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Fundamental Issues of Concept Mapping Relevant to Discipline-Based Education: A Perspective of Manufacturing Engineering

机译:与学科教育相关的概念图的基本问题:制造工程的视角

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This article addresses some fundamental issues of concept mapping relevant to discipline-based education. The focus is on manufacturing knowledge representation from the viewpoints of both human and machine learning. The concept of new-generation manufacturing (Industry 4.0, smart manufacturing, and connected factory) necessitates learning factory (human learning) and human-cyber-physical systems (machine learning). Both learning factory and human-cyber-physical systems require semantic web-embedded dynamic knowledge bases, which are subjected to syntax (machine-to-machine communication), semantics (the meaning of the contents), and pragmatics (the preferences of individuals involved). This article argues that knowledge-aware concept mapping is a solution to create and analyze the semantic web-embedded dynamic knowledge bases for both human and machine learning. Accordingly, this article defines five types of knowledge, namely, analytic a priori knowledge, synthetic a priori knowledge, synthetic a posteriori knowledge, meaningful knowledge, and skeptic knowledge. These types of knowledge help find some rules and guidelines to create and analyze concept maps for the purposes human and machine learning. The presence of these types of knowledge is elucidated using a real-life manufacturing knowledge representation case. Their implications in learning manufacturing knowledge are also described. The outcomes of this article help install knowledge-aware concept maps for discipline-based education.
机译:本文解决了与基于学科的教育相关的概念映射的一些基本问题。从人和机器学习的角度出发,重点是制造知识表示。新一代制造(工业4.0,智能制造和互联工厂)的概念需要学习工厂(人为学习)和人网络系统(机器学习)。学习工厂系统和人为网络的物理系统都需要语义网络嵌入的动态知识库,这些知识库要经受语法(机器对机器的通信),语义(内容的含义)和语用(涉及个人的偏好) )。本文认为,知识感知的概念映射是一种创建和分析用于人和机器学习的语义网络嵌入式动态知识库的解决方案。因此,本文定义了五种类型的知识,即分析先验知识,合成先验知识,合成后验知识,有意义的知识和怀疑的知识。这些类型的知识有助于找到一些规则和指南,以创建和分析用于人类和机器学习目的的概念图。使用现实生活中的制造知识表示案例来说明这些类型的知识的存在。还介绍了它们在学习制造知识中的含义。本文的结果有助于为基于学科的教育安装知识感知的概念图。

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