DARE 2017 - 5th International Workshop on Data Analytics for Renewable Energy Integration (DARE 2017)
Date2017-09-18 - 2017-09-21
Deadline2017-07-03
VenueSkopje, Macedonia, Former Yugoslav Republic of
Keywords
Topics/Call fo Papers
Climate change, the depletion of natural resources and rising energy costs have led to an increasing focus on renewable sources of energy. A lot of research has been devoted to the technologies used to extract energy from these sources; however, equally important is the storage and distribution of this energy in a way that is efficient and cost effective. Achieving this would generally require integration with existing energy infrastructure.
The challenge of renewable energy integration is inherently multidisciplinary and is particularly dependant on the use of techniques from the domains of data analytics, pattern recognition and machine learning. Examples of relevant research topics include the forecasting of electricity supply and demand, the detection of faults, demand response applications and many others. This workshop will provides a forum where interested researchers from the various related domains will be able to present and discuss their findings.
The challenge of renewable energy integration is inherently multidisciplinary and is particularly dependant on the use of techniques from the domains of data analytics, pattern recognition and machine learning. Examples of relevant research topics include the forecasting of electricity supply and demand, the detection of faults, demand response applications and many others. This workshop will provides a forum where interested researchers from the various related domains will be able to present and discuss their findings.
Other CFPs
- Seventh Workshop on Data Mining in Earth System Science (DMESS 2017)
- 12th International Workshop on Spatial and Spatiotemporal Data Mining (SSTDM-17)
- Optimization Based Techniques for Emerging Data Mining - Workshop of OEDM 2017
- Seventh IEEE ICDM Workshop on Data Mining in Networks
- 5th International Workshop on Data Science and Big Data Analytics
Last modified: 2017-05-13 11:11:25