ICCS 2015: “Computational Science at the Gates of Nature”
Sixth Workshop on
Data Mining in Earth System Science (DMESS 2015)
Reykjavík, Iceland | June 1–3, 2015
Papers and Abstracts from the Workshop:
- Stepinski, Tomasz F., Jacek Niesterowicz, and Jaroslaw Jasiewicz (2015), Pattern-based Regionalization of Large Geospatial Datasets Using Complex Object-based Image Analysis, Procedia Comput. Sci., 51, 2168–2177, doi:10.1016/j.procs.2015.05.491.
- Mahajan, Salil, Katherine J. Evans, Marcia Branstetter, Valentine Anantharaj, and Julian K. Leifeld (2015), Fidelity of Precipitation Extremes in High Resolution Global Climate Simulations, Procedia Comput. Sci., 51, 2178–2187, doi:10.1016/j.procs.2015.05.492.
- Götz, Markus, Matthias Richerzhagen, Christian Bodenstein, Gabriele
Cavallaro, Philipp Glock, Morris Riedel, and Jón Atli Benediktsson (2015), On Scalable Data Mining Techniques for Earth Science, Procedia Comput. Sci., 51, 2188–2197, doi:10.1016/j.procs.2015.05.494.
- Charantonis, Anastase Alexandre, Pierre Testor, Laurent Mortier, Fabrizio D’Ortenzio, and Sylvie Thiria (2015), Completion of a Sparse GLIDER Database Using Multi-iterative Self-Organizing Maps (ITCOMP SOM), Procedia Comput. Sci., 51, 2198–2206, doi:10.1016/j.procs.2015.05.496.
- Sisneros, Robert (2015), A Feature-first Approach to Clustering for Highlighting Regions of Interest in Scientific Data, Procedia Comput. Sci., 51, 2207–2216, doi:10.1016/j.procs.2015.05.497.
- Hoffman, Forrest M., Jitendra Kumar, and Jay Larson (2015), Data Mining in Earth System Science (DMESS 2015), Abstracts of the International Conference on Computational Science (ICCS 2015).
Workshop Description:
Spanning many orders of magnitude in time and space scales, Earth
science data are increasingly large and complex and often represent
very long time series, making such data difficult to analyze, visualize,
interpret, and understand. Moreover, advanced electronic data storage
technologies have enabled the creation of large repositories of
observational data, while modern high performance computing capacity
has enabled the creation of detailed empirical and process-based models
that produce copious output across all these time and space scales.
The resulting “explosion” of heterogeneous, multi-disciplinary
Earth science data have rendered traditional means of integration and
analysis ineffective, necessitating the application of new analysis
methods and the development of highly scalable software tools for
synthesis, assimilation, comparison, and visualization. This workshop explores
various data mining approaches to understanding Earth science processes,
emphasizing the unique technological challenges associated with utilizing very
large and long time series geospatial data sets. Especially encouraged
are original research papers describing applications of statistical and data mining
methods—including cluster analysis, empirical orthogonal functions
(EOFs), genetic algorithms, neural networks, automated data assimilation, and other machine learning
techniques—that support analysis and discovery in climate, water
resources, geology, ecology, and environmental sciences research.
Previous workshops:
Program Committee Members:
- Michael W. Berry (Department of Electrical Engineering and Computer Science, University of Tennessee, Knoxville, Tennessee, USA)
- Bjørn-Gustaf J. Brooks (Eastern Forest Environmental Threat Assessment Center, USDA Forest Service, Asheville, North Carolina, USA)
- Nathaniel O. Collier (Terrestrial System Modeling Group, Environmental Sciences Division and Oak Ridge Climate Change Science Institute (CCSI), Oak Ridge National Laboratory, Oak Ridge, Tennessee, USA)
- Auroop R. Ganguly (Department of Civil and Environmental Engineering, Northeastern University, Boston, Massachusetts, USA)
- William W. Hargrove (Eastern Forest Environmental Threat Assessment Center, USDA Forest Service, Asheville, North Carolina, USA)
- Forrest M. Hoffman (Computational Earth Sciences Group, Computer Science & Mathematics Division and Oak Ridge Climate Change Science Institute (CCSI), Oak Ridge National Laboratory, Oak Ridge, Tennessee, USA; Department of Earth System Science, University of California, Irvine, California, USA)
- Jian Huang (Department of Electrical Engineering and Computer Science, University of Tennessee, Knoxville, Tennessee USA)
- Jitendra Kumar (Terrestrial Systems Modeling Group, Environmental Sciences Division and Oak Ridge Climate Change Science Institute (CCSI), Oak Ridge National Laboratory, Oak Ridge, Tennessee, USA)
- Vipin Kumar (Department of Computer Science and Engineering, University of Minnesota, Minneapolis, Minnesota, USA)
