Research on Indeterminacy Causal Inductive Automatic Reasoning Mechanism

Article Preview

Abstract:

The generalized inductive logic causal model that can synthetically process fuzzy indeterminacy and random indeterminacy was proposed in this paper. On this basis, the new logic indeterminacy causal inductive automatic reasoning mechanism based on fuzzy state description was put forward. At the end of this paper its application on the development of intelligent controller was discussed.

You might also be interested in these eBooks

Info:

Periodical:

Pages:

1625-1629

Citation:

Online since:

October 2010

Export:

Price:

Permissions CCC:

Permissions PLS:

Сopyright:

© 2010 Trans Tech Publications Ltd. All Rights Reserved

Share:

Citation:

[1] Yang Yi,Guo Tongqiang.Cross-Media Retrieval Based on Synthesis Reasoning Model. Journal of Computer-aided Design &Computer Graphics.2009,21(9).

Google Scholar

[2] Liang Xinyuan ,Shi Qingxi. Systems Engineering and Electronics.2009, 31(2).

Google Scholar

[3] Li Guo,Gao Jian-min.Modeling & reasoning technique of multiple failures based on polychromatic sets.Computer Integrated Manufacturing systems.2007, 13(4).

Google Scholar

[4] Xiao Gang,Wang Peijun.Strategy for Component Composition Based on Logical Reasoning and Its Algorithm.Information and Control.2009(06).

Google Scholar

[5] Grundy J.Storage and retrieval of software components us-ing aspects[C].Proceedings of The23rd Australasian Computer Science Conference. Los Alamitos, CA, USA: IEEE Computer Society, 2000,95-103.

Google Scholar

[6] Park Y , Wu L . Software component retrieval by composition us-ing semantic properties[J] . International Journal of Computers & Applications.2002,24 (1) : 8-13.

Google Scholar

[7] Yue Kun, Liu Weiyi.Qualitative representation, inference and their application of uncertain knowledge: a survey on qualitative probabilistic networks.Journal of Yunnan University(Natural Sciences Edition).2009(06).

Google Scholar

[8] Weichselberger,K. . International Journal of Approximate Reasoning,2000, 24 : 149~170.

Google Scholar

[9] Renooij S, van der Gaag L C. . Proceedings of the18th Conference on Uncertainty in Artificial Intelligence. San Francisco: Morgan Kaufmann Publishers.2002, : 422-429.

Google Scholar