首页> 外文学位 >A MULTIEXPERT KNOWLEDGE SYSTEM ARCHITECTURE FOR MANUFACTURING DECISION ANALYSIS (LEARNING, PROCESS PLANNING, EXPERT SYSTEM, ARTIFICIAL INTELLIGENCE, KNOWLEDGE FUSION).
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A MULTIEXPERT KNOWLEDGE SYSTEM ARCHITECTURE FOR MANUFACTURING DECISION ANALYSIS (LEARNING, PROCESS PLANNING, EXPERT SYSTEM, ARTIFICIAL INTELLIGENCE, KNOWLEDGE FUSION).

机译:制造决策分析(学习,过程计划,专家系统,人工智能,知识融合)的多专家知识体系结构。

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摘要

The use of AI/expert systems in evaluating AI technology for candidate manufacturing applications is addressed. The problem domain is focused on evaluating the technical feasibility of applying AI technology to process planning tasks. The research asserts that decision problems of this nature are too qualitative and complex for mathematical models or simulation, and are characteristic of problems for which techniques such as heuristic search and pattern matching are well suited. A key issue of importance to this research is the assumption that the above type problems are typical of most problem domains in that they do not rely on just a single expert for advice, but utilize the expertise of many knowledgable sources. But because each source can potentially conflict, the contemporary approach to building multiple expert systems has been to reach consensus before developing the knowledge base. This research presents a new approach to multiple expert systems (herein referred to as multiexpert knowledge systems) which addresses a limitation of contemporary expert system architectures. The developed architecture resolves the problem of accommodating multiple (potentially conflicting experts, and uses multiple lines of reasoning to advantage in learning new knowledge. The results demonstrate that such a system is capable of (1) obtaining useful advice from conflicting expertise and (2) learning new knowledge to be applied to the problem of interest--the evaluation of AI technology for process planning applications. When interfaced to an 'induction logic' program, the developed multiexpert knowledge system has the potential of becoming the first 'intelligent' expert system.
机译:解决了在评估候选制造应用程序的AI技术时使用AI /专家系统的问题。问题领域的重点是评估将AI技术应用于流程计划任务的技术可行性。该研究断言,这种性质的决策问题对于数学模型或仿真而言太定性和复杂,并且是诸如启发式搜索和模式匹配之类的技术非常适合的问题的特征。该研究重要的一个关键问题是,假设上述类型问题是大多数问题领域的典型问题,因为它们不仅仅依靠一个专家来提供建议,而是利用许多可广为人知的资源来提供专业知识。但是,由于每个来源都有潜在的冲突,因此在建立知识库之前,现代的构建多个专家系统的方法已达成共识。这项研究提出了一种针对多个专家系统(在此称为多专家知识系统)的新方法,该方法解决了现代专家系统体系结构的局限性。开发的体系结构解决了容纳多名(潜在冲突专家)的问题,并使用多条推理方法在学习新知识中占优势。结果表明,这样的系统能够(1)从冲突的专业知识中获得有用的建议,以及(2)学习将要应用到感兴趣的问题上的新知识-评估用于过程计划应用程序的AI技术。与“归纳逻辑”程序接口时,已开发的多专家知识系统有可能成为第一个“智能”专家系统。

著录项

  • 作者

    LECLAIR, STEVEN RAY.;

  • 作者单位

    Arizona State University.;

  • 授予单位 Arizona State University.;
  • 学科 Engineering Industrial.
  • 学位 Ph.D.
  • 年度 1985
  • 页码 402 p.
  • 总页数 402
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:51:08

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