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Frontiers of Mechanical Engineering

ISSN 2095-0233

ISSN 2095-0241(Online)

CN 11-5984/TH

邮发代号 80-975

2019 Impact Factor: 2.448

Frontiers of Mechanical Engineering  2016, Vol. 11 Issue (3): 275-288   https://doi.org/10.1007/s11465-016-0372-3
  本期目录
Standard model of knowledge representation
Wensheng YIN()
School of Mechanical Science and Engineering, Huazhong University of Science and Technology, Wuhan 430074, China
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Abstract

Knowledge representation is the core of artificial intelligence research. Knowledge representation methods include predicate logic, semantic network, computer programming language, database, mathematical model, graphics language, natural language, etc. To establish the intrinsic link between various knowledge representation methods, a unified knowledge representation model is necessary. According to ontology, system theory, and control theory, a standard model of knowledge representation that reflects the change of the objective world is proposed. The model is composed of input, processing, and output. This knowledge representation method is not a contradiction to the traditional knowledge representation method. It can express knowledge in terms of multivariate and multidimensional. It can also express process knowledge, and at the same time, it has a strong ability to solve problems. In addition, the standard model of knowledge representation provides a way to solve problems of non-precision and inconsistent knowledge.

Key wordsknowledge representation    standard model    ontology    system theory    control theory    multidimensional representation
收稿日期: 2015-09-14      出版日期: 2016-08-31
Corresponding Author(s): Wensheng YIN   
 引用本文:   
. [J]. Frontiers of Mechanical Engineering, 2016, 11(3): 275-288.
Wensheng YIN. Standard model of knowledge representation. Front. Mech. Eng., 2016, 11(3): 275-288.
 链接本文:  
https://academic.hep.com.cn/fme/CN/10.1007/s11465-016-0372-3
https://academic.hep.com.cn/fme/CN/Y2016/V11/I3/275
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