Sunday, 30 November 2008

Wseas Transactions

New Subscription to Wseas Transactions

The following information was submitted:

Transactions: WSEAS TRANSACTIONS ON CIRCUITS AND SYSTEMS
Transactions ID Number: 31-748
Full Name: Wang Xingzhi
Position: Ph.D. Candidate
Age: ON
Sex: Male
Address: No.800,Rd.Dongchuan,Shanghai,Zip code:200240
Country: CHINA
Tel:
Tel prefix:
Fax:
E-mail address: wangxingzhi2002@yahoo.com.cn
Other E-mails: xzwang.sjtu@gmail.com
Title of the Paper: an adaptive scheme for distributed dynamic security assessment of large scale power systems
Authors as they appear in the Paper: Xingzhi Wang, Zheng Yan and Li Li
Email addresses of all the authors: wangxingzhi2002@yahoo.com.cn,xzwang.sjtu@gmail.com,lili5396088@yahoo.com.cn
Number of paper pages: 10
Abstract: The requirements for significant computational resources imposed by dynamic security assessment applications have led to an increasing interest in the use of parallel and distributed computing technologies. This paper presents an adaptive scheme that involves user-friendly flat application program interfaces for scripting and an object-oriented programming environment for distributed dynamic security assessment implementation. Functional parallelism and data parallelism are supported by each of the message passing interface model and TCP/IP model. Adaptive stochastic-based objectives and conservative parameter prediction techniques are used to produce more efficient data parallelism. Tests for a 39-bus network and a 3872-bus network are reported, and the results of these experiments demonstrate that the proposed scheme is able to execute the distributed simulations on either stand-alone personal computers, cluster systems, or a computational grid infrastructure and!
provide efficient parallelism for the given environment.
Keywords: Adaptive systems, Graph partitioning, Parallel processing, Parameter estimation, Power system security
EXTENSION of the file: .doc
Special (Invited) Session:
Organizer of the Session:
How Did you learn about congress:
IP ADDRESS: 202.120.36.196