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国际会议论文翻译

2014国际智能电网计算能源管理研讨会

会议名称(中文):  2014国际智能电网计算能源管理研讨会 
会议名称(英文):  International Workshop on Computational Energy Management in Smart Grids 
所属学科:  计算机应用技术,人工智能,电力电子  
开始日期:  2014-07-06 
所在国家:  中华人民共和国 
所在城市:  北京市     朝阳区 
具体地点:  北京国际会议中心 
主办单位:  中科院自动化研究所、International Neural Network Society、 IEEE Computational Intelligence Society 

[ 重要日期 ]
摘要截稿日期:  2014-01-20 

[ 会务组联系方式 ]   
联系电话:  +390712204381 Mobile: +393288413154 
传真:  +390712204464 
E-MAIL:  s.squartini@univpm.it 
  
会议网站:  http://www.cemisg2014.org/  
会议背景介绍:  The International Workshop on Computational Energy Management in Smart Grids (CEMiSG 2014) will be held on 6th July 2014 in Beijing, China as inside the 2014 IEEE World Congress on Computational Intelligence (WCCI 2014).

The Workshop is oriented to explore the new frontiers and challenges within the Computational Intelligence research area, including in particular Neural Networks, Evolutionary Computation and Soft Computing based solutions, for the optimal usage and management of energy resources in Smart Grid applicative scenarios. The Workshop will be a proficient discussion table within the IEEE WCCI 2014 conference, which attracts the most famous researchers in the Computational Intelligence field worldwide.

The Workshop venue is the Beijing International Convention Center, the same of the IEEE WCCI 2014 conference. More information about the venue location and accommodation facilities can be found here.
 
征文范围及要求:  Topics
·Smart Home Energy Management
·Computational Intelligence for Smart Grids
·Learning Systems for Smart Grid Optimization Tasks
·Neural Networks algorithms for Complex Energy Systems
·Evolutionary Algorithms in Energy Applications
·Soft Computing in Renewable Energy Systems
·Energy Resource and Task Scheduling
·Building Energy Consumption Forecasting
·Demand-side Management
·Short-term Load Forecasting
·Neural Networks for Time Series Prediction in Smart Grids
·Non-intrusive Electrical Load Analysis
·Hybrid Battery Management
·Brain inspired algorithms for Energy Efficiency