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A KNOWLEDGE CAPITALIZATION METHODOLOGY BASED ON AUTOMATIC KNOWLEDGE EXTRACTION FROM 3D CAD MODELS

机译:基于3D CAD模型自动知识提取的知识能力化方法

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The issue of improving quality, costs and delays indicators in design and manufacturing is more relevant than ever in the industry. After lean manufacturing, well known in production process, the lean engineering approach is being implemented today in the field of design, taking the name of lean product development.The management of knowledge and know-how (existing, new or to be acquired) is the heart of lean engineering. In our suggested methodology this is implemented through a new generation of tools called Knowledge Configuration Management (KCM) and Knowledge Extraction Assistant (KEA).KCM tools are lean engineering components that provide analytical approach to knowledge management and knowledge-based engineering. These tools require a highly integrated approach that involves, for example, predefined geometrical parametric 3D models, such as CAD templates. But this approach cannot be deployed in all engineering sites.We propose to complete this KCM approach introducing a semantic network approach, coupling with Feature Identity Card (FIC). FIC contains a set of metadata and information existing in the Product Data Management (PDM), connected with information extracted from 3D CAD (Computer Aided Design) models. It allows contextualizing information and ensures semantic connections, in order to manipulate the right parameters with mathematical algorithms. Those algorithms will search candidate relationships between design parameters extracted from CAD models.Our suggested approach aims at extracting knowledge in cases where design never came out of Knowledge Based Engineering (KBE) applications. In those situations, it seems important to complete classical knowledge management approach, and to find out the implicit knowledge embedded in 3D CAD models. This is achieved through a global approach, focusing on the product's 3D definitions.We suggest introducing the latter approach by a suite of digital KEA tools (interfaced with KCM tools). Extracting knowledge from projects information stored in the Product Data Management does this. More precisely, the methodology is based on a commercial 3D similarity search tools for CAD models and on mathematical algorithms that search relationships between extracted design parameters. The goal is to submit new rules to the process and design experts. Implementing this methodology, a deeper knowledge of the product and its associated process can be acquired. This ensures a more productive and efficient design process.
机译:在设计和制造中提高质量,成本和延误指标的问题比行业中任何时候都更加重要。精益制造之后,在生产过程中广为人知,如今以设计精益产品开发的名义在设计领域中实施了精益工程方法,对知识和专有技术(现有的,新的或将要获得的)的管理精益工程的心脏。在我们建议的方法中,这是通过称为知识配置管理(KCM)和知识提取助手(KEA)的新一代工具实现的。KCM工具是精益工程组件,可为知识管理和基于知识的工程提供分析方法。这些工具需要高度集成的方法,其中包括例如预定义的几何参数3D模型(例如CAD模板)。但是这种方法不能在所有工程现场都部署。我们建议通过引入语义网络方法和功能识别卡(FIC)来完成此KCM方法。 FIC包含产品数据管理(PDM)中存在的一组元数据和信息,并与从3D CAD(计算机辅助设计)模型中提取的信息联系在一起。它允许上下文信息化并确保语义连接,以便使用数学算法来操纵正确的参数。这些算法将搜索从CAD模型提取的设计参数之间的候选关系。我们建议的方法旨在在设计从未出现在基于知识的工程(KBE)应用程序中的情况下提取知识。在这种情况下,完成经典知识管理方法并找出嵌入3D CAD模型中的隐式知识似乎很重要。这是通过以产品的3D定义为重点的全球方法来实现的。我们建议通过一套数字KEA工具(与KCM工具对接)引入后一种方法。从存储在产品数据管理中的项目信息中提取知识可以做到这一点。更准确地说,该方法基于用于CAD模型的商业3D相似性搜索工具以及搜索提取的设计参数之间的关系的数学算法。目的是向流程和设计专家提交新规则。实施该方法,可以获得对产品及其相关过程的更深入的了解。这样可以确保生产过程更高效。

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