- J. Walter Larson (Centre for Mathematics and Its Applications, Mathematical Sciences Institute, The Australian National University, Canberra ACT 0200, AUSTRALIA)
- Miguel D. Mahecha (Department of Biogeochemical Integration, Max Planck Institute for Biogeochemistry, Jena, GERMANY)
- Kumar Mahinthakumar (Department of Civil, Construction, & Environmental Engineering, North Carolina State University, Raleigh, North Carolina, USA)
- Richard T. Mills (Earth and Aquatic Sciences Group, Environmental Sciences Division and Oak Ridge Climate Change Science Institute (CCSI), Oak Ridge National Laboratory, Oak Ridge, Tennessee, USA; and Department of Electrical Engineering and Computer Science, University of Tennessee, Knoxville, Tennessee, USA)
- Stephen P. Norman (Eastern Forest Environmental Threat Assessment Center, USDA Forest Service, Asheville, North Carolina, USA)
- Karsten Steinhaeuser (Department of Computer Science and Engineering, University of Minnesota, Minneapolis, Minnesota, USA)
- R. Raju Vatsavai (Center for Geospatial Analytics, North Carolina State University, Raleigh, North Carolina, USA)
- Min Xu (Computational Earth Sciences Group, Computer Science & Mathematics Division and Oak Ridge Climate Change Science Institute (CCSI), Oak Ridge National Laboratory, Oak Ridge, Tennessee, USA)
Paper Submission:
Authors are invited to submit manuscripts of up to 10
(A4) pages reporting unpublished, mature, and original research and recent
developments/theoretical considerations in applications of data mining
to Earth sciences by December 15, 2014 January 15, 2015. Accepted papers will be printed
in the conference proceedings published by Elsevier Science in the
open-access Procedia Computer Science series. Submitted papers must
be camera-ready and formatted according to the rules of Procedia
Computer Science. Submission implies the willingness of at
least one of the authors to register and present the paper.
Please submit your paper via the conference website at https://easychair.org/conferences/?conf=iccs20150
and select the workshop “Sixth Data Mining in Earth System Science
(DMESS 2015)”.
Important Dates:
Full paper submission: |
December 15, 2014 January 31, 2015 |
Notification of paper acceptance: |
January 23, 2015 March 8, 2015 March 10, 2015 |
Camera-ready papers due: |
March 2, 2015 March 15, 2015 March 31, 2015 |
Author registration: |
January 23–March 31, 2015 March 10–31, 2015 |
Participant (non-author) early registration: |
January 23–April 17, 2015 March 10–April 17, 2015 |
Participant (non-author) late registration: |
From April 18, 2015 |
Welcome Reception: |
May 31, 2015 (17:00) |
Conference sessions: |
June 1–3, 2015 |
Contact:
Contribution to Computational Science:
This workshop will contribute to the field of Computational Science
by creating a forum for original research papers and presentations from
leading computational and Earth scientists who are applying data mining
techniques on advanced computing platforms (HPC systems, clusters,
grids and clouds) to distill knowledge from the massive—and
growing—data sets created by the Earth science community.
About the Workshop Co-conveners:
Forrest
M. Hoffman has been developing software for data mining using
high performance computing (HPC) and applying data mining methods to
problems in landscape ecology, remote sensing, and climate analyses for
more than a decade. Forrest co-convened the GeoComputation workshop
at ICCS
2009, the Second Workshop
on Data Mining in Earth System Science at ICCS 2011, the Third Workshop
on Data Mining in Earth System Science at ICCS 2012, the Fourth Workshop
on Data Mining in Earth System Science at ICCS 2013, the Fifth Workshop
on Data Mining in Earth System Science at ICCS 2014.
Forrest's publication list is available at http://www.climatemodeling.org/~forrest/pubs.
Jitendra Kumar
conducts research at the intersection of high performance computing,
environmental and Earth sciences, and systems analysis and data
mining. His research entails data mining, large-scale global optimization,
computational hydrology and hydrogeology, and development of parallel
algorithms for large-scale supercomputers.
J.
Walter Larson is a leader in the development of coupling
software for simulation of complex systems, most notably as the
co-lead developer of the Model Coupling Toolkit (http://mcs.anl.gov/mct)
and as one of the developers of the coupling infrastructure in
the Community Climate System Model. He has published papers
in the fields of mathematical and plasma physics, climate,
data assimilation, and computational science (http://people.physics.anu.edu.au/~jwl105/Pubs).
For assistance or additional information, contact Forrest Hoffman
(forrest@climatemodeling.org)
Last Modified: Saturday, 06-May-2017 23:29:37 EDT
Warnings and Disclaimers