions are the cause of global warming Human induced ecosystem changes (e.g. deforestation) Increased use of fossil fuels

noelle
Télécharger la présentation

Mining Climate and Ecosystem Data : Challenges and Opportunities

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. NGDM 2009 panel on Climate Change Vipin Kumar University of Minnesota Mining Climate and Ecosystem Data : Challenges and Opportunities

  2. Climate Change : The defining issue of our era • Greenhouse gas emissions are the cause of global warming • Human induced ecosystem changes (e.g. deforestation) • Increased use of fossil fuels • Consequences of Global Warming include : • Increased occurrence of extreme events • Melting ice caps/rising sea levels • Heat waves/Droughts/Floods • Shocks in supplies of water and food

  3. Need of the day • Ability to answer questions such as: • What is the impact of climate change on intensity, duration and frequency of extreme events? • E.g. Droughts, Floods, Hurricanes. Heat Waves • What is the impact of deforestation on global carbon cycle? • What is the relationship of crop yield and prices to deforestation dynamics and greenhouse gas emissions?

  4. A Golden Opportunity for the KDD community • Data sets need to answer the questions above are becoming available • Remote Sensing data from satellites and weather radars • Data from in-situ sensors and sensor networks • Output from climate and earth system models • Data guided processes can complement hypothesis guided data analysis to develop predictive insights for use by climate scientists, policy makers and community at large.

  5. Challenges in Mining Earth Science Data • Analysis and Discovery approaches need to be cognizant of climate and ecosystem data characteristics such as: • Spatio-temporal autocorrelation • Low-frequency variability • Long-range spatial dependence • Long memory temporal processes (teleconnections) • Nonlinear processes • Multi-scale nature • Non-Stationarity

  6. Illustrative Application: Forest Cover Change • Changes in forests account for over 20% of the greenhouse gas emissions • 2nd only to fossil fuel emissions • Terrestrial carbon can provide up to 25% of the climate change solution • Ability to monitor changes in global forest cover over space and time is critical for enabling inclusion of forests in carbon trading • The need for a scalable technological solution to assess the state of forest ecosystems and how they are changing has become increasingly urgent. Deforestation moves large amounts of carbon into the atmosphere in the form of CO2. Good to Go Green: SFO Unveils Carbon Offset Kiosks 'Carbon Offset' Business Takes Root by Martin Kaste

  7. Illustrative Application: Finding Climate Indices • 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 Sea surface temperature anomalies in the region bounded by 80 W-90 W and 0 -10 S

  8. Discovery of Climate Indices Using Clustering • An alternative approach for finding candidate indices. • Clusters represent ocean regions with relatively homogeneous behavior. • The centroids of these clusters are time series that summarize the behavior of these ocean areas, and thus, represent potential climate indices. • Clusters are found using the Shared Nearest Neighbor (SNN) method that eliminates “noise” points and tends to find regions of “uniform density”. • Clusters are filtered to eliminate those with low impact on land points • Many SST clusters and SLP cluster pairs reproduce well-known climate indices • Provides a 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. AO NAO SOI SOI DMI Steinbach, M., Tan, P., Kumar, V., Klooster, S., and Potter, C. 2003. Discovery of climate indices using clustering. In Proceedings of the Ninth ACM SIGKDD international Conference on Knowledge Discovery and Data Mining (Washington, D.C., August 24 - 27, 2003). KDD '03. ACM, New York, NY, 446-455.

  9. Finding New Patterns: Indian Monsoon Dipole Mode Index Plot of cluster 16 – cluster 22 versus the Indian Ocean Dipole Mode index. (Indices smoothed using 12 month moving average.) • Recently discovered Indian Ocean Dipole Mode index (DMI)* • 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. • The difference of SLP clusters 16 and 22 is a surrogate for the DMI index that is defined using SST. DMI * N. H. Saji, B. N. Goswami, P. N. Vinayachandran and T. Yamagata, “A dipole mode in the tropical Indian Ocean,” Nature 401, 360-363 (23 September 1999).

  10. Source: Portis et al, Seasonality of the NAO, AGU Chapman Conference, 2000. Dynamic Climate Indices • Most well-known indices based on data collected at fixed land stations. • NAO computed as the normalized difference between SLP at a pair of land stations in the Arctic and the subtropical Atlantic regions of the North Atlantic Ocean • However, underlying phenomenon may not occur at exact location of the land station. e.g. NAO • Challenge: Given sensor readings for SLP at different points in the ocean, how to identify clusters of low/high pressure points that may move with space and time.

  11. Example of a non-random association pattern between FPAR-Hi and NPP-Hi events and the land locations where such pattern is observed frequently. Left: Locations that support the association pattern {abnormally high FPAR => abnormally high NPP}. Right: Land locations that correspond to grassland and shrubland regions. The remarkable similarity between the two figures suggest that grasslands are vegetation that is able to more quickly take advantage of periodically high precipitation (and possibly solar radiation) than forests. Illustrative Application: Relationship Mining

More Related