首页> 外文期刊>Journal of the Chinese Society of Mechanical Engineers, Series C: Transactions of the Chinese Society of Mechanical Engineers >Knowledge Representation and Reasoning Methodology based on GBR Algorithm for Modular Fixture Design
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Knowledge Representation and Reasoning Methodology based on GBR Algorithm for Modular Fixture Design

机译:基于GBR算法的模块化夹具设计知识表示与推理方法

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摘要

CBR algorithm provides a better knowledge transfer and explanation than rule-based inference. It solves new problems by adapting solutions that were used to solve old problems. Based on CBR algorithm, a methodology applied in modular fixture design and focus on workpiece locating is proposed in this study. A similar solution can be retrieved from past experiences. Evaluation is applied for this retrieved case by checking degrees of freedom (DOF) to determine whether it is satisfactory for a new problem and some components would be replaced if it is not. According to this methodology, a computer-aided modular fixture design system can be established in future. In the system, three sub-bases would be included. Data base stores many function structures that are assembled by modular components to complete some functions. Knowledge base stores the qualitative knowledge that is required in considering the location of the workpieces. Case base stores previous successful design cases that can be applied to develop a new solution. MOP-based memory technique is applied to organize these complex data, knowledge and case base. A demonstrated example is finally provided in this study to illustrate how this methodology works. This methodology principally focuses on inference process of case evaluation and modification. This is the most important and difficult issue on CBR algorithm. In the evaluation of workpiece locating, geometry recognition play a critical role. Feature recognition is beyond this study and then too detail discussion about that would not be given here. For this reason, the methodology can handle simple geometry workpiece only presently.
机译:与基于规则的推理相比,CBR算法提供了更好的知识传递和解释。它通过调整用于解决旧问题的解决方案来解决新问题。提出了一种基于CBR算法的模块化夹具设计方法,重点研究了工件的定位方法。从过去的经验中可以找到类似的解决方案。通过检查自由度(DOF)以确定对新问题是否满意,对这种检索到的情况进行评估,否则将替换某些组件。根据这种方法,将来可以建立计算机辅助的模块化夹具设计系统。在该系统中,将包括三个子库。数据库存储许多功能结构,这些功能结构由模块化组件组装而成,以完成某些功能。知识库存储考虑工件位置所需的定性知识。案例库存储了以前成功的设计案例,这些案例可用于开发新的解决方案。基于MOP的存储技术用于组织这些复杂的数据,知识和案例库。最后,在本研究中提供了一个演示示例,以说明此方法的工作原理。该方法主要集中于案例评估和修改的推理过程。这是CBR算法中最重要,最困难的问题。在工件定位评估中,几何形状识别起着至关重要的作用。特征识别不在本研究范围之内,因此此处将不进行过多的讨论。因此,该方法目前只能处理简单的几何形状的工件。

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